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INOCS - 2025

2025​​​‌Activity reportProject-TeamINOCS​

RNSR: 201521338H
  • Research center​‌ Inria Centre at the​​ University of Lille
  • In​​​‌ partnership with:Ecole Centrale​ de Lille, Université Libre​‌ de Bruxelles
  • Team name:​​ INtegrated Optimization with Complex​​​‌ Structure

Creation of the​ Project-Team: 2019 May 01​‌

Each year, Inria research​​ teams publish an Activity​​​‌ Report presenting their work​ and results over the​‌ reporting period. These reports​​ follow a common structure,​​​‌ with some optional sections​ depending on the specific​‌ team. They typically begin​​ by outlining the overall​​​‌ objectives and research programme,​ including the main research​‌ themes, goals, and methodological​​ approaches. They also describe​​​‌ the application domains targeted​ by the team, highlighting​‌ the scientific or societal​​ contexts in which their​​​‌ work is situated.

The​ reports then present the​‌ highlights of the year,​​ covering major scientific achievements,​​​‌ software developments, or teaching​ contributions. When relevant, they​‌ include sections on software,​​ platforms, and open data,​​​‌ detailing the tools developed​ and how they are​‌ shared. A substantial part​​ is dedicated to new​​​‌ results, where scientific contributions​ are described in detail,​‌ often with subsections specifying​​ participants and associated keywords.​​​‌

Finally, the Activity Report​ addresses funding, contracts, partnerships,​‌ and collaborations at various​​ levels, from industrial agreements​​​‌ to international cooperations. It​ also covers dissemination and​‌ teaching activities, such as​​ participation in scientific events,​​​‌ outreach, and supervision. The​ document concludes with a​‌ presentation of scientific production,​​ including major publications and​​​‌ those produced during the​ year.

Keywords

Computer Science​‌ and Digital Science

  • A6.​​ Modeling, simulation and control​​​‌
  • A6.1. Methods in mathematical​ modeling
  • A6.2. Scientific computing,​‌ Numerical Analysis & Optimization​​
  • A6.2.6. Optimization
  • A9. Artificial​​​‌ intelligence
  • A9.6. Decision support​

Other Research Topics and​‌ Application Domains

  • B2. Digital​​ health
  • B4. Energy
  • B6.​​​‌ IT and telecom
  • B6.7.​ Computer Industry (harware, equipments...)​‌
  • B7. Transport and logistics​​
  • B7.1. Traffic management
  • B7.1.2.​​​‌ Road traffic
  • B7.2. Smart​ travel
  • B8.1. Smart building/home​‌
  • B8.1.1. Energy for smart​​ buildings
  • B8.2. Connected city​​
  • B8.4. Security and personal​​​‌ assistance

1 Team members,‌ visitors, external collaborators

Research‌​‌ Scientists

  • Luce Brotcorne [​​Team leader, INRIA​​​‌, Senior Researcher,‌ HDR]
  • Hélène Le‌​‌ Cadre [INRIA,​​ Researcher]
  • Jacques-Marius Roland​​​‌ [INRIA, Researcher‌]

Faculty Members

  • Gaël‌​‌ Guillot [CENTRALE LILLE​​, Associate Professor,​​​‌ from Sep 2025]‌
  • Martine Labbé [ULB‌​‌, Professor]
  • Maxime​​ Ogier [CENTRALE LILLE​​​‌, Associate Professor]‌
  • Frederic Semet [CENTRALE‌​‌ LILLE, Professor,​​ HDR]
  • Yue Su​​​‌ [UNIV LILLE,‌ Associate Professor]

Post-Doctoral‌​‌ Fellows

  • Sebastian Andres Davila​​ Galvez [INRIA,​​​‌ Post-Doctoral Fellow, until‌ Mar 2025]
  • Fredy‌​‌ Vale Manuel Pokou [​​INRIA, Post-Doctoral Fellow​​​‌, until Jul 2025‌]

PhD Students

  • Tifaout‌​‌ Almeftah [INRIA,​​ until Mar 2025]​​​‌
  • Adrien Belfer [INRIA‌]
  • Nathan Davouse [‌​‌INRIA, from Mar​​ 2025]
  • Mathis Guckert​​​‌ [INRIA]
  • Salma‌ Janati [INRIA]‌​‌
  • Mesut Can Koseoglu [​​INRIA]
  • Francesco Morri​​​‌ [INRIA, from‌ Oct 2025]
  • Luis‌​‌ Antonio Rojo Gonzalez [​​UNIV CHILI]
  • Juan​​​‌ Pablo Sepulveda Adriazola [‌INRIA, until Jan‌​‌ 2025]
  • Wenjiao Sun​​ [CENTRALE LILLE,​​​‌ until Aug 2025]‌
  • Pablo Torrealba Gonzalez [‌​‌CENTRALE LILLE, until​​ Apr 2025]
  • Nathalia​​​‌ Isabel Wolf Garcia [‌INRIA]
  • Zhenyu Wu‌​‌ [INRIA]

Technical​​ Staff

  • Barbara Cotrim Rodrigues​​​‌ [INRIA, Engineer‌, from Mar 2025‌​‌]
  • Gaël Guillot [​​INRIA, Engineer,​​​‌ until Aug 2025]‌
  • Gloria Rebeca Murillo Cordova‌​‌ [INRIA, Engineer​​, from Mar 2025​​​‌]

Interns and Apprentices‌

  • Carlos Antil Catripay [‌​‌INRIA, Intern,​​ until Apr 2025]​​​‌
  • Ricardo Ignacio Barriga Vera‌ [INRIA, Intern‌​‌, until Apr 2025​​]
  • Enzo Thessieu [​​​‌INRIA, Intern,‌ from Sep 2025]‌​‌

Administrative Assistants

  • Nathalie Bonte​​ [INRIA, until​​​‌ May 2025]
  • Karine‌ Lewandowski [INRIA,‌​‌ from Jun 2025]​​

Visiting Scientists

  • Pierre Gruet​​​‌ [EDF]
  • Juan‌ Pablo Sepulveda Adriazola [‌​‌UNIV LILLE]

2​​ Overall objectives

2.1 Introduction​​​‌

INOCS is a cross-border‌ “France-Belgium” project team in‌​‌ the Applied Mathematics Computation​​ and Simulation Inria domain.​​​‌ The main goal of‌ this team is the‌​‌ study of optimization problems​​ involving complex structures. The​​​‌ scientific objectives of INOCS‌ are related to modeling‌​‌ and methodological concerns. The​​ INOCS team focuses on:​​​‌

  1. integrated models for problems‌ with Complex Structure (CS)‌​‌ taking into account the​​ whole structure of the​​​‌ problem;
  2. the development of‌ solution methods taking explicitly‌​‌ into account the nature​​ and the structure of​​​‌ the decisions as well‌ as the properties of‌​‌ the problem.

Even​​ if CS problems are​​​‌ in general NP-hard due‌ to their complex nature,‌​‌ exact solution methods or​​ matheuristics (heuristics based on​​​‌ exact optimization methods) are‌ developed by INOCS. The‌​‌ scientific contribution of INOCS​​ will result in a​​​‌ toolbox of models and‌ methods to solve challenging‌​‌ real-life problems.

2.2 Schedule​​​‌ of tasks

The research​ program development of INOCS​‌ is to move alternatively:​​

  • from problems towards new​​​‌ approaches in optimization:​ models and solution algorithms​‌ will be developed to​​ fit the structure and​​​‌ properties of the problem;​ from them, new generic​‌ approaches will be used​​ to optimize problems with​​​‌ similar properties;
  • from innovative​ approaches towards problems:​‌ the relevance of the​​ proposed approaches will be​​​‌ assessed by designing new​ models and/or solution methods​‌ for various classes of​​ problems; these models and​​​‌ methods will be based​ on the extension and​‌ integration of specific, well-studied​​ models and methods.

Even​​​‌ if these two axes​ are developed sequentially in​‌ a first phase, their​​ interactions will lead us​​​‌ to explore them jointly​ in the mid-term.

3​‌ Research program

3.1 Introduction​​

An optimization problem consists​​​‌ in finding a best​ solution from a set​‌ of feasible solutions. Such​​ a problem can be​​​‌ typically modeled as a​ mathematical program in which​‌ decision variables must (i)​​ satisfy a set of​​​‌ constraints that translate the​ feasibility of the solution​‌ and (ii) optimize some​​ (or several) objective function(s).​​​‌ Optimization problems are usually​ classified into strategic,​‌ tactical and operational problems,​​ according to the types​​​‌ of decisions to be​ taken.

We consider that​‌ an optimization problem presents​​ a Complex Structure (CS)​​​‌ when it involves decisions​ of different types/nature (i.e.​‌ strategic, tactical or operational)​​ and/or presents some hierarchical​​​‌ leader-follower structure. The set​ of constraints may usually​‌ be partitioned into global​​ constraints, linking variables​​​‌ associated with the different​ types/nature of decision, and​‌ constraints involving each type​​ of variables separately.​​​‌ Optimization problems with complex​ structure lead to extremely​‌ challenging problems since a​​ global optimum with respect​​​‌ to the whole sets​ of decision variables and​‌ of constraints must be​​ determined.

Significant progress has​​​‌ been made in optimization​ to solve academic problems.​‌ Nowadays large-scale instances of​​ some NP-hard​​​‌ problems are routinely solved​ to optimality. Our vision​‌ within INOCS is to​​ make the same advances​​​‌ while addressing CS optimization​ problems. To achieve​‌ this goal we aim​​ to develop global solution​​​‌ approaches at the opposite​ of the current trend.​‌ INOCS team members have​​ already proposed some successful​​​‌ methods following this research​ lines to model and​‌ solve CS problems (e.g.​​ ANR project RESPET,​​​‌ Brotcorne et al. 59​, 60, Gendron​‌ et al. 61,​​ 62, 63,​​​‌ and Strack et al.​ 64). However, these​‌ are preliminary attempts and​​ a number of challenges​​​‌ regarding modeling and methodological​ issues have still to​‌ be met.

3.2 Modeling​​ problems with complex structures​​​‌

A classical optimization problem​ can be formulated as​‌ follows:

min f (​​ x ) s .​​​‌ t . x ∈​ X . 1

In​‌ this problem, X is​​ the set of feasible​​​‌ solutions. Typically, in mathematical​ programming, X is defined​‌ by a set of​​ constraints. x may be​​​‌ also limited to non-negative​ integer values.

The INOCS​‌ team plans to address​​ optimization problems where two​​ types of decisions are​​​‌ addressed jointly and are‌ interrelated. More precisely, let‌​‌ us assume that variables​​ x and y are​​​‌ associated with these decisions.‌ A generic model for‌​‌ CS problems is the​​ following:

min g (​​​‌ x , y )‌ s . t .‌​‌ x X ,​​ ( x , y​​​‌ ) X Y‌ , y Y‌​‌ ( x ) .​​ 2

In this model,​​​‌ X is the set‌ of feasible values for‌​‌ x. XY​​ is the set of​​​‌ feasible values for x‌ and y jointly. This‌​‌ set is typically modeled​​ through linking constraints. Last,​​​‌ Y(x)‌ is the set of‌​‌ feasible values for y​​ for a given x​​​‌. In INOCS, we‌ do not assume that‌​‌ Y(x)​​ has any properties.

The​​​‌ INOCS team plans to‌ model optimization CS problems‌​‌ according to three types​​ of optimization paradigms: large​​​‌ scale complex structures optimization,‌ bilevel optimization and robust/stochastic‌​‌ optimization. These paradigms instantiate​​ specific variants of the​​​‌ generic model.

Large scale‌ complex structures optimization problems‌​‌ can be formulated through​​ the simplest variant of​​​‌ the generic model given‌ above. In this case,‌​‌ it is assumed that​​ Y(x)​​​‌ does not depend on‌ x. In such‌​‌ models, X and Y​​ are associated with constraints​​​‌ on x and on‌ y, XY‌​‌ are the linking constraints.​​ x and y can​​​‌ take continuous or integer‌ values. Note that all‌​‌ the problem data are​​ deterministically known.

Bilevel programs​​​‌ allow the modeling of‌ situations in which a‌​‌ decision-maker, hereafter the leader,​​ optimizes his objective by​​​‌ taking explicitly into account‌ the response of another‌​‌ decision maker or set​​ of decision makers (the​​​‌ follower) to their decisions.‌ Bilevel programs are closely‌​‌ related to Stackelberg (leader-follower)​​ games as well as​​​‌ to the principal-agent paradigm‌ in economics. In other‌​‌ words, bilevel programs can​​ be considered as demand-offer​​​‌ equilibrium models where the‌ demand is the result‌​‌ of another mathematical problem.​​ Bilevel problems can be​​​‌ formulated through the generic‌ CS model when Y‌​‌(x) corresponds​​ to the optimal solutions​​​‌ of a mathematical program‌ defined for a given‌​‌ x, i.e. Y​​(x)=​​​‌argminh(‌x,y)‌​‌|yY​​2,(x​​​‌,y)∈‌XY2 where‌​‌ Y2 is defined​​ by a set of​​​‌ constraints on y,‌ and XY2‌​‌ is associated with the​​ linking constraints.

In robust/stochastic​​​‌ optimization, it is assumed‌ that the data related‌​‌ to a problem are​​ subject to uncertainty. In​​​‌ stochastic optimization, probability distributions‌ governing the data are‌​‌ known, and the objective​​ function involves mathematical expectation(s).​​​‌ In robust optimization, uncertain‌ data take value within‌​‌ specified sets, and the​​ function to optimize is​​​‌ formulated in terms of‌ a min-max objective typically‌​‌ (the solution must be​​ optimal for the worst-case​​​‌ scenario). A standard modeling‌ of uncertainty on data‌​‌ is obtained by defining​​​‌ a set of possible​ scenarios that can be​‌ described explicitly or implicitly.​​ In stochastic optimization, in​​​‌ addition, a probability of​ occurrence is associated with​‌ each scenario and the​​ expected objective value is​​​‌ optimized.

3.3 Solving problems​ with complex structures

Standard​‌ solution methods developed for​​ CS problems solve independent​​​‌ subproblems associated with each​ type of variables without​‌ explicitly integrating their interactions​​ or integrating them iteratively​​​‌ in a heuristic way.​ However these subproblems are​‌ intrinsically linked and should​​ be addressed jointly. In​​​‌ mathematicaloptimization a classical​ approach is to approximate​‌ the convex hull of​​ the integer solutions of​​​‌ the model by its​ linear relaxation. The main​‌ solution methods are (1)​​ polyhedral solution methods which​​​‌ strengthen this linear relaxation​ by adding valid inequalities,​‌ (2) decomposition solution methods​​ (Dantzig Wolfe, Lagrangian Relaxation,​​​‌ Benders decomposition) which aim​ to obtain a better​‌ approximation and solve it​​ by generating extreme points/rays.​​​‌ Main challenges are (1)​ the analysis of the​‌ strength of the cuts​​ and their separations for​​​‌ polyhedral solution methods, (2)​ the decomposition schemes and​‌ (3) the extreme points/rays​​ generations for the decomposition​​​‌ solution methods.

The main​ difficulty in solving bilevel​‌ problems is due to​​ their nonconvexity and nondifferentiability.​​​‌ Even linear bilevel programs,​ where all functions involved​‌ are affine, are computationally​​ challenging despite their apparent​​​‌ simplicity. Up to now,​ much research has been​‌ devoted to bilevel problems​​ with linear or convex​​​‌ follower problems. In this​ case, the problem can​‌ be reformulated as a​​ single-level program involving complementarity​​​‌ constraints, exemplifying the dual​ nature, continuous and combinatorial,​‌ of bilevel programs.

4​​ Application domains

4.1 Energy​​​‌

In energy, the team​ mainly focuses on pricing​‌ models for demand side​​ management, on bids definition​​​‌ in the energy market​ and on the design​‌ and pricing of electric​​ car charging stations.

Demand​​​‌ side management methods are​ traditionally used to control​‌ electricity demand which became​​ quite irregular recently and​​​‌ resulted in supply inefficiency.​ We have explored the​‌ relationship between energy suppliers​​ and customers who are​​​‌ connected to a smart​ grid. The smart grid​‌ technology allows customers to​​ keep track of hourly​​​‌ prices and shift their​ demand accordingly, and allows​‌ the provider to observe​​ the actual demand response​​​‌ to its pricing strategy.​ We tackle pricing problems​‌ in energy according to​​ the bilevel optimization approaches.​​​‌ Some research works in​ this domain are supported​‌ by bilateral grants with​​ EDF.

The increasing number​​​‌ of agents, with different​ characteristics interacting on the​‌ energy market leads to​​ the definition of new​​​‌ types of bidding process.​ We have modeled this​‌ problem as a bilevel​​ one where the lower​​​‌ level is the instance​ allocating the bids (the​‌ ISO).

The proliferation of​​ electric cars in cities​​​‌ has lead to the​ challenging problem of designing​‌ and pricing charging stations​​ in order to smooth​​​‌ the demand over time.​ We are modeling this​‌ problem as a bilevel​​ one where the lower​​​‌ level represents the choice​ of users in a​‌ preference list.

4.2 Transportation​​ and logistics

In transportation​​ and logistics, the team​​​‌ addresses mainly integrated problems,‌ which require taking into‌​‌ account simultaneously different types​​ of decision. Examples are​​​‌ location and routing, inventory‌ management and routing or‌​‌ staff scheduling and warehouse​​ operations management. Such problems​​​‌ occur from the supply‌ chain design level to‌​‌ the logistic facility level.​​

4.3 Telecommunications

In telecommunications,​​​‌ the team mainly focuses‌ on network design problems‌​‌ and on routing problems.​​ Such problems are optimization​​​‌ problems with complex structure,‌ since the optimization of‌​‌ capacity installation and traffic​​ flow routing have to​​​‌ be addressed simultaneously.

5‌ Social and environmental responsibility‌​‌

The research works developed​​ in the INOCS team​​​‌ have environmental and societal‌ impacts through the application‌​‌ areas they target. At​​ the environmental level, the​​​‌ works on the optimization‌ of transportation systems aim‌​‌ at reducing the impact​​ of transportation on society.​​​‌ The applied works in‌ energy aim at a‌​‌ better use of the​​ smart grid and the​​​‌ optimization of electricity production‌ from renewable sources. At‌​‌ the societal level, the​​ research works take into​​​‌ account musculoskeletal disorders in‌ the activity of employees‌​‌ within a warehouse. Finally,​​ in health, the works​​​‌ conducted on group testing‌ allow the development of‌​‌ effective campaigns of the​​ population testing in preventive​​​‌ medicine for example.

6‌ Highlights of the year‌​‌

6.1 Awards

  • Yue Su​​ won the following prizes​​​‌ during the year 2025:‌
    • 2025.06 Nominated as finalist‌​‌ for the VeRoLog Doctoral​​ Dissertation prize (accessible​​​‌ ici)
    • 2025.02 Second‌ Prize for "Best thesis‌​‌ prize in transportation and​​ logistics" from ROADEF (Association​​​‌ Française de Recherche Opérationnelle‌ et d'Aide à la‌​‌ Décision)
  • Ashok Krishnan K.​​ S., Helene Le Cadre​​​‌ , Ana Busic won‌ the Best Paper award‌​‌ at the 12th International​​ conference on network games,​​​‌ control and optimization (NETGCOOP‌ 2025) for their paper‌​‌ "Achieving a Collective Target​​ Through Incentives" 24.​​​‌

7 Latest software developments,‌ platforms, open data

7.1‌​‌ Latest software developments

7.1.1​​ GroupTesting

  • Keywords:
    Linear optimization,​​​‌ Group Testing, Graph algorithmics‌
  • Functional Description:

    Group testing‌​‌ is a screening strategy​​ that involves dividing a​​​‌ population into several disjoint‌ groups of subjects. In‌​‌ its simplest implementation, each​​ group is tested with​​​‌ a single test in‌ the first phase, while‌​‌ in the second phase​​ only subjects in positive​​​‌ groups, if any, need‌ to be tested again‌​‌ individually.

    To contribute to​​ the effort to tackle​​​‌ the COVID-19 sanitary crisis,‌ we developed this software‌​‌ which allows to create​​ groups of individuals to​​​‌ test via the group‌ testing technique while minimizing‌​‌ a linear combination of​​ the expected number of​​​‌ false negative and false‌ positive classifications.

    The test‌​‌ design problem is modeled​​ as a constrained shortest​​​‌ path problem on a‌ specific graph and we‌​‌ design and implement an​​ ad hoc algorithm to​​​‌ solve this problem. We‌ validate the algorithm on‌​‌ instances based on Santé​​ Publique France data on​​​‌ COVID-19 screening tests.

  • Contact:‌
    Frederic Semet

7.1.2 INOCSBox‌​‌

  • Keywords:
    Linear optimization, Operational​​ research, Toolbox
  • Functional Description:​​​‌

    This software is a‌ toolbox that contains algorithms‌​‌ that are frequently used​​​‌ to solve optimization problems​ tackled by (but not​‌ only) the team.

    The​​ objective of the toolbox​​​‌ is to contain a​ set of code skeletons​‌ that allow researchers to​​ integrate adequate data structures​​​‌ and basic algorithms for​ different structures complexity that​‌ appears in the optimization​​ problems we study. The​​​‌ current version of the​ toolbox contains classical heuristic​‌ tools (generic local search)​​ to solve, among others,​​​‌ the vehicle rouring problem​ and its variants. It​‌ also contain a code​​ to exactly and heuristically​​​‌ solve the Shortest Path​ Problem with Ressource Constraints​‌ that is usually encountered​​ in the resolution of​​​‌ problem with Branch-and-Price algorithms.​

    The future objective is​‌ to include automatic reformulation​​ tools for bi-level optimization​​​‌ problems and state-of-the-art codes​ for the development of​‌ decomposition methods.

  • Contact:
    Tifaout​​ Almeftah

7.1.3 SUMGtfsData

  • Name:​​​‌
    Parsing General Transit Feed​ Specification (GTFS) data for​‌ optimization models.
  • Keywords:
    Open​​ data, Public transport
  • Functional​​​‌ Description:
    General Transit Feed​ Specification (GTFS) data into​‌ GeoJSON format. To facilitate​​ the integration of public​​​‌ transportation data into geospatial​ analyses, visualizations, and scientific​‌ models. In the context​​ of SUM project, within​​​‌ INRIA and INOCS team.​
  • Contact:
    Luce Brotcorne

7.1.4​‌ SUMTariffSetting

  • Name:
    Shared Urban​​ Mobility Tariff setting software​​​‌
  • Keywords:
    Optimization, Public transport,​ Mobility
  • Functional Description:
    This​‌ tool provides a traveler-centric​​ decision-support framework for integrated​​​‌ public transport (PT) and​ new shared mobility (NSM),​‌ combining pricing and trip​​ recommendation in a bilevel​​​‌ optimization model. It is​ designed to nudge travellers​‌ to adopt sustainable multimodal​​ options by offering curated​​​‌ trip choices with dynamic​ pricing, while allowing the​‌ PT operator to maximize​​ multimodal ridership. The approach​​​‌ includes stop aggregation via​ clustering to reduce problem​‌ size, an exact single-level​​ reformulation to solve the​​​‌ bilevel model, and a​ matheuristic to improve scalability.​‌
  • Contact:
    Luce Brotcorne
  • Partner:​​
    Delft University

7.1.5 SUMDesign&Routing​​​‌

  • Name:
    Shared Urban Mobility​ Joint design and routing​‌ software
  • Keywords:
    Optimization, Public​​ transport, Mobility
  • Functional Description:​​​‌
    Implemented through an advanced​ optimization model (integer programming)​‌ to design ideal service​​ zones for bike-sharing systems,​​​‌ incorporating multi-modal travel options​ and alternative routes to​‌ boost user reach while​​ staying within budget limits​​​‌ for setup and daily​ operations. The model is​‌ being experimented with public​​ transport and shared bike​​​‌ data from the city​ of Geneva, it delivers​‌ optimized configurations of bike-sharing​​ stations, their inventory, and​​​‌ capacity over different time​ periods. The business value​‌ centers on cutting costs​​ and improving efficiency in​​​‌ shared mobility, enabling cities​ and operators to offer​‌ better-integrated transport services that​​ attract more users and​​​‌ therefore reduce reliance on​ private vehicles.
  • Contact:
    Luce​‌ Brotcorne
  • Partner:
    Delft University​​

7.1.6 SUMImpactAssess

  • Name:
    Shared​​​‌ Urban Mobility Impact Assessment​ tools
  • Keywords:
    Open data,​‌ Impact, Mobility, Public transport,​​ Web API
  • Functional Description:​​​‌

    The software is an​ API that executes data​‌ analysis for impact assessments​​ with data available in​​​‌ the SUM Open Data​ Platform (ODP) https://odp.sum-project.eu.

    The​‌ API is developed in​​ Python, and executes two​​​‌ analysis, saving its results​ in the database :​‌

    1. ridge regression model​​ for policy measures coefficients,​​ based on living labs​​​‌ KPIs variations

    2. PROMETHEE-GAIA‌ for multi-criteria analysis, comparing‌​‌ business activities (policy measures)​​ from different perspectives

    The​​​‌ resulting metrics are then‌ saved in the database,‌​‌ for the web client​​ to display charts in​​​‌ the SUM ODP website.‌ The SUM ODP is‌​‌ an online platform focused​​ on living labs activities​​​‌ around shared mobility integrated‌ with public transport. It‌​‌ allows to collect and​​ monitor the policy measures​​​‌ being implemented, and the‌ KPIs evaluating their impact.‌​‌ The data is open​​ to the public, allowing​​​‌ visitors to view which‌ measures the living labs‌​‌ implement and how the​​ KPIs have evolved over​​​‌ the 2-3 years of‌ the project. To provide‌​‌ more value to this​​ data, the platform also​​​‌ proposes tools to assess‌ the impact of the‌​‌ policy measures, so that​​ decision makers can get​​​‌ data driven recommendations.

    The‌ platform is destined for‌​‌ any user interested in​​ New Shared Mobility integrated​​​‌ with public transport :‌ cities, PT operators, shared-mobility‌​‌ operators, MaaS providers, researchers,​​ citizens, policy makers

    Platform​​​‌ available at : https://odp.sum-project.eu/‌

  • Contact:
    Luce Brotcorne

7.1.7‌​‌ SUModp

  • Name:
    SUM Open​​ Data Platform
  • Keywords:
    Open​​​‌ data, Web Application, Mobility,‌ Public transport
  • Functional Description:‌​‌
    The SUM ODP is​​ an online platform focused​​​‌ on living labs activities‌ around Urban Shared Mobility‌​‌ integrated with public transport.​​ It allows to collect​​​‌ and monitor the policy‌ measures being implemented, and‌​‌ the KPIs evaluating their​​ impact. The data is​​​‌ open to the public,‌ allowing visitors to view‌​‌ which measures the living​​ labs implement and how​​​‌ the KPIs have evolved‌ over the 2-3 years‌​‌ of the project. To​​ provide more value to​​​‌ this data, the platform‌ also proposes tools to‌​‌ assess the impact of​​ the policy measures, so​​​‌ that decision makers can‌ get data driven recommendations.‌​‌ The platform is destined​​ for any user interested​​​‌ in New Shared Mobility‌ integrated with public transport‌​‌ : cities, PT operators,​​ shared-mobility operators, MaaS providers,​​​‌ researchers, citizens, policy makers‌ Platform available at :‌​‌ https://odp.sum-project.eu/
  • URL:
  • Contact:​​
    Luce Brotcorne

8 New​​​‌ results

During the year‌ 2025, we addressed different‌​‌ problems/challenges related to the​​ three lines of research:​​​‌ large scale complex structure‌ optimization, bilevel programming, game‌​‌ theory and robust/stochastic programming.​​ The main contributions are​​​‌ summarized in the next‌ sections.

8.1 Large scale‌​‌ complex structure optimization

Participants:​​ Luce Brotcorne, Martine​​​‌ Labbé, Maxime Ogier‌, Marius Roland,‌​‌ Frédéric Semet.

8.1.1​​ The Branch-and-Bound Tree Closure​​​‌

In 53, we‌ investigate the a-posteriori analysis‌​‌ of Branch-and-Bound (BB) trees​​ to extract structural information​​​‌ about the feasible region‌ of mixed-binary linear programs.‌​‌ We introduce three novel​​ outer approximations of the​​​‌ feasible region, systematically constructed‌ from a BB tree.‌​‌ These are: a tight​​ formulation based on disjunctive​​​‌ programming, a branching-based formulation‌ derived from the tree's‌​‌ branching logic, and a​​ mixing-set formulation derived from​​​‌ the on-off properties inside‌ the tree. We establish‌​‌ an inclusion hierarchy, which​​ ranks the approximations by​​​‌ their theoretical strength w.r.t.‌ the original feasible region.‌​‌ The analysis is extended​​​‌ to the generation of​ valid inequalities, revealing a​‌ separation-time hierarchy that mirrors​​ the inclusion hierarchy in​​​‌ reverse. This highlights a​ trade-off between the tightness​‌ of an approximation and​​ the computational cost of​​​‌ generating cuts from it.​ Motivated by the computational​‌ expense of the stronger​​ approximations, we introduce a​​​‌ new family of valid​ inequalities called star tree​‌ inequalities. Although their closure​​ forms the weakest of​​​‌ the proposed approximations, their​ practical appeal lies in​‌ an efficient, polynomial-time combinatorial​​ separation algorithm. A computational​​​‌ study on multi-dimensional knapsack​ and set-covering problems empirically​‌ validates the theoretical findings.​​ Moreover, these experiments confirm​​​‌ that computationally useful valid​ inequalities can be generated​‌ from BB trees obtained​​ by solving optimization problems​​​‌ considered in practice.

8.1.2​ A tutorial on Branch-Price-and-Cut​‌ algorithms

In 20,​​ we propose a tutorial​​​‌ on Branch-Price-and-Cut (BPC) algorithms​ for a generic class​‌ of problems whose objective​​ is to find a​​​‌ set of feasible paths​ in a graph while​‌ optimising a given objective​​ function. The tutorial is​​​‌ split into two main​ parts. First,we describe the​‌ building blocks of a​​ BPC algorithm: the Branch-and-Bound​​​‌ algorithm, the column generation​ procedure and the Branch-and-Cut​‌ algorithm. Then, we focus​​ on the description of​​​‌ a BPC algorithm for​ the class of problemswe​‌ consider. Precisely,we present the​​ classical and advanced techniques​​​‌ that should be embedded​ in an efficient algorithm.​‌ Particular attention is devoted​​ to the solution of​​​‌ the pricing problem in​ the case where it​‌ is formulated as an​​ Elementary Shortest Path Problem​​​‌ with Resource Constraints. The​ aim of the tutorial​‌ is pedagogical. Hence, its​​ intended reader is someone​​​‌ facing the first implementation​ of a BPC algorithm.​‌ Implementation tips and examples​​ accompany the techniques and​​​‌ concepts to ease their​ comprehension. Precisely, the examples​‌ are based on the​​ Capacitated Vehicle Routing Problem,​​​‌ which is a well-known​ problem belonging to the​‌ class we consider.

8.1.3​​ Solving the Kidney Exchange​​​‌ Problem

In 19,​ 33, we study​‌ a Kidney Exchange Problem​​ (KEP) with altruistic donors​​​‌ and incompatible patient-donor pairs.​ Kidney exchanges can be​‌ modelled in a directed​​ graph as circuits starting​​​‌ and ending in an​ incompatible pair or as​‌ paths starting at an​​ altruistic donor. For medical​​​‌ reasons, circuits and paths​ are of limited length​‌ and are associated with​​ a medical benefit to​​​‌ performing the transplants. The​ aim of the KEP​‌ is to determine a​​ set of disjoint kidney​​​‌ exchanges of maximal medical​ benefit or maximal cardinality.​‌ Several solution methods are​​ available in the literature​​​‌ to solve the KEP.​ However, they are usually​‌ most able to efficiently​​ address instances with specific​​​‌ characteristics or of limited​ size. In this work,​‌ we propose an efficient​​ method that stands out​​​‌ from the literature as​ it is able to​‌ report solutions of very​​ good quality on large-size​​​‌ instances regardless of the​ characteristics (the type of​‌ objective function and the​​ maximum length of circuits​​​‌ or paths). To do​ so, we consider a​‌ set-packing formulation for the​​ KEP with exponentially many​​ variables associated with circuits​​​‌ and paths, and develop‌ a Branch-Price-and-Cut algorithm to‌​‌ solve it. As a​​ methodological contribution, the BPC​​​‌ algorithm features two novel‌ heuristics to separate a‌​‌ well-known family of nonrobust​​ inequalities, namely, the subset-row​​​‌ inequalities. The heuristics aim‌ to detect such inequalities‌​‌ via an original transformation​​ from violated clique and​​​‌ odd-hole inequalities. Extensive computational‌ experiments have been performed‌​‌ on three sets of​​ instances from the literature​​​‌ and on a newly‌ generated set of challenging‌​‌ instances. On the easiest​​ instances, the BPC algorithm​​​‌ yields results comparable with‌ the literature, whereas on‌​‌ the other sets it​​ clearly outperforms the previous​​​‌ approaches.

8.1.4 Simultaneous vehicle‌ routing and driver scheduling‌​‌ with flexible departure times​​

In 36, 37​​​‌, 38, we‌ study the consideration of‌​‌ flexible departure times in​​ an integrated vehicle routing​​​‌ and driver scheduling problem.‌ Integrated Vehicle Routing and‌​‌ Driver Scheduling Problems (IVRDSPs)​​ consist of simultaneously planning​​​‌ routes for vehicles and‌ drivers' schedules. Unlike classical‌​‌ routing problems, which usually​​ assume each vehicle is​​​‌ assigned to a single‌ driver, IVRDSPs allow a‌​‌ single vehicle to be​​ driven by different drivers​​​‌ over time, and drivers‌ may change vehicles or‌​‌ travel as passengers when​​ needed. IVRDSPs find applications​​​‌ in airlines, railways, and‌ buses, sharing common features‌​‌ despite application-specific differences. A​​ transportation task corresponds to​​​‌ a travel from an‌ origin to a destination‌​‌ with a predefined schedule,​​ operated by one or​​​‌ two combined vehicles, and‌ at least one driver.‌​‌ Given a set of​​ transportation tasks, the IVRDSP​​​‌ aims to define driver‌ schedules and vehicle routes‌​‌ in order to perform​​ all tasks at minimum​​​‌ cost. Usually, the IVRDSP‌ assumes the timing of‌​‌ tasks to be fixed.​​ However, this rigid assumption​​​‌ can hinder some potential‌ connections between tasks because‌​‌ of a few missing​​ minutes to perform tasks​​​‌ in sequence. This can‌ result in an increased‌​‌ number of vehicles or​​ drivers required to meet​​​‌ the schedule and higher‌ operational costs. However, in‌​‌ practice, task departure times​​ can be slightly adjusted​​​‌ in a given small‌ time window without any‌​‌ problem. We model the​​ IVRDSP with departure time​​​‌ windows with a compact‌ Mixed-Integer Programming (MIP) formulation.‌​‌ To solve large-scale instances​​ in a reasonable amount​​​‌ of time, we decompose‌ the problem into two‌​‌ subproblems and propose a​​ two-phase heuristic algorithm. First,​​​‌ we solve the driver‌ scheduling subproblem using a‌​‌ column generation approach. Then,​​ given the resulting driver​​​‌ schedules, we solve the‌ vehicle routing subproblem using‌​‌ a compact MIP formulation.​​ Computational results demonstrate the​​​‌ efficiency of this approach,‌ confirming higher vehicle utilization,‌​‌ as it allows feasible​​ driver-vehicle pairing. Moreover, the​​​‌ flexibility in departure times‌ can lead to solutions‌​‌ with fewer drivers and/or​​ vehicles, or less idle​​​‌ time.

8.1.5 Agricultural Fleet‌ Vehicle Routing Problem with‌​‌ Implements

The growing use​​ of autonomous tractor fleets​​​‌ with detachable implements presents‌ complex logistical challenges in‌​‌ agriculture. Current systems often​​ rely on simple heuristics​​​‌ and avoid implement swapping,‌ limiting efficiency. A central‌​‌ challenge is to dynamically​​​‌ coordinate vehicle routing and​ implement exchanges to enable​‌ efficient, low-intervention task execution.​​ Due to high costs,​​​‌ such fleets are owned​ primarily by large enterprises​‌ or cooperatives, in which​​ fair task allocation and​​​‌ profit sharing are critical.​ We introduce the Agricultural​‌ Fleet Vehicle Routing Problem​​ with Implements (AFVRPI), addressing​​​‌ both coordination and fairness.​ In 25, a​‌ heuristic two-phase decomposition approach​​ is described and its​​​‌ efficiency is assessed. In​ 17, we propose​‌ a distributed model derived​​ from a centralized formulation​​​‌ also presented in this​ paper. This model is​‌ embedded within a Distributed​​ Multi-Agent System Architecture (DIMASA),​​​‌ where autonomous vehicle agents​ manage routing and implement​‌ use under limited fuel​​ autonomy, while implement agents​​​‌ ensure compatibility and sufficient​ capacity to meet task​‌ demands. Our solution applies​​ systematic egalitarian social welfare​​​‌ optimization to iteratively maximize​ the profit of the​‌ worst-off vehicle, balancing fairness​​ with system efficiency. To​​​‌ enhance scalability, we use​ column generation in the​‌ distributed model, achieving solution​​ quality comparable to the​​​‌ centralized model while significantly​ reducing computing time. Simulation​‌ results on new benchmark​​ instances demonstrate that our​​​‌ distributed multi-agent AFVRPI approach​ is scalable, efficient, and​‌ fair.

8.1.6 Order batching​​ and picker routing problem​​​‌ considering human factors

Manual​ picking in warehouses remains​‌ a dominant. Typically, the​​ IVRDSP assumes that task​​​‌ timing is man capabilities​ allow for particularly flexible​‌ and precise operations, but​​ also pose significant ergonomic,​​​‌ physical, and psychological challenges.​ Most traditional optimization models​‌ totally neglect these human-centric​​ issues, focusing primarily on​​​‌ minimizing total time or​ distance. In 40,​‌ we propose a novel​​ modeling framework that integrates​​​‌ picker discomfort into the​ picker routing decisions. The​‌ proposed model is rather​​ generic and can account​​​‌ for multiple dimensions of​ human discomfort, including fatigue,​‌ perceived exertion, and musculoskeletal​​ disorders, under a single​​​‌ notion of instantaneous discomfort,​ which dynamically evolves over​‌ the course of a​​ picking tour. Precisely, our​​​‌ model assumes that each​ picking task is categorized​‌ with a given level​​ of complexity, based on​​​‌ factors such as the​ item weight, the packaging,​‌ the shelf height, and​​ the accessibility of the​​​‌ item. Performing a picking​ increases instantaneous discomfort depending​‌ on the level of​​ complexity of the task,​​​‌ and the current discomfort​ level, resulting in non​‌ linear phenomena where the​​ accumulation of discomfort generates​​​‌ more instantaneous discomfort. However,​ the model also allows​‌ for recovery, i.e. a​​ decrease in the discomfort,​​​‌ when the picker is​ walking a reasonable distance​‌ between two consecutive pick​​ locations. To minimize the​​​‌ total accumulated discomfort under​ such a non-linear discomfort​‌ model, we propose a​​ labeling algorithm that systematically​​​‌ explores feasible picking sequences​ and evaluates discomfort dynamically.​‌ Computational experiments on realistic​​ warehouse layouts show that​​​‌ the accumulated discomfort can​ be significantly reduced over​‌ 40% on average with​​ a limited (under 5%)​​​‌ increase in total picking​ time. The results also​‌ highlight the importance of​​ sequencing tasks strategically and​​​‌ exploiting opportunities to not​ saturate a picker with​‌ several complicated tasks in​​ a row and exploit​​ recovery during travel.

In​​​‌ warehouse operations, order picking‌ stands out as one‌​‌ of the most critical​​ processes, with its primary​​​‌ objective being the preparation‌ of customer orders. In‌​‌ 39, 54,​​ we focus on a​​​‌ classic picker-to-parts system, where‌ human pickers push a‌​‌ trolley around the warehouse​​ to collect different items.​​​‌ From an operational point‌ of view, two main‌​‌ decisions must be taken:​​ order batching and picker​​​‌ routing. The Order Batching‌ Problem (OBP) deals with‌​‌ assigning customer orders to​​ pickers, while the Picker​​​‌ Routing Problem (PRP) consists‌ in determining, for a‌​‌ single picker, the sequence​​ in which the products​​​‌ are collected. The integration‌ of both decisions defines‌​‌ the Joint Order Batching​​ and Picker Routing Problem​​​‌ (JOBPRP), which remains challenging‌ to solve. While congestion‌​‌ is a well-known phenomenon​​ in warehouses with human​​​‌ pickers, it is rarely‌ considered in optimization studies.‌​‌ The existing literature mainly​​ analyzes congestion through simulation,​​​‌ often as an isolated‌ effect, whereas most works‌​‌ addressing the JOBPRP assume​​ ideal conditions without congestion,​​​‌ despite its significant impact‌ on cost, performance, and‌​‌ safety. In 54,​​ we propose a rough​​​‌ estimation of congestion levels‌ by introducing a time‌​‌ discretization. In each time​​ interval of the planning​​​‌ horizon, an extra delay‌ is determined by using‌​‌ a non-linear function based​​ on the number of​​​‌ pickers in each sub-aisle.‌ The delay is incurred‌​‌ by all pickers in​​ that sub-aisle. Based on​​​‌ this model, we propose‌ in 39 an extended‌​‌ Mixed Integer Programming formulation​​ for the JOBPRP that​​​‌ explicitly considers congestion aspects.‌ To solve the problem,‌​‌ we propose a column​​ generation-based heuristic based on​​​‌ the resolution of the‌ root node. In each‌​‌ iteration of the procedure,​​ the pricing problem is​​​‌ tackled using a dedicated‌ labeling algorithm. As a‌​‌ main advantage, the labeling​​ algorithm enables us to​​​‌ address the main problem‌ complexities by precisely computing‌​‌ the congestion value and​​ discarding the exploration of​​​‌ not relevant labels. Results‌ show the ability of‌​‌ the algorithm to improve​​ the initially provided solution​​​‌ and reduce the initial‌ optimality gap.

8.1.7 Nuclear‌​‌ Powerplants Scheduling with Uncertain​​ Outage Durations

This project​​​‌ in collaboration with EDF‌ R&D addresses the industrial‌​‌ challenge of scheduling maintenance​​ outages for nuclear power​​​‌ plants. This task corresponds‌ to balancing the periodic‌​‌ refueling with the condition​​ to meet national energy​​​‌ demand. The difficulty lies‌ in minimizing the reliance‌​‌ on expensive and polluting​​ non-nuclear energy sources while​​​‌ satsifying the nuclear powerplants‌ operational constraints and unpredictable‌​‌ delays in maintenance duration.​​

To tackle this issue​​​‌ we developed a novel‌ computational framework that replaces‌​‌ static planning with a​​ dynamic, stochastic approach. A​​​‌ first key achievement is‌ the implementation of a‌​‌ Python-based transition graph generator.​​ This software tool automatically​​​‌ maps out every feasible‌ operational path for a‌​‌ nuclear unit, creating a​​ comprehensive map of potential​​​‌ future states based on‌ specific unit parameters. Furthermore,‌​‌ we successfully formulated a​​ new optimization model that​​​‌ explicitly handles uncertainty using‌ this synthetically generated data.‌​‌ Unlike previous methods that​​​‌ assumed fixed schedules, this​ new model adapts operational​‌ decisions to a scenario​​ based representation of outage​​​‌ delays.

Looking ahead, this​ work provides the foundation​‌ for a more robust​​ national energy strategy. The​​​‌ tools developed in this​ project allow for the​‌ creation of "resilient" schedules​​ that remain cost-effective even​​​‌ when unexpected maintenance delays​ occur. Ultimately, this shift​‌ towards stochastic optimization aims​​ to significantly reduce the​​​‌ economic risks associated with​ nuclear fleet management and​‌ enhance the reliability of​​ the national power supply.​​​‌

8.1.8 Network Design of​ Bike Sharing Systems with​‌ Public Transit Integration.

In​​ 30, we focus​​​‌ on the strategic design​ of service regions for​‌ Bike-Sharing Systems (BSS) integrated​​ with existing public transport​​​‌ networks, addressing large-scale network​ design problems under budget​‌ and operational constraints. The​​ work investigates how multimodal​​​‌ travel patterns, in particular​ PT-triggered first- and last-mile​‌ demand, can be explicitly​​ incorporated into the spatial​​​‌ planning of bike-sharing infrastructure.​ We propose an integer​‌ programming formulation that jointly​​ determines station locations, capacities,​​​‌ and initial inventories, while​ capturing multimodal accessibility through​‌ a tailored set of​​ k-shortest multimodal paths.​​​‌ To integrate operational considerations​ at the planning stage,​‌ we introduce a distance-weighted​​ rebalancing budget as a​​​‌ tractable proxy for operational​ effort, reflecting the trade-off​‌ between spatial dispersion and​​ the resources required to​​​‌ reposition bicycles. The proposed​ framework is evaluated through​‌ extensive numerical experiments on​​ synthesized demand scenarios and​​​‌ a data-driven case study​ based on the central​‌ Geneva area, combining GTFS​​ public transport data with​​​‌ an H3-based spatial discretization.​ The results illustrate how​‌ demand heterogeneity and rebalancing​​ constraints jointly shape station​​​‌ deployment, capacity allocation, and​ system coverage, providing quantitative​‌ insights for the design​​ of cost-effective and operationally​​​‌ feasible multimodal bike-sharing systems.​

8.1.9 The Bi-objective Electric​‌ Autonomous Dial-a-Ride Problem

The​​ Electric Autonomous Dial-A-Ride Problem​​​‌ (E-ADARP) introduces electric, autonomously​ driving vehicles and their​‌ unique requirements into the​​ classic dial-a-ride problem, where​​​‌ people are transported between​ pickup and drop-off locations.​‌ Next to an electric​​ autonomous vehicle fleet, in​​​‌ the literature, a weighted-sum​ objective function, which combines​‌ the classic routing cost-oriented​​ objective with a user-oriented​​​‌ objective function, has usually​ been considered. The user-oriented​‌ objective function minimizes the​​ total excess user ride​​​‌ time. In this work,​ we treat them as​‌ two separate objective functions,​​ which are optimized concurrently.​​​‌ In order to address​ the resulting bi-objective E-ADARP,​‌ 35 develop a novel​​ exact framework (called fragment-based​​​‌ checker), whose core part​ is a smart “select-and-check"​‌ algorithm that iteratively constructs​​ feasible solutions using fragments.​​​‌ Several enhancements are proposed​ to enforce the computational​‌ efficiency of the proposed​​ method. In the computational​​​‌ experiments, we evaluate several​ variants of our checker​‌ algorithm by leveraging a​​ previously developed branch-and-price algorithm.​​​‌ We benchmark the checker-based​ framework against state-of-the-art criterion​‌ space frameworks (e.g., the​​ epsilon-constraint method and the​​​‌ balanced-box method), as well​ as a generalized branch-and-price​‌ algorithm. Numerical results on​​ both bi-objective DARP and​​​‌ E-ADARP instances demonstrate the​ effectiveness of the proposed​‌ framework. With our proposed​​ approaches, 21 out of​​ 38 instances are solved​​​‌ optimally, where small-to-medium-sized instances‌ are solved within seconds.‌​‌ On larger-scale instances, especially​​ those requiring high battery​​​‌ end levels are computationally‌ challenging to solve, our‌​‌ approaches provide high-quality approximations​​ of the Pareto frontiers.​​​‌ Efficient solutions with varying‌ energy restrictions are compared‌​‌ and we obtain valuable​​ managerial insights for different​​​‌ kinds of service providers.‌

8.2 Bilevel programming and‌​‌ game theory

Participants: Luce​​ Brotcorne, Gaël Guillot​​​‌, Martine Labbé,‌ Hélène Le Cadre,‌​‌ Frédéric Semet.

8.2.1​​ Network games, artificial intelligence,​​​‌ control and optimization

In‌ 41, Helene Le‌​‌ Cadre , Yezekael Hayel,​​ Bruno Tuffin, Tijani Chahed​​​‌ edited a book that‌ constitutes the proceedings of‌​‌ the 11-th International conference​​ on network, control and​​​‌ optimization 2024, NETGCOOP 2024,‌ held during October 9-11,‌​‌ 2024, in Lille, France.​​ The 13 full papers​​​‌ and 1 short paper‌ were carefully reviewed and‌​‌ selected from 21 submissions.​​ The papers are organized​​​‌ in the following sections:‌ scheduling, queuing systems and‌​‌ resource allocation, modeling and​​ performance, pricing and economics​​​‌ models, energy, generative artificial‌ intelligence.

8.2.2 Noncooperative games‌​‌ with prospect theoretic preferences​​

In 14, we​​​‌ study noncooperative games with‌ uncertain payoffs, where agents‌​‌ display irrational behaviors in​​ response to underlying risk​​​‌ factors. Our formulation incorporates‌ prospect theory, a behavioral‌​‌ model used to describe​​ agents' risk attitude, into​​​‌ the equilibrium theory of‌ noncooperative N-agent games. We‌​‌ show that the resulting​​ nonconvex nonsmooth game admits​​​‌ equilibria and provide convergence‌ guarantees for their computation.‌​‌ Further, the concept of​​ "Price of Irrationality" is​​​‌ introduced to quantify the‌ suboptimality induced by irrational‌​‌ behaviors. Finally, we provide​​ bounds on the performance​​​‌ of a class of‌ prospect theoretic aggregative games‌​‌ and illustrate our results​​ on an electricity market​​​‌ game involving strategic end‌ users exposed to risk.‌​‌

8.2.3 How irrationality shapes​​ Nash equilibria: A prospect-theoretic​​​‌ perspective

Noncooperative games with‌ uncertain payoffs have been‌​‌ classically studied under the​​ expected-utility theory framework, which​​​‌ relies on the strong‌ assumption that agents behave‌​‌ rationally. However, simple experiments​​ on human decision makers​​​‌ found them to be‌ not fully rational, due‌​‌ to their subjective risk​​ perception. Prospect theory was​​​‌ proposed as an empirically-grounded‌ model to incorporate irrational‌​‌ behaviours into game-theoretic models.​​ But, how prospect theory​​​‌ shapes the set of‌ Nash equilibria when considering‌​‌ irrational agents, is still​​ poorly understood. To this​​​‌ end, we study in‌ 23 how prospect theoretic‌​‌ transformations may generate new​​ equilibria while eliminating existing​​​‌ ones. Focusing on aggregative‌ games, we show that‌​‌ capturing users' irrationality can​​ preserve symmetric equilibria while​​​‌ causing the vanishing of‌ asymmetric equilibria. Further, there‌​‌ exist value functions which​​ map uncountable sets of​​​‌ equilibria in the expected-utility‌ maximization framework to finite‌​‌ sets. This last result​​ may shape some equilibrium​​​‌ selection theories for human-in-the-loop‌ systems where computing a‌​‌ single equilibrium is insufficient​​ and comparison of equilibria​​​‌ is needed.

8.2.4 Learning‌ market equilibria preserving statistical‌​‌ privacy using performative prediction​​

In 16, we​​​‌ consider a peer-to-peer electricity‌ market modeled as a‌​‌ private network game, where​​​‌ end users minimize their​ cost by computing their​‌ demand and controllable generation.​​ Their nominal demand constitutes​​​‌ sensitive information that they​ might want to keep​‌ private. We prove that​​ the private network game​​​‌ admits a unique variational​ equilibrium, which depends on​‌ the private information of​​ all end users. Thus,​​​‌ to update their strategy,​ end users rely on​‌ randomized readings. A data​​ aggregator is introduced, which​​​‌ aims to learn the​ end users’ private information,​‌ while remunerating them depending​​ on the quality of​​​‌ their readings. Using performative​ prediction, we define a​‌ decision-dependent game explicitly taking​​ into account the distribution​​​‌ shift caused by the​ end users’ hidden ability.​‌ The decision-dependent game coincides​​ with a Stackelberg game​​​‌ when the end users’​ hidden abilities are best​‌ responses. Further, the market​​ robustness can be quantified​​​‌ by evaluating the efficiency​ loss as the difference​‌ between the social cost​​ in the performatively stable​​​‌ equilibrium and the optimum.​ We show that under​‌ mild assumptions, the performatively​​ stable equilibrium can be​​​‌ found by distributed and​ sequential variants of the​‌ repeated stochastic gradient method​​ while we propose a​​​‌ two-timescale stochastic approximation method​ to learn Stackelberg equilibrium.​‌ Finally, we formulate the​​ data aggregator’s optimal contract​​​‌ design as a bilevel​ optimization problem that we​‌ cast as a more​​ tractable nonlinear nonconvex optimization​​​‌ problem which can be​ solved using simulated annealing.​‌ Simulations on small and​​ large scale problem instances​​​‌ illustrate the results.

8.2.5​ Achieving a collective target​‌ through incentives

In many​​ games, the payoff of​​​‌ individual users is a​ function of a collective​‌ outcome that is common​​ to all agents. Often,​​​‌ the users may be​ interested in jointly steering​‌ this outcome to a​​ desired value. In 24​​​‌, we present such​ a scenario, where the​‌ collective outcome is strictly​​ monotone in the joint​​​‌ strategy of the agents.​ Further, the agents are​‌ irrational in their perception​​ of a random cost​​​‌ component in their payoff.​ This irrationality is modelled​‌ using prospect theory. A​​ coordinator steers the game​​​‌ to a desired collective​ outcome, by designing incentives.​‌ These incentives modify the​​ responses of the users.​​​‌ Owing to the potential​ structure of the game,​‌ the system converges to​​ a Nash equilibrium at​​​‌ which the desired collective​ outcome is obtained.

8.2.6​‌ A generalized potential game​​ approach of UAV swarm​​​‌ coordination for hidden target​ localization

In 15,​‌ we consider a swarm​​ of Unmanned Aerial Vehicles​​​‌ (UAVs) carrying sensors with​ nondeterministic detection and noisy​‌ localization measurements, while sharing​​ observations with neighboring UAVs,​​​‌ we address the problem​ of localization of a​‌ hidden target in continuous​​ space and discrete time.​​​‌ The goal is to​ coordinate UAVs to maximize​‌ the information gathered while​​ minimizing their individual energy​​​‌ costs. We formulate the​ problem as a time-varying​‌ non-cooperative game with coupling​​ constraints. We show that​​​‌ the target is localized​ in finite time with​‌ probability one and that​​ the game has a​​​‌ generalized potential structure. Further,​ we provide an exact​‌ best-response algorithm for UAVs​​ to iteratively compute their​​ trajectories. Finally, we numerically​​​‌ compare the potential game‌ to the team-based approach,‌​‌ demonstrating comparable performance under​​ different communication graph structures​​​‌ and assessing the impact‌ of the swarm size‌​‌ on various metrics.

8.2.7​​ Optimal electric vehicle charging​​​‌ with dynamic pricing, customer‌ preferences and power peak‌​‌ reduction

In this work​​ 9, we consider​​​‌ a provider of electric‌ vehicle charging stations that‌​‌ operates a network of​​ charging stations and use​​​‌ time varying pricing to‌ maximize profit and reduce‌​‌ the impact on the​​ electric grid. We propose​​​‌ a bilevel model with‌ a single leader and‌​‌ multiple disjoint followers. The​​ customers (followers) make decisions​​​‌ independently from each other.‌ The provider (leader) sets‌​‌ the price of charging​​ for each station at​​​‌ each time slot, and‌ ensures there is enough‌​‌ energy to charge. The​​ charging choice of each​​​‌ customer is represented by‌ a combination of a‌​‌ preference list of (station,​​ time) pairs and a​​​‌ reserve price. The proposed‌ model thus accounts for‌​‌ the heterogeneity of customers​​ with respect to price​​​‌ sensitivity and charging preferences.‌ We define a single-level‌​‌ reformulation based on a​​ reformulation approach from the​​​‌ literature on product line‌ optimization, and we report‌​‌ computational results that highlight​​ the efficiency of the​​​‌ new reformulation and the‌ potential impact of our‌​‌ approach for reducing peaks​​ on the electricity grid.​​​‌

8.2.8 Learning in conjectural‌ Stackelberg games

In 32‌​‌, 27, we​​ extend the formalism of​​​‌ Conjectural Variations games to‌ Stackelberg games involving multiple‌​‌ leaders and a single​​ follower. To solve these​​​‌ nonconvex games, a common‌ assumption is that the‌​‌ leaders compute their strategies​​ having perfect knowledge of​​​‌ the follower's best response.‌ However, in practice, the‌​‌ leaders may have little​​ to no knowledge about​​​‌ the other players' reactions.‌ To deal with this‌​‌ lack of knowledge, we​​ assume that each leader​​​‌ can form conjectures about‌ the other players' best‌​‌ responses, and update its​​ strategy relying on these​​​‌ conjectures. Our contributions are‌ twofold: (i) On the‌​‌ theoretical side, we introduce​​ the concept of Conjectural​​​‌ Stackelberg Equilibrium -keeping our‌ formalism conjecture agnosticwith Stackelberg‌​‌ Equilibrium being a refinement​​ of it. (ii) On​​​‌ the algorithmic side, we‌ introduce a two-stage algorithm‌​‌ with guarantees of convergence,​​ which allows the leaders​​​‌ to first learn conjectures‌ on a training data‌​‌ set, and then update​​ their strategies. Theoretical results​​​‌ are illustrated numerically.

8.2.9‌ Steering noncooperative games through‌​‌ conjecture designs

In dynamic​​ noncooperative games, each player​​​‌ makes conjectures about other‌ players' reactions before choosing‌​‌ a strategy. However, resulting​​ equilibria may be multiple​​​‌ and do not always‌ lead to desirable outcomes.‌​‌ These issues are typically​​ addressed separately -for example,​​​‌ through opponent modeling and‌ incentive design. Drawing inspiration‌​‌ from conjectural variations games,​​ we propose in 51​​​‌ an incentive design framework‌ in which a coordinator‌​‌ first computes an equilibrium​​ by optimizing a predefined​​​‌ objective function, then communicates‌ this equilibrium as a‌​‌ target for the players​​ to reach. In a​​​‌ centralized setting, the coordinator‌ also optimizes the conjectures‌​‌ to steer the players​​​‌ towards the target. In​ decentralized settings, players independently​‌ compute conjectures and update​​ their strategies based on​​​‌ individual targets. We provide​ a guarantee of equilibrium​‌ existence in both cases.​​ This framework uses conjectures​​​‌ not only to guide​ the system towards desirable​‌ outcomes but also to​​ decouple the game into​​​‌ independent optimization problems, enabling​ efficient computation and parallelization​‌ in large-scale settings. We​​ illustrate our theoretical results​​​‌ on classical representative noncooperative​ games, demonstrating its application​‌ potential.

8.2.10 Pricing framework​​ for cloud sharing

Cloud​​​‌ sharing incentives and energy​ aware scheduling. In 55​‌, we propose a​​ dynamic pricing and incentive​​​‌ framework for cloud computing​ that reallocates idle reserved​‌ virtual machines from long​​ term subscribers to short​​​‌ term users in order​ to improve utilization and​‌ reduce energy waste. The​​ model is formulated as​​​‌ a bilevel program in​ which the provider sets​‌ dynamic rental prices and​​ rewards, while subscribers decide​​​‌ whether to share capacity​ and users decide when​‌ to rent under time​​ varying energy costs. In​​​‌ our second work, we​ address energy aware scheduling​‌ of large scale deep​​ learning training on geo​​​‌ distributed GPU data centers​ by combining a mixed​‌ integer linear model with​​ a rolling horizon scheme​​​‌ and a column generation​ based matheuristic, enabling renewable​‌ aware planning decisions at​​ scale. Both works share​​​‌ the objective of reducing​ the energy footprint of​‌ digital infrastructures through optimization​​ models that capture realistic​​​‌ operational constraints and time​ varying energy conditions.

8.2.11​‌ Spot fare inspection in​​ proof of payment transit​​​‌ systems

Spot fare inspection​ in proof of payment​‌ transit systems. We study​​ the operational implementation of​​​‌ spot fare inspection in​ proof of payment urban​‌ bus systems, where opportunistic​​ passengers may evade payment​​​‌ by selecting the most​ convenient path. The interaction​‌ between the transit authority​​ and passengers is modeled​​​‌ as a leader follower​ Stackelberg game in which​‌ the authority sets inspection​​ frequencies over the network​​​‌ and passengers best respond​ through their path choices.​‌ We then address the​​ practical deployment of these​​​‌ frequencies by building an​ unpredictable allocation schedule whose​‌ repeated day to day​​ use matches the target​​​‌ spot strategy. The resulting​ schedule construction is handled​‌ with a column generation​​ procedure, and two operational​​​‌ inspection variants are analyzed,​ including inspections that interrupt​‌ the bus service and​​ inspections performed while the​​​‌ bus is in motion.​

8.2.12 Pricing and Trip​‌ Recommendation Problem for integrated​​ shared mobility systems

For​​​‌ seamless shared urban mobility,​ traveler-centric mobility management is​‌ crucial, particularly when integrating​​ public transportation with new​​​‌ shared-mobility services, which requires​ coordinated tactical–operational decisions. In​‌ 22, we propose​​ a hierarchical optimization framework​​​‌ for the Capacitated Pricing​ and Trip Recommendation Problem​‌ (CPTRP) that promotes PT-only​​ and intermodal PT–bike-sharing (BSS)​​​‌ usage with the aim​ of reducing car-based travel.​‌ We formulate CPTRP as​​ a bilevel optimization model​​​‌ in which the PT​ operator (leader) selects BSS-leg​‌ prices and curates a​​ menu of PT-only and​​​‌ intermodal trip alternatives, anticipating​ how users (followers) respond​‌ through a deterministic generalized-disutility​​ choice model under docking-station​​ capacity and inventory feasibility​​​‌ constraints. We derive an‌ exact single-level MILP reformulation‌​‌ of the bilevel model.​​ We benchmark the proposed​​​‌ bilevel policies against a‌ reference setting with fixed‌​‌ BSS prices and no​​ trip recommendation to quantify​​​‌ the incremental value of‌ the interventions. We evaluate‌​‌ the framework on a​​ case study built from​​​‌ Geneva’s PT–BSS network using‌ real trip alternatives.

In‌​‌ 29, we introduce​​ a matheuristic to obtain​​​‌ high-quality solutions for larger‌ instances within practical runtimes‌​‌ for CPTRP framework. We​​ evaluate both exact single-level​​​‌ MILP reformulation of the‌ bilevel model and proposed‌​‌ matheuristic algorithm on a​​ case study built from​​​‌ Geneva’s PT–BSS network using‌ real trip alternatives with‌​‌ instances covering nearly the​​ whole city network. Relative​​​‌ to a reference setting‌ with fixed BSS prices‌​‌ and no trip recommendation,​​ the proposed approach reduces​​​‌ car-trip demand by 25.2%‌ on average across instances,‌​‌ increases shared-mobility market share​​ by up to 26.53%​​​‌, and yields intermodal‌ PT–BSS shares of up‌​‌ to 33.61% of total​​ demand. The matheuristic achieves​​​‌ scalable computation. It achieves‌ a median optimality gap‌​‌ of 8.6% while reducing​​ solution time by a​​​‌ median 79.32%, and‌ it yields high-quality solutions‌​‌ for instances where a​​ commercial MILP solver applied​​​‌ to the reformulation does‌ not converge within the‌​‌ imposed time limit. Overall,​​ the framework provides actionable​​​‌ decision support at the‌ tactical–operational level by quantifying‌​‌ trade-offs among car-trip reduction,​​ ridership, operating profit, and​​​‌ station feasibility when deploying‌ pricing and recommendation policies.‌​‌

8.2.13 Game theory and​​ multi-agent reinforcement learning for​​​‌ zonal ancillary markets

We‌ characterize zonal ancillary market‌​‌ coupling relying on noncooperative​​ game theory in 48​​​‌. To that purpose,‌ we formulate the ancillary‌​‌ market as a multi-leader​​ single follower bilevel problem,​​​‌ that we subsequently cast‌ as a generalized Nash‌​‌ game with side constraints​​ and nonconvex feasibility sets.​​​‌ We determine conditions for‌ equilibrium existence and show‌​‌ that the game has​​ a generalized potential game​​​‌ structure. To compute market‌ equilibrium, we rely on‌​‌ two exact approaches: an​​ integrated optimization approach and​​​‌ Gauss-Seidel best-response, that we‌ compare against multi-agent deep‌​‌ reinforcement learning. On real​​ data from Germany and​​​‌ Austria, simulations indicate that‌ multi-agent deep reinforcement learning‌​‌ achieves the smallest convergence​​ rate but requires pretraining,​​​‌ while bestresponse is the‌ slowest. On the economics‌​‌ side, multi-agent deep reinforcement​​ learning results in smaller​​​‌ market costs compared to‌ the exact methods, but‌​‌ at the cost of​​ higher variability in the​​​‌ profit allocation among stakeholders.‌ Further, stronger coupling between‌​‌ zones tends to reduce​​ costs for larger zones.​​​‌

8.2.14 Bilevel programming for‌ combinatorial coalition formation

Companies‌​‌ frequently offer wholesale prices​​ for their products that​​​‌ decrease with the number‌ of purchased items. However,‌​‌ single buyers may not​​ be willing or able​​​‌ to purchase large quantities‌ of a single item.‌​‌ Nevertheless, consumers can form​​ groups to purchase at​​​‌ wholesale prices, obtaining bargaining‌ power. This practice can‌​‌ be extended from single​​ products to bundles. In​​​‌ 12, we propose‌ a mathematical model to‌​‌ create groups of buyers​​​‌ wishing to purchase product​ bundles optimally. Mixed-integer programming​‌ formulations are presented for​​ the cases of non-increasing​​​‌ price and step price​ functions. A Benders decomposition​‌ formulation is proposed for​​ step price functions to​​​‌ solve large instances. Computational​ experiments show the performance​‌ of the method for​​ synthetic instances.

8.2.15 Stackelberg​​​‌ security games

Anticipating the​ behavior of potential attackers​‌ is essential for protecting​​ critical infrastructure, a challenge​​​‌ that can be modeled​ as a Stackelberg security​‌ game. In this setting,​​ a defender allocates limited​​​‌ resources to protect targets​ so as to maximize​‌ expected utility, while anticipating​​ that attackers will respond​​​‌ optimally. In 11,​ we introduce novel valid​‌ inequalities to compute Strong​​ Stackelberg Equilibria in both​​​‌ general Stackelberg games and​ Stackelberg security games. We​‌ also study a budget-constrained​​ security game and propose​​​‌ a branch-and-price solution approach.​ Computational results show that​‌ the proposed formulation significantly​​ outperforms standard models from​​​‌ the literature in terms​ of solution time and​‌ memory consumption. In addition,​​ an extensive sensitivity analysis​​​‌ evaluates key branch-and-price parameters,​ including column initialization, column​‌ generation per iteration, and​​ stabilization techniques. Overall, our​​​‌ method reduces solution times​ to less than one​‌ fifth of those required​​ by state-of-the-art approaches.

8.3​​​‌ Robust/stochastic programming

Participants: Luce​ Brotcorne, Martine Labbé​‌, Hélène Le Cadre​​, Marius Roland,​​​‌ Yue Su.

8.3.1​ On Multidimensonal Disjunctive Inequalities​‌ for Chance-Constrained Stochastic Problems​​ with Finite Support

In​​​‌ 46, we study​ mixed-integer linear Chance-Constrained problems​‌ (CCPs) characterized by random​​ vectors with finite support.​​​‌ The primary objective of​ our work is to​‌ enhance branch-and-bound or branch-and-cut​​ approaches through the introduction​​​‌ of new valid inequalities.​ We propose two novel​‌ families of inequalities: primal-dual​​ valid inequalities (PD-VIs), inspired​​​‌ by the quantile definition​ of chance constraints, and​‌ covering valid inequalities (C-VIs).​​ By re-scaling the coefficients​​​‌ of the C-VIs, we​ derive multi-disjunctive valid inequalities​‌ (MD-VIs), which serve as​​ a generalization of the​​​‌ simple-disjunctive valid inequalities previously​ established in the literature.​‌ Theoretical analysis demonstrated that​​ C-VIs dominate PD-VIs, while​​​‌ also establishing that the​ separation problem for C-VIs​‌ is NP-hard. Consequently, we​​ develop heuristic separation procedures,​​​‌ including an Alternating Direction​ Method (ADM)-like approach, to​‌ efficiently identify violated cuts.​​ Furthermore, the research provided​​​‌ theoretical results regarding the​ closure properties of MD-VIs​‌ with respect to the​​ closure of quantile cuts.​​​‌ Extensive numerical experiments conducted​ on covering-type k-violation linear​‌ programs and chance-constrained multidimensional​​ knapsack problems validated the​​​‌ approach, showing that MD-VIs​ yield significant improvements in​‌ dual bounds and outperform​​ state-of-the-art inequalities, such as​​​‌ mixing-set inequalities and quantile​ cuts, in a branch-and-cut​‌ framework.

8.3.2 Decision Focused​​ Learning for Dynamic Pricing​​​‌ and Inventory Control of​ Substitutable Products

In 34​‌, 28, we​​ study the dynamic pricing​​​‌ for substitutable itineraries presents​ in airline revenue management,​‌ which poses significant challenges​​ due to the stochastic​​​‌ nature of customer choices.​ The dynamic pricing problem​‌ can be conceptualized as​​ a Markov Decision Process​​​‌ with the objective of​ maximizing the total expected​‌ revenue over a finite​​ selling horizon. However, the​​ complexity of this model,​​​‌ characterized by its multi-dimensional‌ state and action spaces,‌​‌ makes it computationally prohibitive​​ to solve exactly, even​​​‌ for small-to-medium-sized instances. As‌ a result, classic methods‌​‌ such as dynamic programming​​ (DP) prove inefficient in​​​‌ addressing the dynamic pricing‌ problem for larger instances.‌​‌ In this work, we​​ introduce learning-based policies tailored​​​‌ to the dynamic pricing‌ problem of substitute itineraries.‌​‌ We proposed two different​​ machine learning (ML) pipelines​​​‌ to encode pricing policy‌ and designed tailored training‌​‌ processes for each of​​ them. Compared to existing​​​‌ methods, our approach has‌ two advantages:

  1. Benchmarking the‌​‌ proposed policies against the​​ optimal pricing policy, we​​​‌ show that learning-based policies‌ seem to be a‌​‌ good approximation for the​​ optimal policy.
  2. Our learning-based​​​‌ policies can lead to‌ huge speed-up in solving‌​‌ large-scale instances (with up​​ to million-magnitude state space)​​​‌ by moving all CPU‌ time offline.

Our pipeline-encoded‌​‌ polcies are benchmarked with​​ industrial practice implemented in​​​‌ Air France, which leads‌ to revenue enhancement with‌​‌ up to 74%.

8.3.3​​ Stochastic Bilevel Optimization

We​​​‌ study stochastic mixed integer‌ bilevel linear problems in‌​‌ which the leader commits​​ before uncertainty is revealed​​​‌ and the follower reacts‌ after observing the realization,‌​‌ with uncertainty entering the​​ follower constraints over a​​​‌ continuous support polyhedron. A‌ significant difficulty with this‌​‌ problem is that the​​ follower may have infinite​​​‌ possible realizations of his‌ decision given the realization‌​‌ of uncertainty, and coupling​​ constraints can prevent any​​​‌ follower optimal solutions from‌ being feasible for some‌​‌ realizations. We model this​​ explicitly through an extended​​​‌ real recourse definition that‌ assigns an infinite value‌​‌ when no follower optimal​​ response can be paired​​​‌ with the leader decision.‌ This separates robust feasibility‌​‌ enforcement over the uncertainty​​ set from the estimation​​​‌ of expected performance. We‌ prove almost sure consistency‌​‌ of the sample average​​ approximation (SAA) of the​​​‌ expected objective, and we‌ outline an algorithmic framework‌​‌ that iteratively adds cuts​​ to ensure feasibility for​​​‌ all scenarios, and not‌ only for the sample‌​‌ set.

8.3.4 Bidding in​​ day-ahead electricity markets

Strategic​​​‌ bidding has become a‌ central issue in deregulated‌​‌ electricity markets, where producers​​ and retailers trade electricity​​​‌ in a day-ahead market‌ managed by a Market‌​‌ Operator. Market participants submit​​ bids specifying prices and​​​‌ quantities, and the market‌ price is determined endogenously‌​‌ from all submitted bids,​​ creating significant profit uncertainty​​​‌ due to unknown competitor‌ behavior. The paper 10‌​‌ introduces a novel dynamic​​ programming framework for a​​​‌ Generation Company Stochastic Bidding‌ Problem under uncertainty in‌​‌ competitors bids. The problem​​ is shown to be​​​‌ NP-hard, and two variants‌ are analyzed. First, a‌​‌ relaxation yielding an upper​​ bound is solved in​​​‌ polynomial time. Second, a‌ fixed-quantity bidding problem is‌​‌ studied, proven NP-hard, and​​ solved to optimality in​​​‌ pseudo-polynomial time. Computational results‌ on large, realistic instances‌​‌ show that the fixed-quantity​​ variant achieves solutions within​​​‌ 1% of the upper‌ bound, demonstrating both efficiency‌​‌ and solution quality.

9​​ Bilateral contracts and grants​​​‌ with industry

9.1 Bilateral‌ contracts with industry

Distribution‌​‌ network design - La​​​‌ poste

Participants: Gaël Guillot​, Diego Cattaruzza,​‌ Frédéric Semet.

This​​ project aims to address​​​‌ network design for long-haul​ transportation. A PhD thesis​‌ related to this project​​ started in 2025.

9.2​​​‌ Exploratory Research Actions and​ Technological Development Actions

9.2.1​‌ Défi Inria-EDF : "Gérer​​ les systèmes électriques de​​​‌ demain"

Scientific leadership of​ the challenge (Inria): Luce​‌ Brotcorne

The context of​​ the challenge is defined​​​‌ by several scenarios describing​ the evolution of the​‌ French power system, developed​​ by Réseau de Transport​​​‌ d’Électricité (RTE) as part​ of the National Low-Carbon​‌ Strategy (SNBC). Among the​​ five proposed scenarios, a​​​‌ massive integration of photovoltaic​ power can be observed—its​‌ share increasing by a​​ factor of 7 to​​​‌ 22—as well as wind​ power, increasing by a​‌ factor of 2.5 to​​ 4. In addition, demand-side​​​‌ flexibility is expected to​ play a key role,​‌ representing between 15 and​​ 19 GW (including Vehicle-to-Grid​​​‌ (V2G), i.e. smart charging​ of electric vehicles).

In​‌ this context, the challenge​​ entitled “Managing the power​​​‌ systems of tomorrow” aims​ to envision and develop​‌ new tools (methods, regulatory​​ approaches, algorithms, software) and​​​‌ new sources of information​ (meters, sensors with higher​‌ temporal and spatial resolution,​​ high-resolution weather forecasts, electric​​​‌ vehicle charging stations, mobile​ applications, etc.) to support​‌ strategic and operational decision-making,​​ enabling the economic, ecological,​​​‌ and resilient management of​ future power systems in​‌ the context of the​​ ecological transition and climate​​​‌ change.

Optimization methods for​ pricing in the electricity​‌ sector within a regulated​​ competitive environment

Participant: Luce​​​‌ Brotcorne.

Co-supervision of​ a CIFRE PhD thesis​‌ with the Tropical team.​​

Decomposition algorithms for long-term​​​‌ investment problems

Participants: Marius​ Roland, Frédéric Semet​‌.

Co-supervision of a​​ postdoctoral researcher in collaboration​​​‌ with the EDGE team​ at Inria Bordeaux.

Incentive​‌ Design under Bounded Rationality​​

Participants: Hélène Le Cadre​​​‌, Ashok Krishnan K.​ S.

Co-supervision of​‌ a postdoctoral researcher in​​ collaboration with Ana Busic​​​‌ (Inria Paris, ARGO team​ and DI ENS).

Noncooperative​‌ games with uncertain payoffs​​ are traditionally studied under​​​‌ expected-utility theory, which assumes​ fully rational agents. However,​‌ human decision-makers often behave​​ irrationally due to subjective​​​‌ risk perception, motivating the​ use of prospect theory.​‌ In this project, we​​ aim to study the​​​‌ impact of prospect-theoretic transformations​ on Nash equilibria, which​‌ is still not fully​​ understood. In aggregative games,​​​‌ incorporating irrationality can preserve​ symmetric equilibria while eliminating​‌ asymmetric ones, and some​​ value functions map uncountable​​​‌ equilibria to finite sets.​ These results can inform​‌ equilibrium selection in human-in-the-loop​​ systems, where comparing multiple​​​‌ equilibria is necessary.

9.2.2​ INRIA Défi with OVH​‌ Cloud (2021-2025)

Participants: Luce​​ Brotcorne, Nathalia Wolf​​​‌.

Until now, cloud​ computing operators, such as​‌ OVHcloud, have applied pricing​​ strategies driven by the​​​‌ reservation of virtualized resources.​ More precisely, OVHcloud offers​‌ two types of services​​ to its customers: VPS​​​‌ (virtual private server) and​ Public Cloud. VPS is​‌ a cost-effective solution for​​ pre-production and production environments​​​‌ that do not require​ constant performance. The PublicCloud​‌ of OVHcloud offers a​​ multi-server infrastructure with high​​ machine availability. Unfortunately, the​​​‌ resources reserved in the‌ Public Cloud are underutilized,‌​‌ which can lead to​​ energy inefficiency in the​​​‌ infrastructure, while the VPS‌ favors an over-allocation of‌​‌ hardware resources, not allowing​​ resources, which does not​​​‌ provide any guarantee of‌ performance for customers. The‌​‌ research activity in this​​ project aims at identifying​​​‌ a viable balance between‌ these 2 options to‌​‌ allow customers to benefit​​ from guaranteed performance while​​​‌ minimizing the energy footprint‌ of the OVHcloud infrastructure.‌​‌ In particular, we want​​ to determine discounts to​​​‌ offer to customers to‌ encourage them to free‌​‌ up resources when they​​ do not need them,​​​‌ to offer these available‌ resources to other customers-or‌​‌ services-while smoothing the demand.​​

Through this new offer,​​​‌ and its dynamic pricing,‌ we wish to maintain‌​‌ a high performance criterion​​ while eliminating the waste​​​‌ of underutilized resources.

This‌ problem is a hierarchical‌​‌ decision making process between​​ a leader (OVH) and​​​‌ followers (the two type‌ of customers). Bilevel optimizations‌​‌ models are defined and​​ solved to answer these​​​‌ questions. The collaboration with‌ the Inria Spirals team‌​‌ aims to measure cloud​​ services energy consumptions.

In​​​‌ the medium term, the‌ integration of renewable energy‌​‌ production in the demand​​ smoothing process could be​​​‌ another research issue for‌ this work. This will‌​‌ lead to the resolution​​ of stochastic bilevel optimization​​​‌ problems: www.inria.fr/fr/inria-ovhcloud

9.3 Bilateral‌ grants with industry

SAMOA,‌​‌ Stackelberg Games for Flexibility​​ (Dis)Aggregation

Participants: Hélène Le​​​‌ Cadre [PI], Luce‌ Brotcorne, Yezekael Hayel‌​‌ [ University of Avignon]​​, Olivier Beaude [EDF]​​​‌.

This project has‌ been extended up to‌​‌ July 2025. SAMOA addressed​​ peering issues by distributing​​​‌ electricity generation across the‌ network instead of concentrating‌​‌ it in a few​​ locations. At the network​​​‌ level, intermediate aggregation was‌ used to balance supply‌​‌ and demand within subparts​​ of the grid, such​​​‌ as between nodes or‌ micro-grids. In the first‌​‌ phase of SAMOA, a​​ master’s intern from the​​​‌ University of Montpellier developed‌ a small Python program‌​‌ using a proximal method​​ to compute Nash equilibria.​​​‌ In the second phase,‌ SAMOA led to the‌​‌ organization of the NETGCOOP​​ conference at Inria Lille.​​​‌

JEDI, game theory for‌ the electricity system decarbonization‌​‌

Participants: Hélène Le Cadre​​ [PI], Luce Brotcorne​​​‌, Gael Guillot,‌ Alejandro Jofré [CMM, Chile]‌​‌.

JEDI aims to​​ integrate learning-based algorithms within​​​‌ game-theoretic models of the‌ electricity market. On the‌​‌ methodological side, the integration​​ of pollution constraints and​​​‌ learning-based algorithms into multi-leader‌ single follower Stackelberg games‌​‌ represents a significant challenge.​​ On the application side,​​​‌ the approaches developed within‌ the project JEDI aim‌​‌ at accelerating the decarbonisation​​ of the electricity systems.​​​‌

Integrated transit system with‌ Electric RIDE-sharing and Mobility‌​‌ Pickup Stations in smart​​ grid (ERIDE-MoPS)

Participants: Yue​​​‌ Su (PI), Luce‌ Brotcorne, Wim van‌​‌ Ackooij [EDF].

This​​ is a one-year PGMO​​​‌ project started from September‌ 2025 and ends at‌​‌ September 2026

Grant from​​ AID

Participants: Hélène Le​​​‌ Cadre, Mathis Guckert‌.

Grant from the‌​‌ innovation defense agency (AID)​​​‌ of the DGA for​ the PhD topic "Allocation​‌ of search efforts of​​ a fleet of submarine​​​‌ drones" leading to the​ hiring of Mathis Guckert​‌ as PhD student.

This​​ project focuses on modeling​​​‌ and studying complex multi-agent​ systems, including swarms/fleets of​‌ unmanned aerial/submersible vehicles, e.g.,​​ drones, performing missions, like​​​‌ in rescuing problems, detecting​ or tracking lost objects/persons​‌ whose locations are uknown​​ to the searchers. Adversarial​​​‌ situations may further be​ considered. Situated at the​‌ intersection of game theory​​ and multi-agent learning, the​​​‌ project will explore distributed​ learning methods from artificial​‌ intelligence, including multi-agent performative​​ learning and reinforcement learning,​​​‌ to support strategic mission​ planning. The aim is​‌ to develop new classes​​ of algorithms for finding​​​‌ equilibria in time-varying information​ games.

PGMO IROE C​‌ project TROMAT (2025-2026)

Participant:​​ Marius Roland.

“Tractable​​​‌ Stochastic Optimization through MAtrix​ Theory” in collaboration with​‌ the AIP Continuous Optimization​​ Team at RIKEN (Japan)​​​‌ and EDF R&D (France).​ The TROMAT project addresses​‌ the computational intractability of​​ large-scale, two-stage stochastic optimization​​​‌ problems, which are central​ to decision-making in energy​‌ networks such as unit​​ commitment and transmission expansion​​​‌ planning. These problems face​ the "curse of dimensionality,"​‌ where the number of​​ variables and constraints grows​​​‌ linearly with the number​ of scenarios used to​‌ represent uncertainty. Building on​​ a novel matrix-theoretic perspective,​​​‌ TROMAT aims to unify​ diverse scenario clustering techniques,​‌ specifically centroid-based and representative-based​​ methods, by describing them​​​‌ as either outer approximations​ (aggregating constraints) or inner​‌ approximations (aggregating variables) defined​​ by corresponding clustering matrices.​​​‌ The project seeks to​ develop a unified mathematical​‌ framework to examine how​​ different clustering methods affect​​​‌ model structure and solution​ quality, while leveraging numerical​‌ linear algebra techniques like​​ singular value decomposition and​​​‌ randomized linear algebra to​ construct computationally efficient clusterings.​‌ Furthermore, the research extends​​ these matrix-based insights to​​​‌ linear and mixed-integer programming​ contexts to enhance the​‌ performance of heuristics and​​ relaxations. By providing smaller,​​​‌ reduced models that preserve​ essential information, TROMAT enables​‌ faster solution times and​​ more informed decision-making for​​​‌ complex energy infrastructure.

10​ Partnerships and cooperations

10.1​‌ International initiatives

10.1.1 Inria​​ associate team not involved​​​‌ in an IIL or​ an international program

GALANGAL​‌
  • Title:
    GAme theoretic LeAriNG​​ and optimizAtion for networked​​​‌ eLectricity markets
  • Duration:
    2023​ -> 2025
  • Coordinators:
    Hélène​‌ Le Cadre and Michel​​ Gendreau (michel.gendreay@polymti.ca)
  • Partners:
    • Polytechnique​​​‌ Montréal Montréal (Canada)
  • Inria​ contact:
    Hélène Le Cadre​‌
  • Summary:
    GALANGAL is an​​ Associate Team between the​​​‌ INOCS Team of the​ Inria Lille-Nord Europe research​‌ center and Polytechnique Montréal,​​ in Canada. The focus​​​‌ of GALANGAL is on​ the elaboration of methods​‌ and algorithms for equilibrium​​ computation, while taking into​​​‌ account global, e.g., efficiency,​ robustness, group-based fairness criteria,​‌ and local constraints, e.g.,​​ privacy, individual fairness criteria.​​​‌ Within this project, the​ analysis of equilibria relies​‌ on Game Theory. Game​​ Theory is the study​​​‌ of interacting decision markets.​ A large part of​‌ the work in this​​ area has focused on​​​‌ equilibrium computation, but another​ relevant question is how​‌ agents might reach an​​ equilibrium, especially given that​​ no single agent has​​​‌ full information on the‌ state of the system‌​‌ or full authority over​​ the strategies of the​​​‌ other agents. We will‌ consider two paradigms to‌​‌ compute equilibria: i) decomposition​​ methods with minimum information​​​‌ exchange, ii) game-theoretic learning‌ based on performative prediction‌​‌ . Though works in​​ i) do not distinguish​​​‌ between local and global‌ objectives, ii) enables to‌​‌ capture the sift caused​​ by the players' local​​​‌ objectives on their global‌ strategies and on the‌​‌ overall system performance. These​​ two paradigms will be​​​‌ compared, and new methods‌ and algorithms will be‌​‌ developed. Two applications tracks​​ will be considered: network​​​‌ maintenance in the presence‌ of renewable energy sources‌​‌ generating uncertainties, and equilibrium​​ tracking within restructured electricity​​​‌ markets.
BILENS
  • Title:
    BIlevel‌ optimization for Logistics, ENergy‌​‌ and Security problems
  • Duration:​​
    January 1, 2025 –​​​‌ December 31, 2027
  • Coordinators:‌
    Luce Brotcorne , Alejandro‌​‌ Jofre (Centro de Modelamiento​​ Matemático)
  • Partners:
    • Centro de​​​‌ Modelamiento Matemático, Universidad de‌ Chile (Chile)
    • Instituto Sistemas‌​‌ Complejos de Ingeniería -​​ ISCI (Chile)
    • Universidad Técnica​​​‌ Federico Santa María (Chile)‌
  • Inria contact:
    Luce Brotcorne‌​‌
  • Summary:

    BILENS is an​​ associated team between INOCS-​​​‌ INRIA Lille and CMM/ISCI‌ Santiago de Chile.

    The‌​‌ team focuses on the​​ development of new models​​​‌ and solution methods for‌ problems that can be‌​‌ addressed by bilevel programming​​ / Stackelberg games. Bilevel​​​‌ problems are constrained optimization‌ problems in which some‌​‌ constraints specify that a​​ subset of variables is​​​‌ an optimal solution to‌ another (nested) optimization problem.‌​‌ Stackelberg games are games​​ in which an agent,​​​‌ the leader, must commit‌ to a strategy that‌​‌ the other agents, the​​ followers, can observe before​​​‌ committing to a strategy‌ of their own.

    In‌​‌ BILENS, problems of logistics,​​ energy and security are​​​‌ addressed. The study of‌ these problems, defined thanks‌​‌ to the researchers' contacts​​ with companies in these​​​‌ fields, will allow the‌ development of relevant approaches‌​‌ with potential transferability to​​ industry.

10.1.2 STIC/MATH/CLIMAT AmSud​​​‌ projects

SOGGA

Participants: Luce‌ Brotcorne, Hélène Le‌​‌ Cadre, Francesco Morri​​.

  • Title:
    Stochastic optimization,​​​‌ generalized games and applications‌
  • Program:
    MATH-AmSud
  • Duration:
    January‌​‌ 1, 2024 – December​​ 31, 2025
  • Local supervisor:​​​‌
    Luce Brotcorne
  • Partners:
    • Universidad‌ de O’Higgins
    • Salas (Chili)‌​‌
    • Universidad del Pacífico
  • Inria​​ contact:
    Luce Brotcorne
  • Summary:​​​‌
    Chile, Peru and France,‌ as well as many‌​‌ countries in South America​​ and Europe, share a​​​‌ very similar systems to‌ deal with their electricity‌​‌ markets. In parallel, all​​ three countries (together with​​​‌ the rest of the‌ world) are being affected‌​‌ by climate change in​​ many aspects, such as​​​‌ scarcity of water, intense‌ droughts, pollution and the‌​‌ greenhouse effect, the necessity​​ of new energy sources,​​​‌ just to name a‌ few. To face these‌​‌ challenges, we need new​​ technology coming from many​​​‌ fields of science. One‌ of such fields is‌​‌ mathematics and in particular,​​ stochastic optimization and game​​​‌ theory. These theoretical fields‌ allow us to model‌​‌ economic interactions, management solutions,​​ optimal design and operations,​​​‌ among many other relevant‌ aspects of Natural Resources‌​‌ and Energy Management. In​​​‌ the present project, we​ propose to develop new​‌ theoretical and numerical advances​​ in four research lines,​​​‌ concerning Stochastic Optimization and​ Game Theory. Namely, we​‌ will work on: 1)​​ Continuity-like properties in Equilibrium​​​‌ problems; 2) Regularity in​ Generalized Equilibrium problems; 3)​‌ Bilevel games with decision-dependent​​ uncertainty; and 4) Algorithms​​​‌ and mechanism design in​ learning games. The four​‌ research lines are strongly​​ motivated by the aforementioned​​​‌ applications.

10.1.3 Participation in​ other International Programs

IVADO-Inria​‌ Initiative

Participant: Marius Roland​​.

  • Title:
    Making Large-Scale​​​‌ Stochastic Programs Tractable: From​ Scenario Clustering to Matrix​‌ Theory
  • Partner Institution(s):
    • IVADO​​
    • Polytechnique Montréal
  • Date/Duration:
    August​​​‌ 7, 2025 – September​ 11, 2025
  • Summary:
    This​‌ project funded a five-week​​ scientific collaboration between Marius​​​‌ Roland (Inria Lille) and​ Prof. Thibaut Vidal (Polytechnique​‌ Montréal). The research focused​​ on addressing the curse​​​‌ of dimensionality in decision-making​ under uncertainty by bridging​‌ stochastic optimization and machine​​ learning. Specifically, the project​​​‌ aimed to develop a​ unified matrix-theoretic framework for​‌ scenario clustering, utilizing matrix​​ decomposition techniques and randomized​​​‌ linear algebra to create​ tractable approximations for complex​‌ energy and supply chain​​ models. In addition to​​​‌ these scientific objectives, the​ visit served as a​‌ strategic foundation to structure​​ a future Inria Associate​​​‌ Team application and foster​ student mobility between the​‌ two institutions.
ECOS-Sud

Participants:​​ Luce Brotcorne, Martine​​​‌ Labbé, Marius Roland​, Frédéric Semet.​‌

  • Title:
    Data-driven decision-making in​​ location and transportation
  • Partner​​​‌ Institution(s):
    • Universidad de O’Higgins​
    • Universidad de Santiago de​‌ Chile
  • Date/Duration:
    2024 –​​ 2026
  • Summary:
    This project​​​‌ aims to study mathematical​ models for data-driven decision-making​‌ in location and transportation​​ settings and develop ad-hoc​​​‌ algorithms to compute decisions​ in realistic instances efficiently.​‌ We also aim to​​ compare different approaches to​​​‌ facing uncertainty using data,​ comparing stochastic programming methods,​‌ robust optimization, and decision-focused​​ learning methods in order​​​‌ to prescribe to decision-makers​ what is the best​‌ model to use in​​ each situation. We make​​​‌ the distinction between NP-hard​ problems and polynomial time​‌ solvable problems, taking into​​ account the decisions prescribed​​​‌ and the computational times​ to get an answer.​‌

10.2 International research visitors​​

10.2.1 Visits of international​​​‌ scientists

Other international visits​ to the team
Walter​‌ Rei
  • Status:
    Professor
  • Institution​​ of origin:
    Quebec University​​​‌ at Montréal
  • Country:
    Canada​
  • Dates:
    September
  • Context of​‌ the visit:
    work on​​ Stochastic optimization and decomposition​​​‌ methods
  • Mobility program/type of​ mobility:
    Research stay -​‌ Masters internship co-supervision
Alejandro​​ Jofre
  • Status:
    Professor
  • Institution​​​‌ of origin:
    CMM -​ Universidad de Chile
  • Country:​‌
    Chili
  • Dates:
    June
  • Context​​ of the visit:
    Learning​​​‌ games
  • Mobility program/type of​ mobility:
    Research stay
Carlos​‌ Antil Catripay
  • Status:
    Master​​ student
  • Institution of origin:​​​‌
    Universidad de Chile
  • Country:​
    Chili
  • Dates:
    January -​‌ April
  • Context of the​​ visit:
    Learning games
  • Mobility​​​‌ program/type of mobility:
    Research​ stay
Ricardo Ignacio Barriga​‌ Vera
  • Status:
    Master student​​
  • Institution of origin:
    Universidad​​​‌ de Chile
  • Country:
    Chili​
  • Dates:
    January - April​‌
  • Context of the visit:​​
    Learning games
  • Mobility program/type​​​‌ of mobility:
    Research stay​
Miguel Anjos
  • Status:
    Professor​‌
  • Institution of origin:
    University​​ of Edinburgh
  • Country:
    Scotland​​
  • Dates:
    21-25 July
  • Context​​​‌ of the visit:
    project‌ with EDF on maintenance‌​‌ scheduling
  • Mobility program/type of​​ mobility:
    Research stay
Ezra​​​‌ Daniels
  • Status:
    Master student‌
  • Institution of origin:
    University‌​‌ of Edinburgh
  • Country:
    Scotland​​
  • Dates:
    21-25 July
  • Context​​​‌ of the visit:
    project‌ with EDF on maintenance‌​‌ scheduling
  • Mobility program/type of​​ mobility:
    Research stay
Pablo​​​‌ Torrealba-González
  • Status:
    researcher
  • Institution‌ of origin:
    School of‌​‌ Industrial Engineering, Pontificia Universidad​​ Católica de Valparaíso
  • Country:​​​‌
    Chile
  • Dates:
    from 21/07/2025‌ to 25/07/2025 and from‌​‌ 10/09/2025 to 17/09/2025
  • Context​​ of the visit:
    work​​​‌ on human factors in‌ order batching and picker‌​‌ routing problems
  • Mobility program/type​​ of mobility:
    research stay​​​‌

10.2.2 Visits to international‌ teams

Research stays abroad‌​‌
Luce Brotcorne
  • Visited institution:​​
    Universidad de Chile, Universidad​​​‌ Tecnica Federico Santa Maria‌
  • Country:
    Chile
  • Dates:
    from‌​‌ 01/12/2025 to 07/12/2025
  • Context​​ of the visit:
    work​​​‌ in the context of‌ BILENS
  • Mobility program/type of‌​‌ mobility:
    research stay
Gaël​​ Guillot
  • Visited institution:
    UQAM,​​​‌ Montréal
  • Country:
    Canada
  • Dates:‌
    from 06/12/2025 to 14/12/2025‌​‌
  • Context of the visit:​​
    work on decomposition methods​​​‌
  • Mobility program/type of mobility:‌
    research stay
Marius Roland‌​‌
  • Visited institution:
    Ivado, Cirrelt,​​ Polytechnique Montréal
  • Country:
    Canada​​​‌
  • Dates:
    from 07/08/2025 to‌ 11/09/2025
  • Context of the‌​‌ visit:
    work on drafting​​ associate team and branch-and-bound​​​‌ tree closure
  • Mobility program/type‌ of mobility:
    research stay‌​‌
Marius Roland
  • Visited institution:​​
    The University of Tokyo,​​​‌ RIKEN AIP
  • Country:
    Japan‌
  • Dates:
    from 01/11/2025 to‌​‌ 06/11/2025
  • Context of the​​ visit:
    work on random​​​‌ projections for low-rank linear‌ programs
  • Mobility program/type of‌​‌ mobility:
    research stay
Marius​​ Roland
  • Visited institution:
    Université​​​‌ Adolfo-Ibáñez, Universidad de Chile‌
  • Country:
    Chile
  • Dates:
    from‌​‌ 07/12/2025 to 22/12/2025
  • Context​​ of the visit:
    MIP​​​‌ conference & work on‌ bilevel interdiction games
  • Mobility‌​‌ program/type of mobility:
    conference​​ and research stay
Maxime​​​‌ Ogier
  • Visited institution:
    School‌ of Industrial Engineering, Pontificia‌​‌ Universidad Católica de Valparaíso​​
  • Country:
    Chile
  • Dates:
    from​​​‌ 15/12/2025 to 19/12/2025
  • Context‌ of the visit:
    work‌​‌ on human factors in​​ order batching and picker​​​‌ routing problems
  • Mobility program/type‌ of mobility:
    research stay‌​‌
Frédéric Semet
  • Visited institution:​​
    Universidad O'Higgins, Universidad de​​​‌ Chile
  • Country:
    Chile
  • Dates:‌
    from 13/12/2025 to 20/12/2025‌​‌
  • Context of the visit:​​
    WOA workshop & research​​​‌ work on bilevel programming‌
  • Mobility program/type of mobility:‌​‌
    research stay

10.3 European​​ initiatives

10.3.1 Horizon Europe​​​‌

Participants: Luce Brotcorne,‌ Hélène Le Cadre,‌​‌ Gaël Guillot, Rebeca​​ Murillo, Barbara Rodrigues​​​‌, Mesut Can Koseoglu‌, Zhenyu Wu.‌​‌

SUM project on cordis.europa.eu​​

  • Title:
    SEAMLESS SHARED URBAN​​​‌ MOBILITY
  • Duration:
    From June‌ 1, 2023 to May‌​‌ 31, 2026
  • Partners:
    • INSTITUT​​ NATIONAL DE RECHERCHE EN​​​‌ INFORMATIQUE ET AUTOMATIQUE (INRIA),‌ France
    • TRANSPORTS PUBLICS GENEVOIS,‌​‌ Switzerland
    • SIXT GMBH &​​ CO. AUTOVERMIETUNG KG, Germany​​​‌
    • HYDROLIFT SMART CITY FERRIES‌ AS (HYDROLIFT SMART CITY‌​‌ FERRIES AS), Norway
    • FREDRIKSTAD​​ KOMMUNE, Norway
    • SIEMENS MOBILITY​​​‌ BV, Netherlands
    • ROTTERDAMSE ELEKTRISCHE‌ TRAM NV (RET NV),‌​‌ Netherlands
    • ETHNICON METSOVION POLYTECHNION​​ (NATIONAL TECHNICAL UNIVERSITY OF​​​‌ ATHENS - NTUA), Greece‌
    • INSTITUT VEDECOM (VEDECOM), France‌​‌
    • TECHNISCHE UNIVERSITAET MUENCHEN (TUM),​​ Germany
    • DIMOS PENTELIS (MUNICIPALITY​​​‌ OF PENTELI), Greece
    • GMINA‌ MIEJSKA KRAKOW - MIASTO‌​‌ NA PRAWACH POWIATU (MUNICIPALITY​​​‌ OF KRAKOW UMK), Poland​
    • UNIVERSITEIT TWENTE (UNIVERSITEIT TWENTE),​‌ Netherlands
    • POLIS (POLIS), Belgium​​
    • MUNICIPALITY OF JERUSALEM, Israel​​​‌
    • FREE NOW HELLAS MONOPROSOPI​ AE (FREENOW HELLAS SINGLE​‌ MEMBER SA), Greece
    • SERVICOS​​ MUNICIPALIZADOS DE TRANSPORTES URBANOS​​​‌ DE COIMBRA (SMTUC), Portugal​
    • MUNICIPIO DE COIMBRA (CAMARA​‌ MUNICIPAL DE COIMBRA), Portugal​​
    • TEL AVIV UNIVERSITY (TAU),​​​‌ Israel
    • NEXTBIKE CY LTD,​ Cyprus
    • LPT LARNACA PUBLIC​‌ TRANSPORTSERVICES AND OPERATIONS LIMITED,​​ Cyprus
    • CONCESIONES UNIFICADAS SL​​​‌ (CONCESIONES UNIFICADAS SLU), Spain​
    • EUROPEAN ROAD TRANSPORT TELEMATICS​‌ IMPLEMENTATION COORDINATION ORGANISATION -​​ INTELLIGENT TRANSPORT SYSTEMS &​​​‌ SERVICES EUROPE (ERTICO ITS​ EUROPE), Belgium
    • MOBY X​‌ SOFTWARE LIMITED (MOBY), Cyprus​​
    • LANDESHAUPTSTADT MUNCHEN, Germany
    • TECHNISCHE​​​‌ UNIVERSITEIT DELFT (TU Delft),​ Netherlands
    • SIGMA 6 LTD,​‌ Israel
    • ZF CV Systems​​ Global GmbH (ZF CV​​​‌ Systems Global GmbH), Switzerland​
    • UNIWERSYTET JAGIELLONSKI, Poland
    • CHALMERS​‌ TEKNISKA HOGSKOLA AB, Sweden​​
  • Inria contact:
    Luce Brotcorne​​​‌
  • Coordinator:
  • Summary:
    The objective​ of SUM is to​‌ transform current mobility networks​​ towards innovative and novel​​​‌ shared mobility systems (NSM)​ integrated with public transport​‌ (PT) in more than​​ 15 European Cities by​​​‌ 2026 reaching 30 by​ 2030. Intermodality, interconnectivity, sustainability,​‌ safety, and resilience are​​ at the core of​​​‌ this innovation. The outcomes​ of the project offer​‌ affordable and reliable solutions​​ considering the needs of​​​‌ all stakeholders such as​ end users, private companies,​‌ public urban authorities. SUM​​ project will develop five​​​‌ pillars consisting of technological,​ co-creation, and policy tools​‌ to tackle the identified​​ NSM barriers for a​​​‌ typical, car-focused family. These​ five pillars can increase​‌ the modal share of​​ NSM via targeted push/pull​​​‌ measures and policy recommendations.​ SUM will introduce a​‌ federation of solutions including​​ prediction, scheduling, integrated NSM-PT​​​‌ ticketing, and real-time NSM​ management. This created ecosystem​‌ will reduce the total​​ door-to-door travel times using​​​‌ integrated NSM-PT. This can​ change the behavior of​‌ 34% of travelers using​​ cars and 17% of​​​‌ travelers sceptic about using​ NSM. The partners in​‌ this diverse consortium have​​ access to innovative tools​​​‌ and expertise making them​ uniquely positioned to tackle​‌ the barriers in 9​​ living labs and 30​​​‌ organizations across Europe.

10.4​ National initiatives

10.4.1 ANR​‌

ANR project ADELE (2022-2025):​​ “Resource Allocation in City​​​‌ Logistics with Demand Uncertainty”​ in collaboration with LCOMS​‌ (Univ. of Lorraine), Toulouse​​ Business School, Colisweb. A​​​‌ central issue in City​ Logistics (CL) is to​‌ design logistics systems that​​ move goods to, from,​​​‌ and within urban areas​ while meeting sustainability goals.​‌ A central role is​​ played by the orchestrator.​​​‌ The orchestrator is the​ stakeholder that operates and​‌ organizes a CL system​​ when multiple stakeholders are​​​‌ implied. In ADELE, we​ tackle the planning problem​‌ faced by the orchestrator​​ in coordinating and managing​​​‌ the resources offered by​ carriers or logistics service​‌ providers. The problem aims​​ to determine what logistics​​​‌ facilities should be used​ and when and where​‌ the vehicles of the​​ carriers should be assigned​​​‌ to cover the demand​ in the most efficient​‌ way. A key feature​​ is that demand is​​​‌ uncertain. We consider two​ main variants depending on​‌ whether the CL system​​ is one or two​​ tiers. ADELE aims to​​​‌ develop new efficient mathematical‌ models and decision support‌​‌ methods. We aim to​​ design and implement ad-hoc​​​‌ optimization algorithms based on‌ mathematical modeling. This project‌​‌ is a continuation of​​ the INRIA Innovation Lab​​​‌ Colinocs.

10.5 Regional initiatives‌

10.5.1 Project STaRS SITAR‌​‌

The SITAR project led​​ by Hélène Le Cadre​​​‌ and funded by region‌ Hauts-de-France dealt with behavioral‌​‌ game theory and bounded​​ rationality. The project led​​​‌ to the hiring of‌ a postdoc researcher Frédy‌​‌ Pokou . The project​​ ended in July 2025.​​​‌

10.5.2 Project Blooe (Multi-criteria‌ optimization of energy exchanges‌​‌ in a local renewable​​ energy community via blockchain​​​‌ ), Energie Electrique 4.0,‌ funded by Région Haut‌​‌ de France

The partners​​ are Junia Grande Ecole​​​‌ d’Ingénieurs de Lille &‌ INRIA Lille - Nord‌​‌ Europe. It is les​​ by Luce Brotcorne at​​​‌ INRIA and led to‌ the hiring of 2‌​‌ post doc and 1​​ phd student.

In recent​​​‌ years, electricity grids have‌ undergone significant changes, notably‌​‌ the integration of renewable​​ energy sources into distribution​​​‌ networks. These new types‌ of generators are integrated‌​‌ as close as possible​​ to consumers and create​​​‌ new energy flows on‌ the electricity grids. In‌​‌ addition, new players are​​ emerging: prosumers (consumers who​​​‌ also produce their own‌ electricity), electric vehicles, and‌​‌ storage systems. We are​​ therefore seeing the emergence​​​‌ of local energy communities,‌ which bring together these‌​‌ different types of players​​ within a distribution network.​​​‌ These players share decentralized‌ production (particularly photovoltaic) within‌​‌ collective self-consumption operations. The​​ larger-scale development of these​​​‌ energy communities requires methods‌ to optimize energy exchanges‌​‌ between players.

11 Dissemination​​

11.1 Promoting scientific activities​​​‌

11.1.1 Scientific events: organisation‌

Member of the conference‌​‌ program committees
  • TPC member​​ the AAAI 25: Hélène​​​‌ Le Cadre
  • Steering committee‌ member for NETGCOOP 2025:‌​‌ Hélène Le Cadre
  • Stream​​ "Pricing and Revenue Management​​​‌ Innovations" in EURO conference‌ 2025: Yue Su &‌​‌ Luce Brotcorne
  • Triennal Symposium​​ of Transportation Analysis -​​​‌ TRISTAN 2025: Frédéric Semet‌
  • IEEE/IFAC CoDIT 2025: Frédéric‌​‌ Semet
  • IC-TORS 2025 :​​ Frédéric Semet
  • ROADEF 2025​​​‌ : Luce Brotcorne ,‌ Maxime Ogier , Frédéric‌​‌ Semet

11.1.2 Journal

Member​​ of the editorial boards​​​‌
  • Computers & Operations Research‌ Optimization: Luce Brotcorne –‌​‌ Member of the editorial​​ advisory board.
  • International Transactions​​​‌ in Operations Research: Luce‌ Brotcorne – Associate editor.‌​‌
  • Journal of Optimization Theory​​ and Applications (JOTA): Martine​​​‌ Labbé - Area editor.‌
  • Open Journal of Mathematical‌​‌ Optimization: Martine Labbé -​​ Member of the steering​​​‌ committee.
  • Transportation Science: Martine‌ Labbé - Member of‌​‌ the advisory board.
  • International​​ Transactions in Operations Research:​​​‌ Martine Labbé - Associate‌ editor.
  • European Journal of‌​‌ Computational Optimization: Martine Labbé​​ - Associate editor.
Reviewer​​​‌ - reviewing activities

European‌ Journal of Operational Research,‌​‌ Computers & Operations Research,​​ Networks, Transportmetrica B: Transport​​​‌ Dynamics, Transportation Research Part‌ E, International Transaction in‌​‌ Operational Research, Dynamic Games​​ and Applications; International Game​​​‌ Theory Review, JOTA, IEEE‌ Transactions on Automatic Control,‌​‌ IEEE Control Systems Letters;​​ Engineering Applications of Artificial​​​‌ Intelligence, IEEE Transactions on‌ Control of Network Systems,‌​‌ IEEE Transactions on Network​​​‌ Science and Engineering, Optimization​ Letters : Gaël Guillot​‌ , Hélène Le Cadre​​ , Maxime Ogier ,​​​‌ Frédéric Semet , Yue​ Su , Luce Brotcorne​‌ , Martine Labbé

11.1.3​​ Leadership within the scientific​​​‌ community

  • ROADEF (French OR​ association): Maxime Ogier ,​‌ member of the board.​​
  • PGMO: Luce Brotcorne ,​​​‌ member of the scientific​ committee.
  • INFORMS, Energy Natural​‌ Resources and the Environmentatl​​ Section: Luce Brotcorne ,​​​‌ secretary & treasurer.
  • EURO​ Working Group “Pricing and​‌ revenue management”: Luce Brotcorne​​ , coordinator.
  • EURO Working​​​‌ Group “Vehicle Routing and​ Logistics Optimization (VEROLOG)”: Frédéric​‌ Semet , member of​​ the board.
  • GdR Recherche​​​‌ Opérationnelle et Décision: Frédéric​ Semet , member of​‌ the board.

11.1.4 Scientific​​ expertise

  • Reviewer for ANR​​​‌ project: Hélène Le Cadre​
  • Reviewer for ANR project:​‌ Luce Brotcorne
  • Reviewer for​​ research proposals for 2025​​​‌ in the field of​ groundbreaking research in artificial​‌ intelligence for the ministry​​ of innovation, science and​​​‌ technology of Israel: Hélène​ Le Cadre
  • IVADO International​‌ Advisory Committee, Canada: Martine​​ Labbé - Member
  • Scientific​​​‌ orientation committee of the​ Interuniversity Centre on Entreprise​‌ Networks, Transportation and Logistics​​ (CIRRELT), Canada: Frédéric Semet​​​‌ - Member
  • EURO Gold​ Medal selection committee- Association​‌ of the European Operational​​ Research Societies: Martine Labbé​​​‌ - Member

11.1.5 Research​ administration

  • Vice Chair of​‌ the Inria Evaluation Committee:​​ Luce Brotcorne .
  • Elected​​​‌ Member of the Inria​ Evaluation Committee: Hélène Le​‌ Cadre .
  • Member of​​ the “Commission Emploi Recherche”(CER)​​​‌ at Inria Lille: Hélène​ Le Cadre .
  • Mission​‌ Jeunes Chercheurs responsible for​​ Inria Lille Center: Hélène​​​‌ Le Cadre .
  • Deputy-director​ of CRIStAL: Frédéric Semet​‌ .
  • Member of the​​ “Commission des Utilisateurs des​​​‌ Moyens Informatiques”(CUMI) at Centre​ Inria de l'Univeristé de​‌ Lille: Gaël Guillot

11.2​​ Teaching - Supervision -​​​‌ Juries - Educational and​ pedagogical outreach

11.2.1 Teaching​‌

  • Licence: Gaël Guillot ,​​ Maxime Ogier , Object-Oriented​​​‌ Programming, 96hrs, L2, Centrale​ Lille.
  • Licence: Gaël Guillot​‌ , Maxime Ogier ,​​ Object-Oriented Programming, 48hrs, L3,​​​‌ Centrale Lille.
  • Licence: Frédéric​ Semet , Advanced programming​‌ and Complexity, 24hrs, L3,​​ Centrale Lille.
  • Master: Maxime​​​‌ Ogier , Frédéric Semet​ , Object-Oriented Programming, 32hrs,​‌ M1, Centrale Lille.
  • Master:​​ Maxime Ogier , Operations​​​‌ Research, 24hrs, M1, Centrale​ Lille.
  • Master: Maxime Ogier​‌ , Research in Computer​​ Sciences, 24hrs, M2, Centrale​​​‌ Lille.
  • Master: Frédéric Semet​ , Prescriptive analytics and​‌ optimization, 64hrs, M1, Centrale​​ Lille.
  • Master: Frédéric Semet​​​‌ , Supply Chain Management​ and Operations Research ,​‌ 44 hrs, M2, Centrale​​ Lille.
  • Master: Frédéric Semet​​​‌ , Operations Research, 24​ hrs, M2, Centrale Lille.​‌
  • Licence: Yue Su ,​​ Initiation au développement, 65h,​​​‌ L1, Univeristé de Lille;​
  • Licence: Yue Su ,​‌ Introduction aux bases de​​ données et SQL, 72h,​​​‌ L1, Univeristé de Lille;​
  • Licence: Yue Su ,​‌ Nouveaux paradigmes de BDD,​​ 23h, L1, Univeristé de​​​‌ Lille;
  • Licence: Yue Su​ , Exploitation d’une base​‌ de données, 32h, L1,​​ Univeristé de Lille;
  • Licence:​​​‌ Yue Su , Qualité​ et au delà du​‌ relationnel, 14h, L1, Univeristé​​ de Lille;

11.2.2 Supervision​​​‌

  • PhD completed: Pablo Torrealba-González​ , Order batching and​‌ picker routing in warehouses​​ taking into account human​​ factors 45, March​​​‌ 2025, Dominique Feillet (Mines‌ de Saint Etienne), Maxime‌​‌ Ogier , Frédéric Semet​​ .
  • PhD completed: Juan​​​‌ Sepulveda , New optimization‌ models and algorithms to‌​‌ represent energy exchanges in​​ local energy communities, June​​​‌ 2025, Hélène Le Cadre‌ , Luce Brotcorne .‌​‌
  • PhD completed: Wenjiao Sun​​ , Models and algorithms​​​‌ for integrated vehicle routing‌ and driver scheduling problems‌​‌ 44, October 2025,​​ Maxime Ogier , Frédéric​​​‌ Semet .
  • PhD completed:‌ Francesco Morri , Game-theoretic‌​‌ learning in intelligent marketplaces​​ 43, December 2025,​​​‌ Hélène Le Cadre ,‌ Luce Brotcorne .
  • PhD‌​‌ completed: Tifaout Almeftah ,​​ Models and algorithms for​​​‌ group testing, December 2025,‌ Diego Cattaruzza (University of‌​‌ Udine, Italy), Martine Labbé,​​ Frédéric Semet .
  • PhD​​​‌ completed: Aitor Lopez Sanchez‌ , Distributed, scalable, and‌​‌ efficient fleet coordination for​​ agriculture mobile robots 42​​​‌, September 2025, Frédéric‌ Semet , Marin Lujak‌​‌ (University Rey Juan Carlos,​​ Spain).
  • PhD in progress:​​​‌ Luis Rojo , Incentive‌ mechanisms for electric vehicle‌​‌ charging, from October 2021,​​ Luce Brotcorne , Michel​​​‌ Gendreau (Polytechnique Montréal, Canada),‌ Miguel Anjos (University of‌​‌ Edinburgh, UK).
  • PhD in​​ progress: Natalia Wolf ,​​​‌ Towards energy-based pricing strategies‌ for the cloud, from‌​‌ April 2023, Luce Brotcorne​​ .
  • PhD in progress:​​​‌ Mesut Can Koseoglu ,‌ Designing incentives for better‌​‌ integration of shared urban​​ mobility within public transport,​​​‌ from February 2024, Luce‌ Brotcorne , Shadi Sharif‌​‌ Azadeh (TU Delft, Netherlands).​​
  • PhD in progress: Zhenyu​​​‌ Wu , Network Design‌ of Bike Sharing Systems‌​‌ with Public Transit Integration,​​ from March 2024, Luce​​​‌ Brotcorne , Shadi Sharif‌ Azadeh (TU Delft, Netherlands).‌​‌
  • PhD in progress: Adrien​​ Belfer , Résolution de​​​‌ problème d’optimisation bi-niveaux sous‌ incertitude, from September 2024,‌​‌ Luce Brotcorne , Marius​​ Roland .
  • PhD in​​​‌ progress: Salma Janati ,‌ Integration of forecasting methods‌​‌ into optimization algorithms: application​​ to urban logistics, from​​​‌ October 2024, Luce Brotcorne‌ , Frédéric Semet .‌​‌
  • PhD in progress: Mathis​​ Guckert , Allocation of​​​‌ search efforts for a‌ fleet of underwater drones,‌​‌ from January 2025, Hélène​​ Le Cadre , Luce​​​‌ Brotcorne .
  • PhD in‌ progress: Nathan Davouse ,‌​‌ Ecological and economic logistics​​ service network design: Models​​​‌ and Decision Support Algorithms,from‌ March 2025, Diego Cattaruzza‌​‌ (University of Udine, Italy),​​Gaël Guillot ,Frédéric​​​‌ Semet

11.2.3 Juries

  • Panagiotis‌ Andrianesis, HDR, Université de‌​‌ Grenoble, Selected Topics in​​ Power System Analysis, Optimization​​​‌ and economics, Luce Brotcorne‌ - Reviewer
  • Luis Lopes‌​‌ Marques, PhD, Université de​​ Bordeaux, Méthodes d’agrégation pour​​​‌ des formulations de programmation‌ dynamique de très grande‌​‌ taille: Gaël Guillot -​​ Examiner
  • Louise Sadoine, PhD,​​​‌ Université de Mons, Belgique,‌ Noncooperative game theory for‌​‌ resources scheduling and planning​​ in renewable energy communities:​​​‌ Hélène Le Cadre -‌ Reviewer
  • Erick Velasquez, Master‌​‌ 2 internship at Pontifica​​ Universidad Catolica de Chile:​​​‌ Hélène Le Cadre -‌ Reviewer
  • Luca Santosuosso, PhD,‌​‌ Université Paris sciences et​​ lettres, Distributed Stochastic Optimization​​​‌ for Operating Complex Virtual‌ Power Plants : Leveraging‌​‌ Cascaded Run-of-the-River Hydropower Flexibility​​ for Renewable Energy Integration:​​​‌ Luce Brotcorne - Chairperson‌
  • Emanuele Concas, PhD, Marne-la-vallée‌​‌ ENPC, Pricing Bundles for​​​‌ Airline Revenue Management: Luce​ Brotcorne - Examiner
  • Eric​‌ Larsen, PhD, Université de​​ Montréal, Machine Learning Accelerated​​​‌ Stochastic Optimization and Applications​ to Railways Operations: Frédéric​‌ Semet - Reviewer
  • Yuji​​ Zou, PhD, Université d'Angers,​​​‌ Metaheuristic Algorithms for Routing​ Problems: Frédéric Semet -​‌ Reviewer
  • Yerlan Kuzbakov, Université​​ Cergy Paris Université, Three​​​‌ essays on facility location​ and vehicle routing for​‌ modern transportation networks including​​ robotic last-mile delivery: Frédéric​​​‌ Semet - Reviewer
  • Isaac​ Balster, Université de Bordeaux,​‌ Méthodes de branch-cut-and-price pour​​ le problème joint de​​​‌ routage et de gestion​ des stocks: Frédéric Semet​‌ - Examiner
  • Kehinde Ganiyu​​ Ismaila, Khalifa University, Optimization​​​‌ models and algorithms for​ e-commerce fulfillment problems with​‌ order consolidation : Frédéric​​ Semet - Reviewer

12​​​‌ Scientific production

12.1 Major​ publications

  • 1 articleN.​‌Nabil Absi, D.​​Diego Cattaruzza, D.​​​‌Dominique Feillet, M.​Maxime Ogier and F.​‌Frédéric Semet. A​​ heuristic branch-cut-and-price algorithm for​​​‌ the ROADEF/EURO challenge on​ Inventory Routing.Transportation​‌ Science2019HAL
  • 2​​ articleM.Mathieu Besançon​​​‌, M.Miguel Anjos​ and L.Luce Brotcorne​‌. Robust bilevel optimization​​ for near-optimal lower-level solutions​​​‌.Journal of Global​ Optimization904July​‌ 2024, 813-842HAL​​DOI
  • 3 articleL.​​​‌Luce Brotcorne, D.​Didier Aussel, S.​‌Sébastien Lepaul and L.​​Léonard Von Niederhäusen.​​​‌ A Trilevel Model for​ Best Response in Energy​‌ Demand-Side Management.European​​ Journal of Operational Research​​​‌2020HAL
  • 4 article​L.Luce Brotcorne,​‌ F.Fabien Cirinei,​​ P.Patrice Marcotte and​​​‌ G.Gilles Savard.​ An exact algorithm for​‌ the network pricing problem​​.Discrete Optimization8​​​‌22011, 246--258​URL: https://dx.doi.org/10.1016/j.disopt.2010.09.003
  • 5 article​‌C.Carlos Casorrán,​​ B.Bernard Fortz,​​​‌ M.Martine Labbé and​ F.Fernando Ordóñez.​‌ A study of general​​ and security Stackelberg game​​​‌ formulations.European Journal​ of Operational Research278​‌32019, 855​​ - 868HALDOI​​​‌
  • 6 articleD.Diego​ Cattaruzza, M.Martine​‌ Labbé, M.Matteo​​ Petris, M.Marius​​​‌ Roland and M.Martin​ Schmidt. Exact and​‌ Heuristic Solution Techniques for​​ Mixed-Integer Quantile Minimization Problems​​​‌.INFORMS Journal on​ Computing2024HAL
  • 7​‌ articleM.Maria Restrepo​​, F.Frédéric Semet​​​‌ and T.Thomas Pocreau​. Integrated Shift Scheduling​‌ and Load Assignment Optimization​​ for Attended Home Delivery​​​‌.Transportation Science53​2019, 917-1212HAL​‌

12.2 Publications of the​​ year

International journals

International peer-reviewed conferences

  • 22​​ inproceedingsL.Luce Brotcorne​​​‌, M.Mesut Koseoglu​ and S.Shadi Sharif-Azadeh​‌. Traveler-Centric Pricing and​​ Trip Recommendation for Integrated​​​‌ Shared Urban Mobility: A​ Bilevel Optimization Framework..​‌EWG-RMP 2025 - Biennial​​ Meeting of the EURO​​​‌ Working Group on Revenue​ Management and PricingLuxembourg,​‌ LuxembourgDecember 2025HAL​​back to text
  • 23​​​‌ inproceedingsA.Ashok Krishnan​ K. S., H.​‌Hélène Le Cadre and​​ A.Ana Bušić.​​​‌ How Irrationality Shapes Nash​ Equilibria: A Prospect-Theoretic Perspective​‌.Proceedings of 64th​​ IEEE Conference on Decision​​​‌ and Control (CDC) 2025​64th IEEE Conference on​‌ Decision and Control (CDC)​​ 2025Rio de Jaineiro,​​​‌ Brazil2025, 4428-4433​HALback to text​‌
  • 24 inproceedingsA.Ashok​​ Krishnan, H.Hélène​​​‌ Le Cadre and A.​Ana Bušić. Achieving​‌ a Collective Target Through​​ Incentives.Network Games,​​​‌ Artificial Intelligence, Control and​ Optimization: 12th International Conference,​‌ NETGCOOP 2025, Bilbao, Spain,​​ October 8–10, 2025, Proceedings​​​‌NETGCOOP 2025 - 12th​ International Conference of Networks,​‌ Games, Control and Optimization​​Bilbao, SpainNovember 2025​​​‌HALDOIback to​ textback to text​‌
  • 25 inproceedingsA.Aitor​​ López-Sánchez, M.Marin​​​‌ Lujak, F.Frederic​ Semet and H.Holger​‌ Billhardt. Capacitated Agriculture​​ Fleet Vehicle Routing with​​​‌ Implements and Limited Autonomy:​ A model and a​‌ two-phase solution approach.​​2025 IEEE International Conference​​​‌ on Robotics and Automation​ (ICRA)Atlanta, United States​‌IEEEMay 2025,​​ 7160-7166HALDOIback​​​‌ to text
  • 26 inproceedings​A. B.Abdellah Bulaich​‌ Mehamdi, W.Wim​​ van Ackooij, L.​​​‌Luce Brotcorne, S.​Stéphane Gaubert and Q.​‌Quentin Jacquet. Duality​​ between polyhedral approximation of​​​‌ value functions and optimal​ quantization of measures.​‌CDC 2025 - 64th​​ IEEE Conference on Decision​​​‌ and ControlRio, Brazil​September 2025HAL
  • 27​‌ inproceedingsF.Francesco Morri​​, H.Hélène Le​​​‌ Cadre and L.Luce​ Brotcorne. Learning in​‌ Stackelberg Conjectural Games.​​ROADEF 2025Champs-sur-Marne, France​​​‌February 2025HALback​ to text
  • 28 inproceedings​‌Y.Yue Su,​​ A.Antoine Désir and​​​‌ A.Axel Parmentier.​ Learning-based pricing policy for​‌ substitute itineraries.MSOM​​ 2025 - The INFORMS​​​‌ Manufacturing and Service Operations​ Management annual conferenceLondon,​‌ United KingdomJune 2025​​HALback to text​​​‌

Conferences without proceedings

Edition (books,​​​‌ proceedings, special issue of‌ a journal)

  • 41 proceedings‌​‌Network Games, Artificial Intelligence,​​​‌ Control and Optimization.​NETGCOOP 2024 - 11th​‌ International Conference on Network​​ Games, Artificial Intelligence, Control​​​‌ and OptimizationLNCS 15185​Lille, FranceSpringerFebruary​‌ 2025, 159HAL​​DOIback to text​​​‌

Doctoral dissertations and habilitation​ theses

  • 42 thesisA.​‌Aitor López Sánchez.​​ Distributed, scalable, efficient and​​​‌ fair coordination for agriculture​ mobile robot fleets.​‌Centrale Lille Institut; Universidad​​ Rey Juan Carlos (Madrid)​​​‌September 2025HALback​ to text
  • 43 thesis​‌F.Francesco Morri.​​ Game-Theoretic and Learning-Based Approaches​​​‌ in Multi-Agent Systems.​Université de Lille; Inria​‌ & Université de Lille​​December 2025HALback​​​‌ to text
  • 44 thesis​W.Wenjiao Sun.​‌ Models and algorithms for​​ integrated vehicle routing and​​​‌ driver scheduling problems.​Centrale LilleOctober 2025​‌HALback to text​​
  • 45 thesisP.Pablo​​​‌ Torrealba-González. Order batching​ and picker routing in​‌ warehouses taking into account​​ human factors.Centrale​​​‌ LilleMarch 2025HAL​back to text

Reports​‌ & preprints

Other scientific publications

  • 56​​​‌ inproceedingsJ. T.José‌ Tomás Cabezas, V.‌​‌Víctor Bucarey, O.​​Ordonez Fernando and F.​​​‌Frédéric Semet. The‌ Ready-Mixed Concrete Dispatch Problem‌​‌ with Uncertain Delivery Times​​.Mixed Integer Programming​​​‌ Workshop 2025Valparaiso (Chile),‌ ChileDecember 2025HAL‌​‌
  • 57 inproceedingsM.Mathis​​ Guckert and H.Hélène​​​‌ Le Cadre. Target‌ Search Using a Swarm‌​‌ of UAVs: a Game​​ Formulation with Dynamic Information​​​‌.JRDVA 2025 -‌ Journées Régionales Drones et‌​‌ Véhicules AutonomesDunkerque, France​​April 2025HAL
  • 58​​​‌ miscH.Hélène Le‌ Cadre, M.Mandar‌​‌ Datar, M.Mathis​​ Guckert and E.Eitan​​​‌ Altman. Supplementary Material‌ to "Learning Market Equilibria‌​‌ Preserving Statistical Privacy Using​​ Performative Prediction".April​​​‌ 2025HAL

12.3 Cited‌ publications