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Elina Rönnberg

Deputy Head of Department, Professor

Discrete optimisation as decision support

Careful planning is essential to make efficient use of resources. For large-scale and complex systems, the use of mathematical optimisation can have a great impact on resource efficiency. Planning problems of this kind occur in many different sectors and the available resources can be anything from electronic components, vehicles, or machines to people that perform some tasks.

In situations when it is impossible for a human planner to fully grasp all the possibilities and choose a best possible plan, optimisation can be used to aid the decision process. This includes to formulate a mathematical model of the problem and to develop or select a solution method to compute a good, or preferably optimal, solution. Decision problems that are formulated to plan or schedule the use of resources often take the form of discrete optimisation problems.

Current research activities are described under the research domain Mathematics and algorithms for intelligent decision-making that introduces the work done in the group I’m leading.

Man som tittar på sin dator.

Discrete optimisation

My research area is discrete optimisation, with a special interest in decomposition methods and applications within scheduling and resource allocation. Our applied projects are often carried out in collaboration with industry or with other stakeholders. Examples of studied applications are the design of electronic systems in aircraft, staff scheduling in healthcare, underground mining, and railway crew planning. Some of these are highlighted in the list of research projects below.

Our research projects contribute to pushing the limits for when optimisation can be of practical use, both with respect to how a practically relevant problem is addressed and modelled, and through the development of efficient solution strategies.

Method development

On the method development side, areas of contribution include Dantzig-Wolfe decomposition, Lagrangian relaxation, column generation, branch-and-price, and logic-based Benders decomposition to hybridize MIP and CP. Other methodological contributions are within dynamic programming, decision diagrams for optimisation, metaheuristics, and mathheuristics.

Research domain

PhD students

Former PhD students

  • Emil Karlsson, 2016-2021, main supervisor
    Thesis:
  • Fred Mayambala, Makarere University, Uganda, 2012-2017, co-supervisor
    Thesis:
  • Aigerim Saken, University of Exeter, UK, 2021—2024, co-supervisor
  • Yixin Zhao, 2012-2016, co-supervisor
    Thesis:

Professional activities

Professional activities

  • (Wallenberg AI, autonomous systems and software program) Research Management group in AI/Math
  • Specialist in Optimisation at Saab Aeronautics, 2014 - 2020
  • Co-founder of , 2009 -

Student theses

  • Implementing an RCESPP solver for the Electric Vehicle Routing (Sub)Problem, Jenny Enerbäck, 2024. In collaboration with Scania.

  • A matheuristic method for a multi-vehicle search and rescue problem, Didrik Axén, 2024. In collaboration with Saab.

  • An optimisation approach to scheduling and planning of charging for heavy electric vehicles, Lukas Schildt, 2024. In collaboration with Scania.

  • List of student theses not in DiVA (PDF)

Current teaching

  • for Master of Science in Engineering programmes in Applied Physics and Electrical Engineering, Engineering Mathematics, Biomedical Engineering, Computer Science and Software Engineering, and for the Bachelor's programme in Mathematics.
  • Project - Applied Mathematics (TATA62) for Mathematics, Master's Programme, and Applied Physics and Electrical Engineering (Y and Yi)

Publications

2024

Jenny Enerbäck, Lukas Eveborn, Elina Rönnberg (2024) 24th Symposium on Algorithmic Approaches for Transportation Modelling, Optimization, and Systems (ATMOS 2024), p. 3:1-3:18 (Conference paper)
Björn Morén, Elina Rönnberg (2024) Proceedings of the 14th International Conference on the Practice and Theory of Automated Timetabling, PATAT 2024, p. 355-358 (Conference paper)
Roghayeh Hajizadeh, Tatiana Polishchuk, Elina Rönnberg, Christiane Schmidt (2024) Proceedings of the 14th International Conference on the Practice and Theory of Automated Timetabling, PATAT 2024, p. 268-271 (Conference paper)
Johannes Varga, Günther R. Raidl, Elina Rönnberg, Tobias Rodemann (2024) Computers & Operations Research, Vol. 167, Article 106648 (Article in journal)
Johannes Varga, Emil Karlsson, Günther R. Raidl, Elina Rönnberg, Fredrik Lindsten, Tobias Rodemann (2024) Machine Learning, Optimization, and Data Science, p. 24-38 (Conference paper)

2023

Johannes Varga, Günther R. Raidl, Elina Rönnberg, Tobias Rodemann (2023) Optimization and Learning (Conference paper)
Stephen J. Maher, Elina Rönnberg (2023) Mathematical Programming Computation, Vol. 15, p. 509-548 (Article in journal)
Aigerim Saken, Emil Karlsson, Stephen J. Maher, Elina Rönnberg (2023) Springer Nature Operations Research Forum, Vol. 4, Article 62 (Article in journal)

2022

Emil Karlsson, Elina Rönnberg (2022) Data in Brief, Vol. 45, Article 108687 (Article in journal)
Emil Lindh, Kim Olsson, Elina Rönnberg (2022) Proceedings of the 13th International Conference on the Practice and Theory of Automated Timetabling - PATAT 2022, p. 95-114 (Conference paper)
Emil Karlsson, Elina Rönnberg (2022) Computers & Operations Research, Instance dataset for a multiprocessor scheduling problem withmultiple time windows and time lags: Similar instances with largedifferences in difficulty, Vol. 146, Article 105916 (Article in journal)
Fabio F. Oberweger, Günther R. Raidl, Elina Rönnberg, Marc Huber (2022) Integration of Constraint Programming, Artificial Intelligence, and Operations Research, CPAIOR 2022, p. 300-317 (Conference paper)

Organisation