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Séminaire hybride : Advances in direct search methods for multiobjective derivative-free optimization

Séminaire hybride : Advances in direct search methods for multiobjective derivative-free optimization
Séminaire “Un(e) chercheur(-euse) du GERAD vous parle!”

Advances in direct search methods for multiobjective derivative-free optimization

27 nov. 2024   11h00 — 12h00

Ludovic Salomon Polytechnique Montréal, Canada

Séminaire en format hybride au GERAD local 4488 ou Zoom.

Derivative-free optimization aims at solving optimization problems that do not have an exploitable analytical structure (i.e. differentiability, convexity, and so on), that precludes the use of classical derivative-based techniques. Typical applications arise in engineering contexts involving numerical simulations/models of complex physical systems, whose structure cannot be exploited. With advances in computer science, the field of derivative-free optimization has taken considerable importance over the last two decades.

Direct search methods rely on sampling the objective function and take action solely based on those function values without gradient approximation or model building. They are a class of efficient and robust algorithms for solving such problems. Their extension to multiobjective optimization, where one looks to optimize multiple criteria simultaneously, has only begun in the last decade.

After introducing some main concepts of multiobjective optimization, we will give an overview of a state-of-the-art multiobjective direct search algorithm, DMulti-MADS, implemented in the Nomad software; and present some recent extensions, i.e., new heuristic search methods, and the handling of mixed-integer variables. Its performance will be illustrated on benchmarks and engineering problems.

Date

Mercredi 27 novembre 2024
Débute à 11h00

Prix

gratuit

Contact

Lieu

Pavillon André-Aisenstadt
Campus de l'Université de Montréal
2920, chemin de la Tour
Montréal Québec H3T 1J4
Canada
AA-4488

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