Hard optimization stands for a class of problems which solutions cannot be found by an exact method, with a polynomial complexity.Finding the solution in an acceptable time requires compromises about its accuracy.Metaheuristics are high-level algorithms that solve these kind of problems. They are generic and efficient (i.e. they find an acceptable solution according to defined criteria such as time, error, etc.).The first chapter of this thesis is partially dedicated to the state-of-the-art of these issues, especially the study of two families of population based metaheuristics: evolutionnary algorithms and swarm intelligence based algorithms.In order to propose an innovative approach in metaheuristics research field, sensitivity analysis i...
Metaheuristic algorithms have received much attention recently for solving different optimization an...
This paper introduces a variant of Artificial Bee Colony algorithm and compares its results with a n...
Nature has provided rich models for computational problem solving, including optimizations based on ...
Hard optimization stands for a class of problems which solutions cannot be found by an exact method,...
L'optimisation difficile représente une classe de problèmes dont la résolution ne peut être obtenue ...
Metaheuristics are a new family of stochastic algorithms which aim at solving difficult optimization...
Les métaheuristiques sont une famille d'algorithmes stochastiques destinés à résoudre des problèmes ...
Nowadays, there is an increasing dependence on metaheuristic algorithms for solving combinatorial op...
International audienceMetaheuristics for Hard Optimization comprises of three parts. The first part ...
Meta-heuristics are recognized to be successful to deal with multiobjective optimization problems bu...
Optimization problems appear in many fields, as various as identification problems, supervised learn...
Real-world complex optimization problems are one of the most complex challenges faced by scientific ...
Dans le cadre de l'optimisation multiobjectif, les métaheuristiques sont reconnues pour être des mét...
Metaheuristic algorithms have become powerful tools for modeling and optimization. In this article, ...
AbstractTypically, the performance of swarm and evolutionary methods is assessed by comparing their ...
Metaheuristic algorithms have received much attention recently for solving different optimization an...
This paper introduces a variant of Artificial Bee Colony algorithm and compares its results with a n...
Nature has provided rich models for computational problem solving, including optimizations based on ...
Hard optimization stands for a class of problems which solutions cannot be found by an exact method,...
L'optimisation difficile représente une classe de problèmes dont la résolution ne peut être obtenue ...
Metaheuristics are a new family of stochastic algorithms which aim at solving difficult optimization...
Les métaheuristiques sont une famille d'algorithmes stochastiques destinés à résoudre des problèmes ...
Nowadays, there is an increasing dependence on metaheuristic algorithms for solving combinatorial op...
International audienceMetaheuristics for Hard Optimization comprises of three parts. The first part ...
Meta-heuristics are recognized to be successful to deal with multiobjective optimization problems bu...
Optimization problems appear in many fields, as various as identification problems, supervised learn...
Real-world complex optimization problems are one of the most complex challenges faced by scientific ...
Dans le cadre de l'optimisation multiobjectif, les métaheuristiques sont reconnues pour être des mét...
Metaheuristic algorithms have become powerful tools for modeling and optimization. In this article, ...
AbstractTypically, the performance of swarm and evolutionary methods is assessed by comparing their ...
Metaheuristic algorithms have received much attention recently for solving different optimization an...
This paper introduces a variant of Artificial Bee Colony algorithm and compares its results with a n...
Nature has provided rich models for computational problem solving, including optimizations based on ...