RJCIA 2022National audienceThis paper proposes a new cooperation-based metaheuristic for searching global optima of optimization functions. It relies on a local search process coupled with a cooperative semi-local search process. Its performances are compared against four other metaheuristics on unconstrained monoobjective optimization problems. Results show that the proposed metaheuristic is able to find the global minimum of the tested functions faster than the compared methods while reducing the number of iterations and the number of calls of the objective function.Dans cet article nous proposons une nouvelle métaheuristique basée sur la coopération pour chercher l'optimum global de fonctions à optimiser. Elle repose sur deux processus d...
Multimodal optimization deals with problems where multiple feasible global solutions coexist. Despit...
This paper presents an innovative approach in finding an optimal solution of multimodal and multivar...
This talk provides a complete background on metaheuristics and presents in a unified view the main d...
RJCIA 2022National audienceThis paper proposes a new cooperation-based metaheuristic for searching g...
International audienceA new cooperation-based metaheuristic is proposed for searching global optima ...
The interface between computer science and operations research has drawn much attention recently esp...
A new metaheuristic global optimization method for non-linear and nondifferentiable problems is prop...
Optimization is a more important field of research. With increasing the complexity of real-world pro...
Optimization problems are defined as the functions whereby the target is to find the optimum state d...
I. Introduction: Global optimization endeavors to find the optima of the functions that are non-lin...
This paper presents the Constructive Cooperative Coevolutionary () algorithm, applied to continuous ...
Abstract—Continuous optimization is one of the most active research lines in evolutionary and metahe...
In this thesis, the solution space exploration by the metaheuristic is developed. The metaheuristics...
Local search is an integral part of many meta-heuristic strategies that solve single objective optim...
An Alternating Intensification/Diversification (AID) method is proposed to tackle global optimizatio...
Multimodal optimization deals with problems where multiple feasible global solutions coexist. Despit...
This paper presents an innovative approach in finding an optimal solution of multimodal and multivar...
This talk provides a complete background on metaheuristics and presents in a unified view the main d...
RJCIA 2022National audienceThis paper proposes a new cooperation-based metaheuristic for searching g...
International audienceA new cooperation-based metaheuristic is proposed for searching global optima ...
The interface between computer science and operations research has drawn much attention recently esp...
A new metaheuristic global optimization method for non-linear and nondifferentiable problems is prop...
Optimization is a more important field of research. With increasing the complexity of real-world pro...
Optimization problems are defined as the functions whereby the target is to find the optimum state d...
I. Introduction: Global optimization endeavors to find the optima of the functions that are non-lin...
This paper presents the Constructive Cooperative Coevolutionary () algorithm, applied to continuous ...
Abstract—Continuous optimization is one of the most active research lines in evolutionary and metahe...
In this thesis, the solution space exploration by the metaheuristic is developed. The metaheuristics...
Local search is an integral part of many meta-heuristic strategies that solve single objective optim...
An Alternating Intensification/Diversification (AID) method is proposed to tackle global optimizatio...
Multimodal optimization deals with problems where multiple feasible global solutions coexist. Despit...
This paper presents an innovative approach in finding an optimal solution of multimodal and multivar...
This talk provides a complete background on metaheuristics and presents in a unified view the main d...