International audienceA new algorithm for global optimization of costly nonlinear continuous problems is presented in this paper. The algorithm is based on the scatter search metaheuristic, which has recently proved to be efficient for solving combinatorial and nonlinear optimization problems. A kriging-based prediction method has been coupled to the main optimization routine in order to discard the evaluation of solutions that are not likely to provide high quality function values. This makes the algorithm suitable for the optimization of computationally costly problems, as is illustrated in its application to two benchmark problems and its comparison with other algorithms
This paper proposes a novel adaptive local search algorithm for tackling real-valued (or continuous)...
This paper presents an innovative approach in finding an optimal solution of multimodal and multivar...
Production system optimization still remains a difficult problem even if fast analytical methods ar...
International audienceA new algorithm for global optimization of costly nonlinear continuous problem...
Abstract Scatter search (SS) is a metaheuristic frame-work that explores solution spaces by evolving...
Abstract — We describe the development and testing of a metaheuristic procedure, based on the scatte...
This paper proposes a hybrid scatter search (SS) algorithm for continuous global optimization proble...
This paper introduces two variants of a multiple criteria scatter search to deal withnonlinear conti...
A new metaheuristic global optimization method for non-linear and nondifferentiable problems is prop...
Recent years have witnessed the use of metaheuristic algorithms to solve the optimization problems t...
Scatter search is a population-based method that has recently been shown to yield promising outcomes...
Global optimization techniques have gained much attention in the design of industrial products becau...
AbstractIn spite of the widespread importance of nonlinear and parametric optimization, many standar...
Solving optimization problems is an ever-growing subject with an enormous number of algorithms. Exam...
Solving optimization problems is an ever-growing subject with an enormous number of algorithms. Exam...
This paper proposes a novel adaptive local search algorithm for tackling real-valued (or continuous)...
This paper presents an innovative approach in finding an optimal solution of multimodal and multivar...
Production system optimization still remains a difficult problem even if fast analytical methods ar...
International audienceA new algorithm for global optimization of costly nonlinear continuous problem...
Abstract Scatter search (SS) is a metaheuristic frame-work that explores solution spaces by evolving...
Abstract — We describe the development and testing of a metaheuristic procedure, based on the scatte...
This paper proposes a hybrid scatter search (SS) algorithm for continuous global optimization proble...
This paper introduces two variants of a multiple criteria scatter search to deal withnonlinear conti...
A new metaheuristic global optimization method for non-linear and nondifferentiable problems is prop...
Recent years have witnessed the use of metaheuristic algorithms to solve the optimization problems t...
Scatter search is a population-based method that has recently been shown to yield promising outcomes...
Global optimization techniques have gained much attention in the design of industrial products becau...
AbstractIn spite of the widespread importance of nonlinear and parametric optimization, many standar...
Solving optimization problems is an ever-growing subject with an enormous number of algorithms. Exam...
Solving optimization problems is an ever-growing subject with an enormous number of algorithms. Exam...
This paper proposes a novel adaptive local search algorithm for tackling real-valued (or continuous)...
This paper presents an innovative approach in finding an optimal solution of multimodal and multivar...
Production system optimization still remains a difficult problem even if fast analytical methods ar...