In this paper, a new Modified Meta-Heuristic algorithm is proposed. This method contains some modifications to improve the performance of the simulated-annealing algorithm (SA). Most authors who deal with improving the SA algorithm presented some improvements and modifications to one or more of the five standard features of the SA algorithm. In this paper, we improve the SA algorithm by presenting some suggestions and modifications to all five standard features of the SA algorithm. Through these suggestions and modifications, we obtained a new algorithm that finds the approximate solution to the global minimum of a non-convex function. The new algorithm contains novel parameters, which are updated at each iteration. Therefore, the variety a...
In this paper we are concerned with global optimization, which can be defined as the problem of find...
Abstract. Global optimization involves the difficult task of the identification of global extremitie...
Solving complex optimization problems can be painstakingly difficult endeavor considering multiple a...
This book presents state of the art contributes to Simulated Annealing (SA) that is a well-known pro...
International audienceFinding the global minimum of a nonconvex optimization problem is a notoriousl...
Simulated annealing is a global optimization method that distinguishes between different local optim...
This paper is concerned with a novel optimization algorithm that implements an enhanced formulation ...
In this paper, a hybrid gradient simulated annealing algorithm is guided to solve the constrained op...
In this paper we consider the problem of finding all the global maximizers of a given nonlinear opti...
Many statistical methods rely on numerical optimization to estimate a model\u27s parameters. Unfortu...
In this work we consider the problem of finding all the global maximizers of a given nonlinear optim...
Optimization is a more important field of research. With increasing the complexity of real-world pro...
International audienceMetaheuristics exhibit desirable properties like simplicity, easy parallelizab...
Abstract Simulated annealing is a popular local search meta-heuristic used to address discrete and, ...
In this work we consider the problem of finding all the global maximizers of a given nonlinear optim...
In this paper we are concerned with global optimization, which can be defined as the problem of find...
Abstract. Global optimization involves the difficult task of the identification of global extremitie...
Solving complex optimization problems can be painstakingly difficult endeavor considering multiple a...
This book presents state of the art contributes to Simulated Annealing (SA) that is a well-known pro...
International audienceFinding the global minimum of a nonconvex optimization problem is a notoriousl...
Simulated annealing is a global optimization method that distinguishes between different local optim...
This paper is concerned with a novel optimization algorithm that implements an enhanced formulation ...
In this paper, a hybrid gradient simulated annealing algorithm is guided to solve the constrained op...
In this paper we consider the problem of finding all the global maximizers of a given nonlinear opti...
Many statistical methods rely on numerical optimization to estimate a model\u27s parameters. Unfortu...
In this work we consider the problem of finding all the global maximizers of a given nonlinear optim...
Optimization is a more important field of research. With increasing the complexity of real-world pro...
International audienceMetaheuristics exhibit desirable properties like simplicity, easy parallelizab...
Abstract Simulated annealing is a popular local search meta-heuristic used to address discrete and, ...
In this work we consider the problem of finding all the global maximizers of a given nonlinear optim...
In this paper we are concerned with global optimization, which can be defined as the problem of find...
Abstract. Global optimization involves the difficult task of the identification of global extremitie...
Solving complex optimization problems can be painstakingly difficult endeavor considering multiple a...