AbstractThe performance of an optimization tool is largely determined by the efficiency of the search algorithm used in the process. The fundamental nature of a search algorithm will essentially determine its search efficiency and thus the types of problems it can solve. Modern metaheuristic algorithms are generally more suitable for global optimization. This paper carries out extensive global optimization of unconstrained and constrained problems using the recently developed eagle strategy by Yang and Deb in combination with the efficient differential evolution. After a detailed formulation and explanation of its implementation, the proposed algorithm is first verified using twenty unconstrained optimization problems or benchmarks. For the...
The purpose of this paper is to present a new and an alternative differential evolution (ADE) algori...
In this paper we propose, analyze, and test algorithms for linearly constrained optimiza-tion when n...
Engineering design optimization problems are formulated as large-scale mathematical programming prob...
The performance of an optimization tool is largely determined by the efficiency of the search algori...
AbstractThe performance of an optimization tool is largely determined by the efficiency of the searc...
Efficiency of an optimisation process is largely determined by the search algorithm and its fundamen...
Efficiency of an optimisation process is largely determined by the search algorithm and its fundamen...
This study proposes an optimization method called Global Best Algorithm for successful solution of c...
Modern metaheuristic algorithms are in general suited for global optimization. This paper combines t...
Abstract. Nonlinear optimization problems introduce the possibility of multiple local optima. The ta...
In this paper we propose, analyze, and test algorithms for constrained optimization when no use of d...
In this paper we propose, analyze, and test algorithms for constrained optimization when no use of d...
Nonlinear optimization problems introduce the possibility of multiple local optima. The task of glo...
At present, evolutionary optimization algorithms are increasingly used in the development of new tec...
An approach based on a (m+1)-ES and three simple tournament rules is proposed to solve global optimi...
The purpose of this paper is to present a new and an alternative differential evolution (ADE) algori...
In this paper we propose, analyze, and test algorithms for linearly constrained optimiza-tion when n...
Engineering design optimization problems are formulated as large-scale mathematical programming prob...
The performance of an optimization tool is largely determined by the efficiency of the search algori...
AbstractThe performance of an optimization tool is largely determined by the efficiency of the searc...
Efficiency of an optimisation process is largely determined by the search algorithm and its fundamen...
Efficiency of an optimisation process is largely determined by the search algorithm and its fundamen...
This study proposes an optimization method called Global Best Algorithm for successful solution of c...
Modern metaheuristic algorithms are in general suited for global optimization. This paper combines t...
Abstract. Nonlinear optimization problems introduce the possibility of multiple local optima. The ta...
In this paper we propose, analyze, and test algorithms for constrained optimization when no use of d...
In this paper we propose, analyze, and test algorithms for constrained optimization when no use of d...
Nonlinear optimization problems introduce the possibility of multiple local optima. The task of glo...
At present, evolutionary optimization algorithms are increasingly used in the development of new tec...
An approach based on a (m+1)-ES and three simple tournament rules is proposed to solve global optimi...
The purpose of this paper is to present a new and an alternative differential evolution (ADE) algori...
In this paper we propose, analyze, and test algorithms for linearly constrained optimiza-tion when n...
Engineering design optimization problems are formulated as large-scale mathematical programming prob...