We propose a pioneering enhanced genetic algorithm to find a global optimal solution without derivatives information. A new neighbor sampling method driven by a multi-basin dynamics framework is used to efficiently divert from one existing local optimum to another. The method investigates the rectangular-box regions constructed by dividing the interval of each axis in the search domain based on information of the constructed multi-basins, and then finds a better local optimum. This neighbor sampling and the local search are repeated alternately throughout the entire search domain until no better neighboring local optima could be found. We improve the quality of solutions by applying genetic algorithm with the resulting point as an initial p...
Some non-linear optimisation problems are difficult to solve by con-ventional hill-climbing methods,...
Genetic algorithms (GAs), a class of evolutionary algorithms, emerging to be a promising procedure f...
Metaheuristic search algorithms have been in use for quite a while to optimally solve complex search...
MasterWe focus on the global optimal solution and approach three phases to find the global optimal s...
In this paper, Hamming distance is used to control individual difference in the process of creating ...
This paper develops a framework for optimizing global-local hybrids of search or optimization proc...
The genetic algorithms (GAs) can be used as a global optimization tool for continuous and discrete f...
Abstract---Genetic algorithms represent an efficient global method for nonlinear optimization proble...
One of the challenges in global optimization is to use heuristic techniques to improve the behaviour...
A multi-population genetic algorithm (MPGA) is introduced to search for as many as possible of the l...
Abstract — A large fraction of studies on genetic algorithms (GA’s) emphasize finding a globally opt...
Hybridization of genetic algorithms with local search approaches can en-hance their performance in g...
This paper studies the efficiency and robustness of some recent and well known population set based ...
In the last few decades, genetic algorithms (GAs) demonstrated to be an effective approach for solvi...
The aim of this paper is to clearly demonstrate the importance of finding a good balance between gen...
Some non-linear optimisation problems are difficult to solve by con-ventional hill-climbing methods,...
Genetic algorithms (GAs), a class of evolutionary algorithms, emerging to be a promising procedure f...
Metaheuristic search algorithms have been in use for quite a while to optimally solve complex search...
MasterWe focus on the global optimal solution and approach three phases to find the global optimal s...
In this paper, Hamming distance is used to control individual difference in the process of creating ...
This paper develops a framework for optimizing global-local hybrids of search or optimization proc...
The genetic algorithms (GAs) can be used as a global optimization tool for continuous and discrete f...
Abstract---Genetic algorithms represent an efficient global method for nonlinear optimization proble...
One of the challenges in global optimization is to use heuristic techniques to improve the behaviour...
A multi-population genetic algorithm (MPGA) is introduced to search for as many as possible of the l...
Abstract — A large fraction of studies on genetic algorithms (GA’s) emphasize finding a globally opt...
Hybridization of genetic algorithms with local search approaches can en-hance their performance in g...
This paper studies the efficiency and robustness of some recent and well known population set based ...
In the last few decades, genetic algorithms (GAs) demonstrated to be an effective approach for solvi...
The aim of this paper is to clearly demonstrate the importance of finding a good balance between gen...
Some non-linear optimisation problems are difficult to solve by con-ventional hill-climbing methods,...
Genetic algorithms (GAs), a class of evolutionary algorithms, emerging to be a promising procedure f...
Metaheuristic search algorithms have been in use for quite a while to optimally solve complex search...