Genetic algorithm is widely used in optimization problems for its excellent global search capabilities and highly parallel processing capabilities; but, it converges prematurely and has a poor local optimization capability in actual operation. Simulated annealing algorithm can avoid the search process falling into local optimum. A hybrid genetic algorithm based on simulated annealing is designed by combining the advantages of genetic algorithm and simulated annealing algorithm. The numerical experiment represents the hybrid genetic algorithm can be applied to solve the function optimization problems efficiently
Abstract: This paper deals with a new algorithm of a parallel simulated annealing HGSA which include...
Simulated annealing is an established method for global optimization. Perhaps its most salient featu...
Use of non-deterministic algorithms for solving multi-variable optimization problems is widely used ...
Combinatorial optimization problems arise in many scientific and practical applications. Therefore m...
The optimization problems on real-world usually have non-linear characteristics. Solving non-linear ...
The guided random search techniques, genetic algorithms and simulated annealing, are very promising ...
In many heuristic optimization, it is easy to be trapped in local optimal. In contrast, genetic algo...
In this paper, a new hybrid Particle Swarm Optimization algorithm is introduced which makes use of t...
This paper theoretically compares the performance of simulated annealing and evolutionary algorithms...
Simulated annealing is one of the several heuristic optimisation techniques, that has been studied i...
Simulated annealing is a useful heuristic for finding good solutions for difficult combinatorial opt...
A simple but effective evolutionary algorithm is proposed in this paper for solving complicated opti...
This thesis investigates the hybrid application of stochastic and heuristic algorithms, in particula...
Several methods are available for weight and shape optimization of structures, among which Evolution...
. Global Optimization has become an important branch of mathematical analysis and numerical analysis...
Abstract: This paper deals with a new algorithm of a parallel simulated annealing HGSA which include...
Simulated annealing is an established method for global optimization. Perhaps its most salient featu...
Use of non-deterministic algorithms for solving multi-variable optimization problems is widely used ...
Combinatorial optimization problems arise in many scientific and practical applications. Therefore m...
The optimization problems on real-world usually have non-linear characteristics. Solving non-linear ...
The guided random search techniques, genetic algorithms and simulated annealing, are very promising ...
In many heuristic optimization, it is easy to be trapped in local optimal. In contrast, genetic algo...
In this paper, a new hybrid Particle Swarm Optimization algorithm is introduced which makes use of t...
This paper theoretically compares the performance of simulated annealing and evolutionary algorithms...
Simulated annealing is one of the several heuristic optimisation techniques, that has been studied i...
Simulated annealing is a useful heuristic for finding good solutions for difficult combinatorial opt...
A simple but effective evolutionary algorithm is proposed in this paper for solving complicated opti...
This thesis investigates the hybrid application of stochastic and heuristic algorithms, in particula...
Several methods are available for weight and shape optimization of structures, among which Evolution...
. Global Optimization has become an important branch of mathematical analysis and numerical analysis...
Abstract: This paper deals with a new algorithm of a parallel simulated annealing HGSA which include...
Simulated annealing is an established method for global optimization. Perhaps its most salient featu...
Use of non-deterministic algorithms for solving multi-variable optimization problems is widely used ...