Purpose - The purpose of the present paper is to show a comparative analysis of classical and modern heuristics such as genetic algorithms, simulated annealing, particle swarm optimization and bacterial chemotaxis, when they are applied to electrical engineering problems. Design/methodology/approach - Hybrid algorithms (HAs) obtained by a synergy between the previous listed heuristics, with the eventual addiction of the Tabu Search, have also been compared with the single heuristic performances. Findings - Empirically, a different sensitivity for initial values has been observed by changing type of heuristics. The comparative analysis has then been performed for two kind of problems depending on the dimension of the solution space to be ins...
Well established conventional algorithms are available for solving the optimum power flow (OPF) prob...
Metaheuristic optimization algorithms (Nature-Inspired Optimization Algorithms) are a class of algor...
This paper gives an overview of some stochastic optimization strategies, namely, evolution strategie...
Purpose - The purpose of the present paper is to show a comparative analysis of classical and modern...
xviii, 130 leaves : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P EE 2008 TingThe calculati...
This paper describes two optimisation methods which can be applied to the parameter selection stage ...
Abstract:- Several Evolutionary Algorithms (EAs) are applied in the design and optimization of digit...
The modern heuristic techniques mainly include the application of the artificial intelligence approa...
There are numerous optimisation problems for which heuristics are currently the only practical solut...
This book compares the performance of various evolutionary computation (EC) techniques when they are...
The Hybrid Genetic Algorithm is developed that out performs a simple genetic algorithm in almost all...
There are many problems that still cannot be solved exactly in a reasonable time despite rapid incre...
The number of heuristic optimization algorithms has exploded over the last decade with new methods b...
Evolutionary algorithms, simulated annealing (SA), and tabu search (TS) are general iterative algori...
Nowadays the requirements imposed by the industry and economy ask for better quality and performance...
Well established conventional algorithms are available for solving the optimum power flow (OPF) prob...
Metaheuristic optimization algorithms (Nature-Inspired Optimization Algorithms) are a class of algor...
This paper gives an overview of some stochastic optimization strategies, namely, evolution strategie...
Purpose - The purpose of the present paper is to show a comparative analysis of classical and modern...
xviii, 130 leaves : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P EE 2008 TingThe calculati...
This paper describes two optimisation methods which can be applied to the parameter selection stage ...
Abstract:- Several Evolutionary Algorithms (EAs) are applied in the design and optimization of digit...
The modern heuristic techniques mainly include the application of the artificial intelligence approa...
There are numerous optimisation problems for which heuristics are currently the only practical solut...
This book compares the performance of various evolutionary computation (EC) techniques when they are...
The Hybrid Genetic Algorithm is developed that out performs a simple genetic algorithm in almost all...
There are many problems that still cannot be solved exactly in a reasonable time despite rapid incre...
The number of heuristic optimization algorithms has exploded over the last decade with new methods b...
Evolutionary algorithms, simulated annealing (SA), and tabu search (TS) are general iterative algori...
Nowadays the requirements imposed by the industry and economy ask for better quality and performance...
Well established conventional algorithms are available for solving the optimum power flow (OPF) prob...
Metaheuristic optimization algorithms (Nature-Inspired Optimization Algorithms) are a class of algor...
This paper gives an overview of some stochastic optimization strategies, namely, evolution strategie...