Personal tools

Skip to content. | Skip to navigation

You are here: Home Papers Papers in international journals Stochastic star

Stochastic star

This paper reports the results of the adoption of a probabilistically defined communication structure in a special algorithm coined as EPSO – Evolutionary Particle Swarm Optimization, which is classified as an evolutionary algorithm using a particle movement rule as the recombination operator. Alternatively, EPSO may be seen as an algorithm of the family of PSO (Particle Swarm Optimization) but with a self-adaptive mechanism applied to make the weights of the movement rule evolve improving the performance of the algorithm. The paper presents results showing that a probabilistically controlled communication (to the particles of a swarm) of the location of the best-so-far point leads to better convergence and that the optimal value of the probability of communication depends on the topology of the surface being searched. Also, full communication (similar to classical PSO) has in all cases been shown to be worse than probabilistically constrained communication. This is demonstrated by comparing results in different test functions and also in the application of EPSO to an industrially relevant application – the reactive power planning in large scale power systems. ..

ijcir2007_artigo_Revised Final.pdf — PDF document, 204Kb

Document Actions
Contact

INESC TEC
Campus da FEUP
Rua Dr. Roberto Frias
4200 - 465 Porto
Portugal

Tel. +351 22 209 4000
Fax +351 22 209 4050

Vladimiro Miranda
vmiranda@inesctec.pt

« Maio 2024 »
Maio
Do
12345
6789101112
13141516171819
20212223242526
2728293031