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Experience repository based Particle Swarm Optimization and its application to biped robot walking

Jeong-Jung Kim, Tae-Yong Choi, Ju-Jang Lee

Year
2008
Citations
2

Abstract

In this paper, experience repository based Particle Swarm Optimization (ERPSO) is suggested for effectively applying Particle Swarm Optimization (PSO) to real life problems. The ERPSO uses a concept experience repository to store previous position and fitness of particles to accelerate convergence speed of PSO. The proposed method was compared with PSO variants in a three dimensional dynamic simulator for the bipedal walking. The ERPSO found the best fitness value and Central Pattern Generator parameters that could produce a walking of a biped robot. And ERPSO has fast convergence property which reduces the evaluation of fitness of parameters in a real environment.

Keywords

Particle swarm optimizationConvergence (economics)RobotComputer scienceGenerator (circuit theory)Position (finance)Property (philosophy)Swarm behaviourBiped robotMulti-swarm optimization

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