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Behavior learning and evolution of swarm robot system using SVM

Sang-Wook Seo, Kwang-Eun Ko, Hyun-Chang Yang, Kwee-Bo Sim

发表年份
2007
引用次数
6

摘要

In swarm robot systems, each robot must behaves by itself according to the its states and environments, and if necessary, must cooperates with other robots in order to carry out a given task. Therefore it is essential that each robot has both learning and evolution ability to adapt the dynamic environments. In this paper, reinforcement learning method with SVM based on structural risk minimization and distributed genetic algorithms is proposed for behavior learning and evolution of collective autonomous mobile robots. By distributed genetic algorithm exchanging the chromosome acquired under different environments by communication each robot can improve its behavior ability. Specially, in order to improve the performance of evolution, selective crossover using the characteristic of reinforcement learning that basis of SVM is adopted in this paper.

关键词

Reinforcement learningRobotComputer scienceCrossoverMobile robotArtificial intelligenceSwarm behaviourRobot learningStructural risk minimizationSwarm robotics

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