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The identification of joint parameters for modular robots using fuzzy theory and a genetic algorithm

Yangmin Li, Xiaoping Liu, Zhaoyang Peng, Yugang Liu

Year
2002
Citations
13

Abstract

Summary This paper discusses a technique for identifying the joint parameters of a modular robot in order to study the dynamic characteristics of the whole structure and to realise dynamic control. A method for identifying the joint parameters of the structure applying fuzzy logic combined with a genetic algorithm has been studied using a 9-DOF modular redundant robot. A Genetic Algorithm was used in the fuzzy optimisation, which helped to avoid converging to locally optimal solutions and made the results identified much more reasonable. The joint parameters of a 9-DOF modular redundant robot have been identified.

Keywords

Modular designFuzzy logicJoint (building)Genetic algorithmRobotIdentification (biology)Computer scienceAlgorithmSelf-reconfiguring modular robotFuzzy control system

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