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GENETIC ALGORITHMS FOR GAIT SYNTHESIS IN A HEXAPOD ROBOT

M. Anthony Lewis, Andrew H. Fagg, George A. Bekey

发表年份
1994
引用次数
45

摘要

This paper describes the staged evolution of a complex motor pattern generator (CPG) for the control of the leg movements of a six-legged walking robot. The CPG is composed of a network of neurons. In contrast to the main stream work in neural networks, the interconnection weights are altered by a Genetic Algo-rithm (GA), rather than a learning algorithm. Staged evolution is used to improve the convergence rate of the algorithm, thus obtaining rapid evolution of behavior toward a goal set. First, an oscillator for the individual leg movements is evolved. Then, a network of these oscillators is evolved to coordinate the movements of the different legs. In this way, the designer specifies "islands of fitness " on the way to the final goal, rather than using a single fitness function or determining the ex-plicit solution to the control problem. By introducing a staged set of manageable challenges, the algorithm's performance is improved. These techniques may be applicable to other complex or ill-posed control prob-lems in robot control. The system itself determined how to evolve from one island to the next through the GA. 1.

关键词

Central pattern generatorHexapodGenetic algorithmComputer scienceDigital pattern generatorSet (abstract data type)GaitRobotFitness functionArtificial neural network

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