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Evolving gaits for hexapod robots using cyclic genetic algorithms

Gary B. Parker

Year
2005
Citations
23

Abstract

A major facet of multi-legged robot control is locomotion. Each leg must move in such a manner that it efficiently produces thrust and provides maximum support. The motion of all the legs must be coordinated so that they are working together to provide constant stability while propelling the robot forward. In this paper, we discuss the use of a cyclic genetic algorithm (CGA) to evolve control programs that produce gaits for actual hexapod robots. Tests done in simulation and verified on the actual robot show that the CGA successfully produces gaits for both fully capable and disabled robots.

Keywords

HexapodRobotComputer scienceGenetic algorithmConstant (computer programming)Stability (learning theory)Control theory (sociology)Legged robotThrustControl (management)

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