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Quadruped gait learning using cyclic genetic algorithms

Gary B. Parker, William T. Tarimo, Michael B. Cantor

发表年份
2011
引用次数
5

摘要

Generating walking gaits for legged robots is a challenging task. Gait generation with proper leg coordination involves a series of actions that are continually repeated to create sustained movement. In this paper we present the use of a Cyclic Genetic Algorithm (CGA) to learn gaits for a quadruped servo robot with three degrees of movement per leg. An actual robot was used to generate a simulation model of the movement and states of the robot. The CGA used the robot's unique features and capabilities to develop gaits specific for that particular robot. Tests done in simulation show the success of the CGA in evolving a reasonable control program and preliminary tests on the robot show that the resultant control program produces a suitable gait.

关键词

RobotGaitComputer scienceGenetic algorithmTask (project management)Robot controlRobot kinematicsMovement (music)SimulationArtificial intelligence

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