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LOCOMOTION

A Distributed Neural Network Architecture for Hexapod Robot Locomotion

Randall D. Beer, Hillel J. Chiel, Roger D. Quinn, Kenneth S. Espenschied, Patrik Larsson

Year
1992
Citations
121

Abstract

We present fully distributed neural network architecture for controlling the locomotion of a hexapod robot. The design of this network is directly based on work on the neuroethology of insect locomotion. Previously, we demonstrated in simulation that this controller could generate a continuous range of statically stable insect-like gaits as the activity of a single command neuron was varied and that it was robust to a variety of lesions. We now report that the controller can be utilized to direct the locomotion of an actual six-legged robot, and that it exhibits a range of gaits and degree of robustness in the real world that is quite similar to that observed in simulation.

Keywords

HexapodRobustness (evolution)Computer scienceRobotRobot locomotionArtificial neural networkCentral pattern generatorArtificial intelligenceMobile robotRobot control

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