LOCOMOTION
Incremental Evolution of Neural Controllers for Navigation in a 6-legged Robot
David Filliat, Jérôme Kodjabachian, Jean-Arcady Meyer
- Year
- 1999
- Citations
- 40
Abstract
This paper describes how the SGOCE paradigm has been used within the context of a "minimal simulation " strategy to evolve neural networks controlling locomotion and obstacle-avoidance in a 6-legged robot. Such controllers have been first evolved through simulation and then successfully downloaded on the real robot.
Keywords
RobotObstacle avoidanceComputer scienceContext (archaeology)Artificial neural networkObstacleRobot locomotionRobot controlArtificial intelligenceMobile robot
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