Evolving non-trivial behaviors on real robots: A garbage collecting robot |
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Authors: | Stefano Nolfi |
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Affiliation: | Institute of Psychology, National Research Council, 15 Viale Marx, 00187, Rome, Italy |
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Abstract: | ![]() Recently, a new approach involving a form of simulated evolution has been proposed to build autonomous robots. However, it is still not clear if this approach is adequate for real life problems. In this paper we show how control systems that perform a non-trivial sequence of behaviors can be obtained with this methodology by “canalizing” the evolutionary process in the right direction. In the experiment described in the paper, a mobile robot was successfully trained to keep clear an arena surrounded by walls by locating, recognizing, and grasping “garbage” objects and by taking collected objects outside the arena. The controller of the robot was evolved in simulation and then downloaded and tested on the real robot. We also show that while a given amount of supervision may canalize the evolutionary process in the right direction the addition of unnecessary constraints can delay the evolution of the desired behavior. |
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Keywords: | Autonomous robots Evolutionary robotics Neural networks Genetic algorithms |
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