LEARNING
Evolving composite robot behaviour - a modular architecture
Trine Schifter Larsen, Søren Tranberg Hansen
- Year
- 2005
- Citations
- 14
Abstract
We have developed a composite control system for solving complex tasks with autonomous robots. The control system is evolved using artificial evolution and can be regarded as a modular decision tree where every node is a neural network. We show that the control system is robust to noise, is reactive, is extendable and can be set up to be configured automatically. Furthermore we show that robots in the real world work using this control system.
Keywords
Modular designRobotComputer scienceSelf-reconfiguring modular robotArtificial neural networkControl systemArtificial intelligenceArchitectureNode (physics)Set (abstract data type)
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