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Reinforcement learning on a omnidirectional mobile robot

I. Lehrstuhl

Year
2004
Citations
26

Abstract

With this paper we describe a well suited, scalable problem for reinforcement learning approaches in the field of mobile robots. We show a suitable representation of the problem for a reinforcement approach and present our results with a model based standard algorithm. Two different approximators for the value function are used, a grid based approximator and a neural network based approximator.

Keywords

Reinforcement learningComputer scienceMobile robotOmnidirectional antennaArtificial intelligenceScalabilityArtificial neural networkRobotGridField (mathematics)

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