Reinforcement function design and bias for efficient learning in mobile robots
Claude Touzet, J.M. Santos
- Year
- 2002
- Citations
- 2
Abstract
The main paradigm in sub-symbolic learning robot domain is the reinforcement learning method. Various techniques have been developed to deal with the memorization/generalization problem, demonstrating the superior ability of artificial neural network implementations. In this paper, we address the issue of designing the reinforcement so as to optimize the exploration part of the learning. We also present and summarize works relative to the use of bias intended to achieve the effective synthesis of the desired behavior. Demonstrative experiments involving a self-organizing map implementation of the Q-learning and real mobile robots (Nomad 200 and Khepera) in a task of obstacle avoidance behavior synthesis are described.
Keywords
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