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1992 | OriginalPaper | Buchkapitel

A Reinforcement Connectionist Approach to Robot Path Finding in Non-Maze-Like Environments

verfasst von : José R. Del Millán, Carme Torras

Erschienen in: Reinforcement Learning

Verlag: Springer US

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This paper presents a reinforcement connectionist system which finds and learns the suitable situation-action rules so as to generate feasible paths for a point robot in a 2D environment with circular obstacles. The basic reinforcement algorithm is extended with a strategy for discovering stable solution paths. Equipped with this strategy and a powerful codification scheme, the path-finder (i) learns quickly, (ii) deals with continuous-valued inputs and outputs, (iii) exhibits good noise-tolerance and generalization capabilities, (iv) copes with dynamic environments, and (v) solves an instance of the path finding problem with strong performance demands.

Metadaten
Titel
A Reinforcement Connectionist Approach to Robot Path Finding in Non-Maze-Like Environments
verfasst von
José R. Del Millán
Carme Torras
Copyright-Jahr
1992
Verlag
Springer US
DOI
https://doi.org/10.1007/978-1-4615-3618-5_8

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