Fusion of fuzzy agents for the reactive navigation of a mobile robot
M. Benreguieg, H. Mâaref, C. Barret
- Year
- 2002
- Citations
- 3
Abstract
We propose a sensor-based navigation algorithm based on the fusion of elementary behaviors. The proposed navigator combines two types of obstacle avoidance behavior, one for convex obstacles and one for the concave ones. To avoid the convex obstacles the navigator uses a fuzzy tuned artificial potential field method. The concave obstacle avoidance behavior results from the mixture of a "wall-following" behavior with a creation of transition subgoals. An automatically online tuned fuzzy wall-following system using a neuro-fuzzy structure is designed. The incorporation in the learning cost function of a weight decay term prevents from an excessive growth of the weights and allows a permanent learning giving a robust controller optimized with respect to the actual physical characteristics of the robot. The effectiveness of the proposed methods is verified by carrying experiments on the miniature mobile robot Khepera(R).
Keywords
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