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Behavior Fusion of Robot Navigation Using a Fuzzy Neural Network

Kai‐Tai Song, Jean-Yuan Lin

Year
2006
Citations
24

Abstract

This paper presents a design of behavior-fusion architecture for mobile robot navigation. We first design three behaviors for robot navigation, including obstacle avoidance, wall following, and goal seeking. We implement these primitive behaviors by using fuzzy-logic control approaches. Then, the fusion weight of each behavior is determined by using the proposed behavior-fusion neural network. The neural network maps the current environment sensor data to suitable fusion weights. Both computer simulation and practical experiments verify the effectiveness of the method.

Keywords

Mobile robotObstacle avoidanceArtificial neural networkComputer scienceSensor fusionRobotMobile robot navigationFuzzy logicArtificial intelligenceFusion

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