Home /Research /Neural network and fuzzy logic techniques based collision avoidance for a mobile robot
LEARNING

Neural network and fuzzy logic techniques based collision avoidance for a mobile robot

Minglu Zhang, Shangxian Peng, Qinghao Meng

Year
1997
Citations
20

Abstract

This paper is concerned with a mobile robot reactive navigation in an unknown cluttered environment based on neural network and fuzzy logic. Reactive navigation is a mapping between sensory data and commands without planning. This article's task is to provide a steering command letting a mobile robot avoid a collision with obstacles. In this paper, the authors explain how to perform a currently perceptual space partitioning for a mobile robot by the use of an ART neural network, and then, how to build a 3-dimensional fuzzy controller for mobile robot reactive navigation. The results presented, whether experimented or simulation, show that our method is well adapted to this type of problem.

Keywords

Mobile robotMobile robot navigationCollision avoidanceComputer scienceFuzzy logicRobotArtificial intelligenceArtificial neural networkRobot controlReal-time computing

Related papers

Browse all LEARNING papers