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Collision avoidance for a mobile robot based on radial basis function hybrid force control technique

Collision avoidance for a mobile robot based on radial basis function hybrid force control technique
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摘要 Collision avoidance is always difficult in the planning path for a mobile robot. In this paper, the virtual force field between a mobile robot and an obstacle is formed and regulated to maintain a desired distance by hybrid force control algorithm. Since uncertainties from robot dynamics and obstacle degrade the performance of a collision avoidance task, intelligent control is used to compensate for the uncertainties. A radial basis function (RBF) neural network is used to regulate the force field of an accurate distance between a robot and an obstacle in this paper and then simulation studies are conducted to confirm that the proposed algorithm is effective. Collision avoidance is always difficult in the planning path for a mobile robot. In this paper, the virtual force field between a mobile robot and an obstacle is formed and regulated to maintain a desired distance by hybrid force control algorithm. Since uncertainties from robot dynamics and obstacle degrade the performance of a collision avoidance task, intelligent control is used to compensate for the uncertainties. A radial basis function (RBF) neural network is used to regulate the force field of an accurate distance between a robot and an obstacle in this paper and then simulation studies are conducted to confirm that the proposed algorithm is effective.
作者 温淑焕
出处 《Chinese Physics B》 SCIE EI CAS CSCD 2009年第10期4222-4228,共7页 中国物理B(英文版)
基金 Project supported by the Science and Technology Stress Projects of Hebei Province, China (Grant No 07213526)
关键词 mobile robot collision avoidance hybrid force/position control path planning RBF neural network mobile robot collision avoidance, hybrid force/position control, path planning, RBF neural network
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