基于模糊神经网络的多移动机器人自学习协调系统

A SELF LEARNING MOTION PLANNING SYSTEM FOR MULTIPLE MOBILE ROBOTS BASED ON FUZZY-NEURO NETWORKS

  • 摘要: 研究多移动机器人的运动规划问题.针对机器人模型未知或不精确以及环境的动态变化,提出一种自学习模糊控制器(FLC)来进行准确的速度跟踪.首先通过神经网络的学习训练构造FLC,再由再励学习算法来在线调节FLC的输出,以校正机器人运动状态,实现安全协调避撞.

     

    Abstract: In this paper,we discuss motion planning method for multiple mobile robots in a working environment. In order to move safely in the same workspace,robots must be able to track the velocity accurately deduced by its Planning System .Because of uncertainty of the accurate mathematical model and disturbance of the environment ,it is usually difficult to do so. In the worst case, crash between two robots may occur. A Self-adjusting Motion Planning System ,based on Fuzzy-Neuro networks, is proposed to adjust the actual velocity .Through off-line and on-line learning algorithm,a fuzzy logic controller is constructed to greatly minimize the tracking error, so the safety of the robots can be attained. Simulation results based on the scheme are presented to demonstrate its efficiency.

     

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