采掘机器人的模糊监督——神经网络控制器技术
FUZZY SUPERVISION OF ROBOTIC EXCAVATOR RESEARCH ON NEURAL NETWORK CONTROLLERS
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摘要: 介绍一种基于规则的自学习神经网络控制器在采掘机器人上的应用.它根据实时执行的结果,采用多步学习-模糊监督学习方法,修正神经网络的教师信号,使控制算法简化,提高了计算的实时性,加快了学习速度实验验证了采用该方法取得的一些结果.Abstract: A method of rule-based self-learning neural-network controller applied to the robotic excavator is presented. According to the real-time control result, the controller takes advantage of the method of multiple-steps learning and fuzzy supervision to correct the teacher signals of neural-network, therefore, the control algorithm becomes simple, the reality of calculating is improved, and the learning speed is increased. This method is tested and verified by experiments.