Predictive learning control and application to servo system of DC motor

H. Nakamura, N. Shimozono
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引用次数: 1

Abstract

A novel algorithm for learning control is proposed and investigated experimentally. It is assumed that the desired output is periodic and that its period is known. At each sampling time, the control input is modified so as to minimize the quadratic criterion on predicted future errors. Future errors are estimated from the following data: past errors in the last attempt, present error, control input up to the present time, and the step-response data of the system measured previously. Experimental results on the DC servo motor showed that tracking errors were reduced to +or-1 pulse after only four attempts. It is concluded that the proposed method is very useful for controllers of machine tools and industrial robots because the algorithm can be easily implemented on a personal computer or a microprocessor, the learning converges quickly, and no identification is required other than measuring its step response.<>
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预测学习控制及其在直流电机伺服系统中的应用
提出了一种新的学习控制算法,并进行了实验研究。假设期望的输出是周期性的,并且它的周期是已知的。在每次采样时,对控制输入进行修改,使预测未来误差的二次准则最小化。根据以下数据估计未来的误差:上次尝试中的过去误差,当前误差,到当前时间的控制输入,以及先前测量的系统的阶跃响应数据。在直流伺服电机上的实验结果表明,经过四次尝试后,跟踪误差减小到+或1脉冲。结果表明,该方法对机床和工业机器人的控制器非常有用,因为该算法易于在个人计算机或微处理器上实现,学习收敛速度快,除了测量其阶跃响应外不需要识别
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