Servo control method based on neural network and disturbance observation

Jiong Ma, Zhenxing Sun, Shihua Li
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引用次数: 1

Abstract

In this paper, the method of improving the performance of permanent magnet synchronous motor in the presence of disturbance and friction is studied. First, collected data are used to train BP neural network to get an accurate friction model. Friction model is used to compensate the friction. Considering the influence of friction over-compensation or less-compensation and external disturbance, the disturbance observer is used to compensate the disturbance. Finally, the simulation analysis of the proposed compensation method shows that the proposed method based on the neural network and the disturbance observer can improve the position and velocity tracking accuracy.
基于神经网络和扰动观测的伺服控制方法
本文研究了在存在扰动和摩擦的情况下,提高永磁同步电机性能的方法。首先,利用采集到的数据对BP神经网络进行训练,得到准确的摩擦模型;采用摩擦模型对摩擦进行补偿。考虑摩擦过补偿或过补偿和外部扰动的影响,采用扰动观测器对扰动进行补偿。最后,对所提出的补偿方法进行仿真分析,结果表明基于神经网络和扰动观测器的补偿方法可以提高位置和速度的跟踪精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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