Neural-network cross-coupled control system with application on circular tracking of linear motor X-Y table

Gongzhan Wang, Tzong-Jing Lee
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引用次数: 17

Abstract

In this article a new neural-network based cross-coupled control algorithm that integrates the cross-coupled control and neural network techniques together is presented In this neural network based cross-coupled control system, fixed gain PID controller for each individual axis is replaced by a heuristic neural network learning controller. The conventional cross-coupled controller is substituted by an efficient neural network cross-coupled controller. Experimental results show that the proposed new neural network based cross-coupled control scheme can be successfully applied to the precise circular tracking problem of a nonlinear uncertain linear motor X-Y table. It is also demonstrated that performance of the neural network based cross-coupled control scheme is superior to the conventional cross-coupled control scheme.
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神经网络交叉耦合控制系统在直线电机X-Y工作台圆周跟踪中的应用
本文提出了一种新的基于神经网络的交叉耦合控制算法,该算法将交叉耦合控制技术与神经网络技术相结合。在这种基于神经网络的交叉耦合控制系统中,每个单独轴的固定增益PID控制器被启发式神经网络学习控制器所取代。用一种高效的神经网络交叉耦合控制器代替传统的交叉耦合控制器。实验结果表明,基于神经网络的交叉耦合控制方法可以成功地应用于非线性不确定直线电机X-Y表的精确圆跟踪问题。实验还表明,基于神经网络的交叉耦合控制方案的性能优于传统的交叉耦合控制方案。
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