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Intelligent complementary sliding-mode control for lusms-based X-Y-;8; motion control stage

机译:基于亮度的X-Y-; 8的智能互补滑模控制运动控制台

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摘要

An intelligent complementary sliding-mode control (ICSMC) system using a recurrent wavelet-based Elman neural network (RWENN) estimator is proposed in this study to control the mover position of a linear ultrasonic motors (LUSMs)-based X-Y-;8; motion control stage for the tracking of various contours. By the addition of a complementary generalized error transformation, the complementary sliding-mode control (CSMC) can efficiently reduce the guaranteed ultimate bound of the tracking error by half compared with the slidingmode control (SMC) while using the saturation function. To estimate a lumped uncertainty on-line and replace the hitting control of the CSMC directly, the RWENN estimator is adopted in the proposed ICSMC system. In the RWENN, each hidden neuron employs a different wavelet function as an activation function to improve both the convergent precision and the convergent time compared with the conventional Elman neural network (ENN). The estimation laws of the RWENN are derived using the Lyapunov stability theorem to train the network parameters on-line. A robust compensator is also proposed to confront the uncertainties including approximation error, optimal parameter vectors, and higher-order terms in Taylor series. Finally, some experimental results of various contours tracking show that the tracking performance of the ICSMC system is significantly improved compared with the SMC and CSMC systems.
机译:本研究提出了一种基于递归小波的Elman神经网络(RWENN)估计器的智能互补滑模控制(ICSMC)系统,以控制基于线性超声电机(LUSMs)的X-Y-; 8的动子位置。运动控制平台,用于跟踪各种轮廓。通过添加互补的广义误差变换,与使用饱和函数的滑模控制(SMC)相比,互补滑模控制(CSMC)可以有效地将保证的跟踪误差最终极限降低一半。为了在线估计集总不确定性并直接替换CSMC的命中控制,在建议的ICSMC系统中采用RWENN估计器。在RWENN中,与传统的Elman神经网络(ENN)相比,每个隐藏的神经元都采用不同的小波函数作为激活函数,以提高收敛精度和收敛时间。使用Lyapunov稳定性定理导出RWENN的估计定律,以在线训练网络参数。还提出了一种鲁棒的补偿器来应对不确定性,包括泰勒级数中的逼近误差,最优参数向量和高阶项。最后,各种轮廓跟踪的一些实验结果表明,与SMC和CSMC系统相比,ICSMC系统的跟踪性能得到了显着改善。

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