Deep Neural Network System Identification for Servomechanism System

Mohamed A. Shamseldin
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Abstract

This paper presents a systematic technique for designing the input signal to identify the one-stage servomechanism system. Sources of nonlinearities such as friction and backlash consider an obstacle to obtaining an accurate model. Also, most such systems suffer from a lack of system parameters data. So, this study establishes a model using the black-box modeling approach; simulations are performed based on real-time data collected by LabVIEW software and processed using MATLAB System Identification toolbox. The input signal for the servomechanism system driver is a pseudo-random binary sequence that considers violent excitation in the frequency interval and the output signal is the corresponding stage speed measured by rotary encoder. The candidate models were obtained using linear least squares, nonlinear least squares, and Deep Neural Network (DNN). The validation results proved that the identified model based on DNN has the smallest mean square errors compared to other candidate models.
伺服机构系统的深度神经网络辨识
本文提出了一种系统的设计单级伺服机构系统输入信号的方法。摩擦和间隙等非线性因素的来源是获得精确模型的障碍。此外,大多数这样的系统都缺乏系统参数数据。因此,本研究采用黑盒建模方法建立模型;仿真基于LabVIEW软件实时采集的数据,并使用MATLAB系统识别工具箱进行处理。伺服机构系统驱动器的输入信号为考虑频率区间内剧烈激励的伪随机二值序列,输出信号为旋转编码器测得的相应级转速。候选模型分别使用线性最小二乘、非线性最小二乘和深度神经网络(DNN)获得。验证结果表明,与其他候选模型相比,基于深度神经网络识别的模型具有最小的均方误差。
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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