Improved Direct Torque Control Based on Neural Network of the Double-Star Induction Machine Using Deferent Multilevel Inverter

M. Lazreg, A. Bentaallah
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Abstract

In this chapter, we will compare the performance of a multilevel direct torque control (DTC) control for the double-star induction machine (DSIM) based on artificial neural network (ANN). The application of DTC control brings a very interesting solution to the problems of robustness and dynamics. However, this control has some disadvantages such as variable switching frequency, size, and complexity of the switching tables and the strong ripple torque. A solution to this problem is to increase the output voltage level of the inverter and associate the DTC control with modern control techniques such as artificial neural networks. Theoretical elements and simulation results are presented and discussed. As results, the flux and torque ripple of the five-level DTC-ANN control significantly reduces compared to the flux and torque ripple of the three-level DTC-ANN control. By viewing the simulation results using MATLAB/Simulink for both controls, the results obtained showed a very satisfactory behavior of this machine.
基于神经网络的双星感应电机不同电平逆变器直接转矩改进控制
在本章中,我们将比较基于人工神经网络(ANN)的双星感应电机(DSIM)多级直接转矩控制(DTC)控制的性能。直接转矩控制的应用为鲁棒性和动态性问题提供了一个非常有趣的解决方案。但是,这种控制方法存在开关频率、开关表大小、开关表复杂、纹波转矩大等缺点。解决这一问题的方法是提高逆变器的输出电压水平,并将直接转矩控制与人工神经网络等现代控制技术相结合。给出了理论基础和仿真结果,并进行了讨论。结果表明,与三阶DTC-ANN控制相比,五阶DTC-ANN控制的磁链和转矩脉动明显减小。通过MATLAB/Simulink对两种控制方式的仿真结果进行对比,得到的结果显示了该机床非常满意的工作性能。
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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