VFI感应电机驱动的常规与基于神经网络的SVPWM控制器性能比较

Sukanta Das, Rakesh Kumar
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引用次数: 2

摘要

本文分别提出了基于传统方法和基于人工神经网络的空间矢量脉宽调制(SVPWM)方案。在传统方法中,通过引入牛顿正演插值(NFI),克服了过调制模式i和过调制模式ii中交叉角和保持角分别作为调制因子的函数显式表示的困难。这大大简化了传统SVPWM技术的实现,而不影响精度问题。基于人工神经网络的方法进一步实现了SVPWM,该方法构建了三个子网,以区分逆变器运行的三个区域。与单个人工神经网络处理所有三个区域相比,这种明显的子网冗余显着减少了计算逆变器开关开启时间的错误。通过Matlab仿真,用电机相电流总谐波畸变定量表达了两种方案的性能。结果表明,基于人工神经网络的方法与传统方法具有相当的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparative performance assessment of conventional and ANN based SVPWM controller for VFI induction motor drive
In this paper, space vector pulse width modulation (SVPWM) scheme for voltage fed inverter (VFI) using conventional method and artificial neural network (ANN) based approach are presented separately. In the conventional method, the difficulty of explicitly expressing cross-over and holding-angle as a function of modulation factor in overmodulation mode-I and mode-II respectively are overcome by introducing Newton's Forward Interpolation (NFI). This greatly simplifies the implementation of conventional SVPWM technique without compromising the accuracy issue. The SVPWM is further implemented by ANN based approach built with three subnets to account for three regions of inverter operation distinctly. In comparison to a single ANN taking care of all the three regions, this apparent redundancy of subnets markedly reduces the error in calculating turn-on time for inverter switches. The performances of these two schemes are quantitatively expressed by total harmonic distortion in motor phase current by simulation in Matlab. The results show that ANN based approach shows a comparable performance with that of the conventional approach.
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