A combined artificial neural network and DSP approach to the implementation of space vector modulation techniques

A. Bakhshai, J. Espinoza, G. Joós, H. Jin
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引用次数: 72

Abstract

Space vector modulation (SVM) in three-phase voltage source and current source converters has become the preferred PWM method for digital implementations. This paper presents an alternative SVM implementation that is based on a neural network structure. The technique reduces hardware and software complexity, and computation time, and increases the accuracy of the positioning of the switching instants. The technique exhibits the following features: (a) possibility of higher switching frequencies, (b) higher bandwidth of the control loops, (c) reduced hardware and software, and (d) reduction of parasitic harmonics in all PWM waveforms. The proposed method is compared to conventional implementations of SVM techniques in terms of hardware/software requirements, switching frequencies, harmonic spectra, and computation times. The method is applied to a 2 kVA unit and experimental results confirm theoretical and simulation results.
一种结合人工神经网络和DSP的方法来实现空间矢量调制技术
空间矢量调制(SVM)在三相电压源和电流源变换器中已经成为PWM数字化实现的首选方法。本文提出了一种基于神经网络结构的支持向量机实现方案。该技术降低了硬件和软件的复杂度,缩短了计算时间,提高了开关瞬间定位的精度。该技术具有以下特点:(a)更高开关频率的可能性,(b)更高控制回路的带宽,(c)减少硬件和软件,以及(d)减少所有PWM波形中的寄生谐波。该方法在硬件/软件要求、开关频率、谐波频谱和计算时间等方面与传统的支持向量机技术进行了比较。将该方法应用于一台2kva机组,实验结果证实了理论和仿真结果。
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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