基于人工神经网络的永磁同步电机供电不平衡和缺相检测与识别

S. Refaat, H. Abu-Rub, M. S. Saad, E. Aboul-Zahab, A. Iqbal
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引用次数: 3

摘要

永磁同步电机(PMSM)是近年来工业应用中最具吸引力的电机之一,因此必须对其进行电气和机械故障保护,以确保其继续安全运行。然而,在电动机的运行过程中,各种故障是不可避免的。供电电压不平衡是电网供电中常见的问题。但是,供应不平衡和缺相也会产生类似的症状。因此,本文重点研究了基于单相或缺相故障的不平衡供电状态诊断和不平衡供电判别。该方法采用人工神经网络技术,利用定子电流和电源电压的三次谐波与基次的比值。该方法利用人工神经网络对缺相故障和电源电压不平衡故障进行了高精度的检测和诊断。本文的所有仿真均采用有限元分析软件进行。实验验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and discrimination between unbalanced supply and phase loss in PMSM using ANN-based protection scheme
Recently, Permanent Magnet Synchronous Motors (PMSM) is one of the most attractive electric machine in industrial applications, therefor must be protected against electrical and mechanical failures for continue their operation safely. However, different kinds of faults are unavoidable in motors during their operational service. Unbalancing in the supply voltage is common in grid supply. However, the unbalance supply and phase loss produces similar symptoms. Therefore, this paper focuses on unbalanced supply condition diagnosis and discrimination between unbalancing in supply and single phasing or phase loss fault based. The proposed technique utilizes the ratio of third harmonic to fundamental of stator line currents and supply voltages using artificial neural network (ANN). The presented approach gives high degree of accuracy in detection and diagnosis of phase loss fault and those due to supply voltages unbalance using artificial neural network. All simulations in this paper are conducted using finite element analysis software. The approach is proven effectively through experimental validation.
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