Condition monitoring for DC-link capacitors based on artificial neural network algorithm

H. Soliman, Huai Wang, B. Gadalla, F. Blaabjerg
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引用次数: 51

Abstract

In power electronic systems, capacitor is one of the reliability critical components. Recently, the condition monitoring of capacitors to estimate their health status have been attracted by the academic research. Industry applications require more reliable power electronics products with preventive maintenances. However, the existing capacitor condition monitoring methods suffer from either increased hardware cost or low estimation accuracy, being the challenges to be adopted in industry applications. New development in condition monitoring technology with software solutions without extra hardware will reduce the cost, and therefore could be more promising for industry applications. A condition monitoring method based on Artificial Neural Network (ANN) algorithm is therefore proposed in this paper. The implementation of the ANN to the DC-link capacitor condition monitoring in a back-to-back converter is presented. The error analysis of the capacitance estimation is also given. The presented method enables a pure software based approach with high parameter estimation accuracy.
基于人工神经网络算法的直流电容状态监测
在电力电子系统中,电容器是可靠性的关键部件之一。近年来,对电容器进行状态监测以评估电容器的健康状况已成为学术界研究的热点。工业应用需要更可靠的电力电子产品和预防性维护。然而,现有的电容状态监测方法存在硬件成本高或估计精度低的问题,这是在工业应用中面临的挑战。新开发的状态监测技术采用软件解决方案,无需额外的硬件,这将降低成本,因此在工业应用中更有前景。为此,提出了一种基于人工神经网络(ANN)算法的状态监测方法。介绍了神经网络在背靠背变换器直流电容状态监测中的应用。给出了电容估计的误差分析。该方法是一种纯软件方法,具有较高的参数估计精度。
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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