Photovoltaic system faults diagnosis using discrete wavelet transform based artificial neural networks

A. Bengharbi, S. Laribi, T. Allaoui, A. Mimouni
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引用次数: 1

Abstract

Introduction. This research work focuses on the design and experimental validation of fault detection techniques in grid-connected solar photovoltaic system operating under Maximum Power Point Tracking mode and subjected to various operating conditions. Purpose. Six fault scenarios are considered in this study including partial shading, open circuit in the photovoltaic array, complete failure of one of the six IGBTs of the inverter and some parametric faults that may appear in controller of the boost converter. Methods. The fault detection technique developed in this work is based on artificial neural networks and uses discrete wavelet transform to extract the features for the identification of the underlying faults. By applying discrete wavelet transform, the time domain inverter output current is decomposed into different frequency bands, and then the root mean square values at each frequency band are used to train the neural network. Results. The proposed fault diagnosis method has been extensively tested on the above faults scenarios and proved to be very effective and extremely accurate under large variations in the irradiance and temperature. Practical significance. The results obtained in the binary numerical system allow it to be used as a machine code and the simulation results has been validated by MATLAB / Simulink software.
基于离散小波变换的光伏系统故障诊断
介绍。本文主要研究了在最大功率点跟踪模式下并网太阳能光伏系统在各种工况下的故障检测技术的设计与实验验证。目的。本研究考虑了6种故障情况,包括部分遮阳、光伏阵列开路、逆变器6个igbt中的一个完全失效以及升压变换器控制器可能出现的一些参数故障。方法。本文所开发的故障检测技术是基于人工神经网络,利用离散小波变换提取特征来识别潜在故障。通过离散小波变换,将时域逆变器输出电流分解成不同频段,然后利用各频段的均方根值训练神经网络。结果。本文提出的故障诊断方法已在上述故障场景下进行了广泛的测试,证明在辐照度和温度变化较大的情况下,该方法是非常有效和非常准确的。现实意义。所得到的结果可以作为机器码使用,并通过MATLAB / Simulink软件对仿真结果进行了验证。
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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