Diagnosis for IGBT Open-circuit Faults in Photovoltaic Inverters: A Compressed Sensing and CNN based Method

Xinyi Wang, Bo Yang, Qi Liu, Jingzheng Tu, Cailian Chen
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引用次数: 1

Abstract

The inverter is the most vulnerable module of photovoltaic (PV) systems. The insulated gate bipolar transistor (IGBT) is the core part of inverters and the root source of PV inverter failures. How to effectively diagnose the IGBT faults is critical for reliability, high efficiency, and safety of PV systems. Recently, deep learning (DL) methods are widely used for fault detection and diagnosis. Different from traditional diagnosis methods, DL methods use deep neural networks which can automatically extract the useful representative features from raw data. However, DL methods require large amounts of data, which leads to the high cost of communication, storage, and computation. To tackle these issues, a data-driven fault detection and diagnosis method for IGBT open-circuit faults based on compressed sensing (CS) and convolutional neural networks (CNN) is proposed in this paper. CS is adopted to compress raw signals, and the optimal value of compression ratio (CR) is determined by considering the trade-off between classification accuracy and model training time. The overlap sampling method is adopted for data segmentation. Meanwhile, overlap sampling can also increase the number of training samples and improve the sample correlation. The compressed signals are segmented and reconstructed into two-dimensional feature maps for model training. Finally, compared with CNN of the same structure, the developed CS-CNN model can compress 85% of data without accuracy loss. The performance comparison with the state-of-the-art networks demonstrates that the test accuracy is 98.68% and the model training time is much shorter than other methods.
光伏逆变器IGBT开路故障诊断:基于压缩感知和CNN的方法
逆变器是光伏系统中最脆弱的模块。绝缘栅双极晶体管(IGBT)是逆变器的核心部件,也是光伏逆变器故障的根源。如何有效诊断IGBT故障对光伏系统的可靠性、高效性和安全性至关重要。近年来,深度学习方法被广泛应用于故障检测和诊断。与传统的诊断方法不同,深度学习方法使用深度神经网络,可以自动从原始数据中提取有用的代表性特征。然而,深度学习方法需要大量的数据,这导致了通信、存储和计算的高成本。针对这些问题,本文提出了一种基于压缩感知(CS)和卷积神经网络(CNN)的数据驱动IGBT开路故障检测与诊断方法。采用CS对原始信号进行压缩,通过考虑分类精度和模型训练时间之间的权衡,确定压缩比(CR)的最优值。数据分割采用重叠采样方法。同时,重叠采样还可以增加训练样本的数量,提高样本的相关性。压缩后的信号被分割重构成二维特征图用于模型训练。最后,与相同结构的CNN相比,所开发的CS-CNN模型可以在不损失精度的情况下压缩85%的数据。与目前最先进的网络性能对比表明,该方法的测试准确率达到98.68%,模型训练时间大大缩短。
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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