A Greedy Layer-Wise Learning Algorithm for Open-Circuit Fault Diagnosis of Grid-Connected Inverters

E. Bhuiyan, S. Muyeen, S. Fahim, S. Sarker, Sajal Kumar Das
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引用次数: 1

Abstract

This paper introduces a greedy layer-wise learning algorithm to diagnose open-circuit faults of grid-connected inverters. Inverters play important roles in energy conversion, especially when converting direct current to alternating current. The accurate functioning of inverters is essential for successful energy conversion. The diagnosis of inverter faults is the primary requirement to guarantee the reliability of the entire energy conversion operation. In this work, a multilayer learning algorithm based on a restricted Boltzmann machine (RBM) is presented for fault diagnosis of an inverter topology. It uses both supervised and unsupervised layer-wise learning and hierarchically extracts the features from a given data. A three-phase two-level grid-connected PV inverter test model has been operated for twenty-two conditions to assess the effectiveness of the proposed algorithm. The investigation results in diagnostic accuracy of 99.786% for twenty-two operating conditions of the inverter.
并网逆变器开路故障诊断的贪婪分层学习算法
介绍了一种贪婪分层学习算法用于并网逆变器开路故障诊断。逆变器在能量转换中起着重要的作用,特别是在将直流电转换为交流电时。逆变器的准确工作对成功的能量转换至关重要。逆变器故障诊断是保证整个能量转换运行可靠性的首要要求。本文提出了一种基于受限玻尔兹曼机(RBM)的多层学习算法用于逆变器拓扑故障诊断。它使用有监督和无监督分层学习,并从给定数据中分层提取特征。通过一个三相两电平光伏并网逆变器试验模型,运行了22种工况,对所提算法的有效性进行了评估。研究结果表明,对变频器22种工况的诊断准确率达99.786%。
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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