Uncertain Fault Diagnosis of Grid-Connected PV Systems based Improved Data-Driven Paradigms

Khaled Dhibi, M. Mansouri, Kais Bouzrara, H. Nounou, M. Nounou
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引用次数: 0

Abstract

The main idea behind this work is to diagnose Grid-Connected Photovoltaic (PV) systems. The uncertainty was treated by using the interval-valued data representation. The main interventions are threefold: first, interval ensemble techniques based on the combination of several models (SVM, KNN, and tree) into one improved model are proposed in order to isolate the different PV systems operating modes using interval raw data. Then, feature extraction and selection steps are proposed to improve the fault diagnosis results. Therefore, the interval KPCA (IKPCA) method is performed in order to extract and select the important characteristics. The proposed techniques were used to diagnose the GCPV system under different operating modes. The results demonstrated the superiority of the proposed methods.
基于改进数据驱动范式的并网光伏系统不确定故障诊断
这项工作的主要思想是诊断并网光伏(PV)系统。采用区间值数据表示法处理不确定性。主要干预措施有三个方面:首先,提出了基于多个模型(SVM、KNN和tree)组合成一个改进模型的区间集成技术,以便利用区间原始数据分离不同的光伏系统运行模式。然后,提出了特征提取和选择步骤,以提高故障诊断结果。因此,为了提取和选择重要特征,采用区间KPCA (IKPCA)方法。将所提出的技术应用于GCPV系统在不同工作模式下的诊断。结果表明了所提方法的优越性。
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