4.5 Article

Multivariate feature extraction based supervised machine learning for fault detection and diagnosis in photovoltaic systems

期刊

EUROPEAN JOURNAL OF CONTROL
卷 59, 期 -, 页码 313-321

出版社

ELSEVIER
DOI: 10.1016/j.ejcon.2020.03.004

关键词

Supervised machine learning (SML); Principal component analysis (PCA); Photovoltaic (PV) systems; Feature extraction; Fault diagnosis; Fault classification

资金

  1. NPRP from the Qatar National Research Fund [NPRP9-330-2-140]

向作者/读者索取更多资源

This paper aims to develop an improved FDD technique for PV system faults, utilizing principal component analysis for feature extraction and selection, and supervised machine learning classifiers for fault diagnosis. Experimental results confirm the feasibility and effectiveness of the proposed approaches for fault detection and diagnosis.
Fault detection and diagnosis (FDD) in the photovoltaic (PV) array has become a challenge due to the magnitudes of the faults, the presence of maximum power point trackers, non-linear PV characteristics, and the dependence on isolation efficiency. Thus, the aim of this paper is to develop an improved FDD technique of PV systems faults. The common FDD technique generally has two main steps: feature extraction and selection, and fault classification. Multivariate feature extraction and selection is very important for multivariate statistical systems monitoring. It can reduce the dimension of modeling data and improve the monitoring accuracy. Therefore, in the proposed FDD approach, the principal component analysis (PCA) technique is used for extracting and selecting the most relevant multivariate features and the supervised machine learning (SML) classifiers are applied for faults diagnosis. The FDD performance is established via different metrics using data extracted from different operating conditions of the gridconnected photovoltaic (GCPV) system. The obtained results confirm the feasibility and effectiveness of the proposed approaches for fault detection and diagnosis. (c) 2020 European Control Association. Published by Elsevier Ltd. All rights reserved.

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