Please use this identifier to cite or link to this item:
https://hdl.handle.net/20.500.14279/23900
Title: | Assessment of machine learning and ensemble methods for fault diagnosis of photovoltaic systems | Authors: | Mellit, Adel Kalogirou, Soteris A. |
Major Field of Science: | Engineering and Technology | Field Category: | Environmental Engineering | Keywords: | Ensemble learning;Fault classification;Fault detection;Machine learning;Photovoltaic system | Issue Date: | Jan-2022 | Source: | Renewable Energy, 2022, vol. 184, pp. 1074 - 1090 | Volume: | 184 | Start page: | 1074 | End page: | 1090 | Journal: | Renewable Energy | Abstract: | The photovoltaic (PV) array is the most sensible element in PV plants, which is subject to different type of faults and defects. Thus, to keep these plants working efficiently they should be monitored and protected carefully. Some faults if they are not detected and isolated promptly they may lead to hazardous risks. The diagnosis of PV systems is widely addressed and recently machine learning (ML) and deep leaning (DL) methods drawn the attention of many researchers. Most applications of ML methods are based on the use of the I–V curves measurement, as enough information and features can be extracted from the curves, to detect and classify faults. These methods showed their capability to classify some faults, like line to line, degradation, disconnected PV modules, partial shading effect, and bypass diode faults. Another approach is based on the use of thermal or electroluminescence images of PV modules/arrays to detect and identify defects, such as hot spot, snails crack, and others. In this paper, different ML and ensemble learning (EL) methods are evaluated for fault diagnosis of PV arrays. The focus is mainly on the detection and classification of some complex faults that may affect the PV arrays, i.e., multiple faults, and faults with similar I–V curves, that are not evaluated before. The results showed the ability of the methods developed to detect faults with very good accuracy (classification rate = number of classified instances/total instances), within 99%, while the classification faults is done with an acceptable accuracy, within 81.73%. Through this study it is shown when really ML and EL methods should be used, and some recommendations, challenges and future directions in this topic are presented. | URI: | https://hdl.handle.net/20.500.14279/23900 | ISSN: | 09601481 | DOI: | 10.1016/j.renene.2021.11.125 | Rights: | © Elsevier | Type: | Article | Affiliation : | University of Jijel AS-International Centre of Theoretical Physics Cyprus University of Technology Cyprus Academy of Science, Letters, and Arts |
Publication Type: | Peer Reviewed |
Appears in Collections: | Άρθρα/Articles |
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