Anomaly detection using K-Means and long-short term memory for predictive maintenance of large-scale solar (LSS) photovoltaic plant

Detecting and monitoring faults in solar photovoltaic (PV) systems is crucial to ensure optimal efficiency and prevent safety and fire hazards. However, the conventional operation and maintenance (O&M) of solar PV systems do not utilize machine learning for fault detection and classification. Th...

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发表在:Energy Reports
主要作者: 2-s2.0-85173448238
格式: 文件
语言:English
出版: Elsevier Ltd 2023
在线阅读:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85173448238&doi=10.1016%2fj.egyr.2023.09.159&partnerID=40&md5=a0500fdfd9ea2b1f3fcc66538565b973
id Zulfauzi I.A.; Dahlan N.Y.; Sintuya H.; Setthapun W.
spelling Zulfauzi I.A.; Dahlan N.Y.; Sintuya H.; Setthapun W.
2-s2.0-85173448238
Anomaly detection using K-Means and long-short term memory for predictive maintenance of large-scale solar (LSS) photovoltaic plant
2023
Energy Reports
9

10.1016/j.egyr.2023.09.159
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85173448238&doi=10.1016%2fj.egyr.2023.09.159&partnerID=40&md5=a0500fdfd9ea2b1f3fcc66538565b973
Detecting and monitoring faults in solar photovoltaic (PV) systems is crucial to ensure optimal efficiency and prevent safety and fire hazards. However, the conventional operation and maintenance (O&M) of solar PV systems do not utilize machine learning for fault detection and classification. This poses challenges for plant operators, especially those managing large-scale solar (LSS) PV plants, who typically rely on manual approaches to screen large amounts of electrical data and inspect numerous string panels. Consequently, the cost of O&M is high. This study aims to use advanced machine-learning techniques to detect anomalies in a Large-Scale Photovoltaic (LSSPV) plant. The study collects data from the plant which located in the central of Peninsular Malaysia and employs K-Means for clustering and Long-Short Term Memory (LSTM) for anomaly detection in the predicted electrical current of string modules. The model is developed using Jupyter Notebook from the Python Package Index. To validate the accuracy of the proposed model, the study compares LSTM with Artificial Neural Network (ANN) using relative error as the evaluation metric. The results indicate that the LSTM method identifies anomalies in the predicted output current of the string modules more accurately and with lower relative error than the conventional ANN technique. The proposed model could help plant operators perform predictive maintenance of LSSPV plants at a minimal cost and time. © 2023 The Authors
Elsevier Ltd
23524847
English
Article
All Open Access; Gold Open Access
author 2-s2.0-85173448238
spellingShingle 2-s2.0-85173448238
Anomaly detection using K-Means and long-short term memory for predictive maintenance of large-scale solar (LSS) photovoltaic plant
author_facet 2-s2.0-85173448238
author_sort 2-s2.0-85173448238
title Anomaly detection using K-Means and long-short term memory for predictive maintenance of large-scale solar (LSS) photovoltaic plant
title_short Anomaly detection using K-Means and long-short term memory for predictive maintenance of large-scale solar (LSS) photovoltaic plant
title_full Anomaly detection using K-Means and long-short term memory for predictive maintenance of large-scale solar (LSS) photovoltaic plant
title_fullStr Anomaly detection using K-Means and long-short term memory for predictive maintenance of large-scale solar (LSS) photovoltaic plant
title_full_unstemmed Anomaly detection using K-Means and long-short term memory for predictive maintenance of large-scale solar (LSS) photovoltaic plant
title_sort Anomaly detection using K-Means and long-short term memory for predictive maintenance of large-scale solar (LSS) photovoltaic plant
publishDate 2023
container_title Energy Reports
container_volume 9
container_issue
doi_str_mv 10.1016/j.egyr.2023.09.159
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85173448238&doi=10.1016%2fj.egyr.2023.09.159&partnerID=40&md5=a0500fdfd9ea2b1f3fcc66538565b973
description Detecting and monitoring faults in solar photovoltaic (PV) systems is crucial to ensure optimal efficiency and prevent safety and fire hazards. However, the conventional operation and maintenance (O&M) of solar PV systems do not utilize machine learning for fault detection and classification. This poses challenges for plant operators, especially those managing large-scale solar (LSS) PV plants, who typically rely on manual approaches to screen large amounts of electrical data and inspect numerous string panels. Consequently, the cost of O&M is high. This study aims to use advanced machine-learning techniques to detect anomalies in a Large-Scale Photovoltaic (LSSPV) plant. The study collects data from the plant which located in the central of Peninsular Malaysia and employs K-Means for clustering and Long-Short Term Memory (LSTM) for anomaly detection in the predicted electrical current of string modules. The model is developed using Jupyter Notebook from the Python Package Index. To validate the accuracy of the proposed model, the study compares LSTM with Artificial Neural Network (ANN) using relative error as the evaluation metric. The results indicate that the LSTM method identifies anomalies in the predicted output current of the string modules more accurately and with lower relative error than the conventional ANN technique. The proposed model could help plant operators perform predictive maintenance of LSSPV plants at a minimal cost and time. © 2023 The Authors
publisher Elsevier Ltd
issn 23524847
language English
format Article
accesstype All Open Access; Gold Open Access
record_format scopus
collection Scopus
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