Applications of Machine Learning Algorithms for Photovoltaic Fault Detection: a Review

Abdelilah Et-taleby, Y. Chaibi, Mohamed Benslimane, M. Boussetta
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引用次数: 2

Abstract

Over the years, the boom of technology has caused the accumulation of a large amount of data, famously known as big data, in every field of life. Traditional methods have failed to analyse such a huge pile of data due to outdated techniques. In recent times, the use of photovoltaic systems has risen worldwide. The arena Photovoltaic (PV) system has witnessed the same unprecedented expansion of data owing to the associated monitoring systems. However, the faults created within the PV system cannot be detected, classified, or predicted by using conventional techniques. This necessitates the use of modern techniques such as Machine Learning. Its powerful algorithms, such as artificial neural networks (ANN), help in the accurate detection and classification of faults in the PV system. This review paper introduces and evaluates the applications of Machine Learning (ML) algorithms in PV fault detection. It provides a brief overview of Machine Learning and its concepts along with various widely used ML algorithms. This review various peer-reviewed studies to investigate various models of ML algorithms in the PV system with the main focus on its fault detection accuracy and efficiency.
机器学习算法在光伏故障检测中的应用综述
多年来,科技的蓬勃发展,在生活的各个领域积累了大量的数据,即众所周知的大数据。由于技术落后,传统方法无法分析如此庞大的数据。近年来,光伏系统的使用在全球范围内有所增加。由于相关的监测系统,竞技场光伏(PV)系统也见证了同样前所未有的数据扩展。然而,传统技术无法检测、分类或预测光伏系统内产生的故障。这就需要使用机器学习等现代技术。其强大的算法,如人工神经网络(ANN),有助于准确检测和分类光伏系统中的故障。本文介绍并评价了机器学习算法在光伏故障检测中的应用。它提供了机器学习及其概念以及各种广泛使用的机器学习算法的简要概述。本文回顾了各种同行评议的研究,以研究PV系统中的各种ML算法模型,主要关注其故障检测的准确性和效率。
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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