Grid Connected PV Systems Fault Detection using K-Means Clustering Algorithm

Khalil Benmouiza
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Abstract

—Efficiency in photovoltaic (PV) energy production is significantly influenced by various electrical, environmental, and manufacturing-related factors. These variables often lead to a range of PV generator faults, compromising the system's performance and the overall grid's safety. The current fault detection methods can be complex and resource-intensive. In this paper, we propose a novel and efficient grid-connected PV system fault detection mechanism using the k-means clustering algorithm. Our approach categorizes the possible faults based on clustering the output PV and grid powers under healthy and faulty conditions. A comparison between centroid locations of both conditions leads to fault categorization. The findings demonstrate the efficacy of the proposed technique for addressing localized faults in grid-tied PV systems without the need for complicated calculations. The technique is both cost-effective and accurate, with a straightforward application that can be easily adopted by all stakeholders. This method enables users to safeguard their PV system's health and ensure the more comprehensive grid's safety.
基于k -均值聚类算法的并网光伏系统故障检测
-光伏(PV)能源生产的效率受到各种电气、环境和制造相关因素的显著影响。这些变量通常会导致一系列光伏发电机故障,从而影响系统的性能和整个电网的安全。现有的故障检测方法复杂且耗费大量资源。本文提出了一种基于k均值聚类算法的新型高效并网光伏系统故障检测机制。该方法基于对健康状态和故障状态下输出光伏和电网功率的聚类,对可能的故障进行分类。通过比较两种情况的质心位置来进行故障分类。研究结果证明了所提出的技术在不需要复杂计算的情况下解决并网光伏系统局部故障的有效性。该技术既具有成本效益又准确,具有可被所有利益相关者轻松采用的直接应用程序。这种方法可以使用户维护光伏系统的健康,并确保更全面的电网安全。
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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