Anomaly Detection of Photovoltaic Systems Installed in Renewable Energy Housing Support Project Sites by Analyzing Power Generation Data

Dawon Kim, Sung-Min Kim, J. Suh, Yosoon Choi
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引用次数: 1

Abstract

In this study, we proposed a new method of detecting abnormalities by analyzing power generation data of photovoltaic (PV) systems installed in renewable energy housing support project sites. The study site is north of Gakbuk-myeon, Cheongdo-gun, Gyeongsangbuk-do, Korea, where 63 PV systems have been installed and operated. Based on the system design and surrounding environment, the 63 PV systems were clustered into 6 groups using the K-means clustering method, which is an unsupervised machine learning algorithm. The power production data from the PV systems in each group were analyzed and set as abnormal values if they deviated from the range of ±2.58 times the standard deviation from the mean (assuming a normal distribution and 99% confidence interval). As a result, several abnormalities were detected in the PV systems in November 2020. The cause of the abnormalities was confirmed through site investigation. The proposed method is expected to accelerate the diagnosis of PV systems in renewable energy housing support project sites.
基于发电数据分析的可再生能源住房配套项目现场光伏系统异常检测
在这项研究中,我们提出了一种通过分析安装在可再生能源住房支持项目现场的光伏系统的发电数据来检测异常的新方法。研究地点位于庆尚北道清道郡乐北面以北,目前已经安装并运行了63套光伏系统。基于系统设计和周围环境,采用K-means聚类方法(一种无监督机器学习算法)将63个光伏系统聚类为6组。对各组光伏发电数据进行分析,若偏离平均值±2.58倍标准差(假设正态分布,置信区间为99%),则设为异常值。因此,在2020年11月,光伏系统中检测到一些异常。通过现场调查,确认了异常的原因。该方法有望加快可再生能源住房支持项目现场光伏系统的诊断。
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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