基于归一化功率分析的太阳能电站遥测数据异常搜索方法及软件

IF 3.4 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Informatics Pub Date : 2023-06-29 DOI:10.37661/1816-0301-2023-20-2-96-110
S. V. Vаlevich, K. S. Dzick, I. I. Pilecki, I. Kruse, R. Asimov, V. Asipovich
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引用次数: 0

摘要

目标。随着太阳能发电厂数量的增加,自动化监测其性能成为一项紧迫的任务。寻找太阳能发电厂运行中的异常情况是监测的主要组成部分之一。该研究的目的是基于根据太阳能发电厂的遥测数据创建和训练的数字双胞胎的结果,开发新的方法和软件算法,以发现太阳能电池板运行中的异常。方法。所开发的技术是基于对数字孪生计算的太阳能电池板最大有效运行点的功率值偏差的统计研究。此外,为了更准确的聚类和异常搜索,引入了太阳能电池板最大有效运行时的功率归一化值。后果利用开发的静态搜索方法,经过半年的观测,在发电厂太阳能电池板的运行中检测到18个异常。分析了所有案例中太阳能电池板运行异常的原因。结论已经确定,当在最大功率PN点的偏差分析中使用归一化功率值时,可以检测单个面板的异常操作。计算了最大功率点处归一化值的偏差水平,表明太阳能电池板运行中存在异常。
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Methods and software for anomalies searching in the telemetry data of a solar power plant based on the normalized power analysis
Objectives. In connection with the increase in the number of solar power plants, the automation of monitoring their performance becomes an urgent task. The search for anomalies in the operation of solar power plants is one of the main components of monitoring. The purpose of the study is to develop new methods and software algorithms for finding anomalies in the operation of solar panels based on the results of a digital twin created and trained according to the telemetry data of a solar power plant.Methods. The developed technique is based on statistical studies of deviations of power values at the point of maximum efficient operation of the solar panel calculated by the digital twin. In addition, a normalized value of the power in the maximum efficient operation of the solar panel was introduced for more accurate clustering and anomaly search.Results. Using the developed method of static search for half a year of observations, 18 anomalies were detected in the operation of the solar panels of the power plant. All cases are analyzed for the causes of anomalies in the operation of solar panels.Conclusion. It has been established that when using normalized power values in the analysis of deviations at the point of maximum power PN, it is possible to detect abnormal operation of individual panels. The level of deviation of the normalized values at the point of maximum power was calculated, indicating the presence of an anomaly in the operation of solar panel.
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来源期刊
Informatics
Informatics Social Sciences-Communication
CiteScore
6.60
自引率
6.50%
发文量
88
审稿时长
6 weeks
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