基于隔离林的太阳能光伏系统异常检测与故障定位

S. Kabir, A. Shufian, Md. Saniat Rahman Zishan
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引用次数: 6

摘要

化石燃料储量的减少促使全球向分布式能源发展。因此,太阳能光伏发电作为一种可行的可再生能源,近年来备受关注。然而,如果单个太阳能光伏板存在异常,大规模发电将面临挑战。这将降低光伏系统的效率,并造成潜在的火灾危险。从这个角度来看,异常检测技术可以准确有效地揭示系统异常。识别出的异常将为改进的一代定位事件。本文讨论了使用隔离森林技术识别光伏系统异常和基于规则的故障定位技术识别缺陷面板事件的性能分析。在开发的模型中,隔离森林技术在45,740次观测中发现了大约453个异常,大约6个面板表明系统中存在故障。发现准确率得分约为0.9886。所提出的故障检测方法将有助于太阳能发电系统的故障检测。
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Isolation Forest Based Anomaly Detection and Fault Localization for Solar PV System
The decrease in fossil fuel reserves has prompted a global move toward distributed energy resources. For this reason, solar PV power generation has recently gained much attention as a feasible renewable energy source. However, large-scale generation is challenging if there are anomalies in individual solar PV panels. This will reduce the efficiency of the PV system and create a potential fire hazard. In this perspective, the anomaly detection technique discloses system anomalies accurately and effectively. Identified anomalies will localize the event for an improved generation. This paper addresses the performance analysis of using the isolation forest technique to identify anomalies in the PV system and the rule-based fault localization technique to identify defective panel events. In the developed model, the isolation forest technique found around 453 anomalies in 45,740 observations, and approximately six panels indicated a fault in the system. The accuracy score is found to be approximately 0.9886. The proposed fault detection method will help detect the faults in solar power systems.
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