Model-driven Per-panel Solar Anomaly Detection for Residential Arrays

Menghong Feng, Noman Bashir, P. Shenoy, David E. Irwin, B. Kosanovic
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引用次数: 1

Abstract

There has been significant growth in both utility-scale and residential-scale solar installations in recent years, driven by rapid technology improvements and falling prices. Unlike utility-scale solar farms that are professionally managed and maintained, smaller residential-scale installations often lack sensing and instrumentation for performance monitoring and fault detection. As a result, faults may go undetected for long periods of time, resulting in generation and revenue losses for the homeowner. In this article, we present SunDown, a sensorless approach designed to detect per-panel faults in residential solar arrays. SunDown does not require any new sensors for its fault detection and instead uses a model-driven approach that leverages correlations between the power produced by adjacent panels to detect deviations from expected behavior. SunDown can handle concurrent faults in multiple panels and perform anomaly classification to determine probable causes. Using two years of solar generation data from a real home and a manually generated dataset of multiple solar faults, we show that SunDown has a Mean Absolute Percentage Error of 2.98% when predicting per-panel output. Our results show that SunDown is able to detect and classify faults, including from snow cover, leaves and debris, and electrical failures with 99.13% accuracy, and can detect multiple concurrent faults with 97.2% accuracy.
住宅阵列模型驱动的面板太阳异常检测
近年来,在技术快速进步和价格下降的推动下,公用事业规模和住宅规模的太阳能装置都有了显著增长。与专业管理和维护的公用事业规模的太阳能发电场不同,较小的住宅规模的装置通常缺乏用于性能监测和故障检测的传感和仪器。因此,故障可能在很长一段时间内未被发现,从而导致房主的发电和收入损失。在这篇文章中,我们介绍了SunDown,一种无传感器的方法,用于检测住宅太阳能电池阵列的每块板故障。SunDown不需要任何新的传感器来进行故障检测,而是使用模型驱动的方法,利用相邻面板产生的功率之间的相关性来检测与预期行为的偏差。SunDown可以处理多个面板的并发故障,并进行异常分类,确定可能的原因。使用来自真实家庭的两年太阳能发电数据和手动生成的多个太阳能故障数据集,我们表明,在预测每面板输出时,SunDown的平均绝对百分比误差为2.98%。结果表明,SunDown能够以99.13%的准确率检测和分类积雪、树叶和碎片以及电气故障,并以97.2%的准确率检测多个并发故障。
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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