Assessing the Modelling Approach and Datasets Required for Fault Detection in Photovoltaic Systems

Max Bird, S. Acha, N. Brun, N. Shah
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Abstract

Reliable monitoring for photovoltaic assets (PVs) is essential to ensuring uptake, long term performance, and maximum return on investment of renewable systems. To this end this paper investigates the input data and machine learning techniques required for day-behind predictions of PV generation, within the scope of conducting informed maintenance of these systems. Five years of PV generation data at hourly intervals were retrieved from four commercial building-mounted PV installations in the UK, as well as weather data retrieved from MIDAS. A support vector machine, random forest and artificial neural network were trained to predict PV power generation. Random forest performed best, achieving an average mean relative error of 2.7%. Irradiance, previous generation and solar position were found to be the most important variables. Overall, this work shows how low-cost data driven analysis of PV systems can be used to support the effective management of such assets.
评估光伏系统故障检测所需的建模方法和数据集
对光伏资产(pv)的可靠监测对于确保可再生能源系统的吸收、长期性能和最大的投资回报至关重要。为此,本文研究了光伏发电日后预测所需的输入数据和机器学习技术,在对这些系统进行知情维护的范围内。从英国的四个商业建筑安装的光伏装置中检索了五年每小时的光伏发电数据,以及从MIDAS检索的天气数据。利用支持向量机、随机森林和人工神经网络对光伏发电进行预测。随机森林表现最好,平均相对误差为2.7%。辐照度、前代和太阳位置是最重要的变量。总的来说,这项工作显示了如何使用低成本的数据驱动的光伏系统分析来支持有效的资产管理。
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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