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Innovative Approach for Yield Evaluation of PV Systems Utilizing Machine Learning Methods

机译:利用机器学习方法的光伏系统产量评估的创新方法

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PV plant owners and O&M providers heavily rely on the flawless and reliable operation of their PV systems. Unscheduled maintenance interventions due to incorrect defect or error messages as well as unpredicted shading due to plants or soiling lead to high yield losses and unnecessary additional operation costs, which adversely affect the profitability of the PV system. This paper presents innovative methods from machine learning to analyze monitoring data. Various approaches such as artificial neural networks and clustering of multi-dimensional data will be introduced exemplarily and it will be shown how they can be used for detection and identification of defects and degradation effects. Assumptions, databases, working methods and results will be presented in this work to show the effective utilization of machine learning methods in big-data evaluation of PV systems.
机译:光伏电站所有者和O&M供应商严重依赖其光伏系统的完美无缺和可靠运行。由于不正确的缺陷或错误消息而导致的计划外维护干预,以及因植物或污物导致的不可预测的阴影会导致高产量损失和不必要的额外运营成本,从而对光伏系统的盈利能力产生不利影响。本文提出了从机器学习到分析监控数据的创新方法。将示例性地介绍各种方法,例如人工神经网络和多维数据的聚类,并且将显示如何将其用于检测和识别缺陷和降级效果。这项工作将介绍各种假设,数据库,工作方法和结果,以展示机器学习方法在光伏系统大数据评估中的有效利用。

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