基于机器学习的太阳数据大规模分类聚类方法

Ebuka B Osunwoke, S. Ullah, Ali Jafarian Abianeh, F. Ferdowsi, T. Chambers
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引用次数: 4

摘要

太阳能发电是近年来备受关注的可再生能源之一。发电公司和研究人员对太阳能设施随时间的日常天气波动的行为很感兴趣。研究人员经常试图将太阳时空数据聚类。一些提出的方法包含不必要的歧义,没有明确的理由证明其模型的适用性。本研究旨在利用路易斯安那大学拉斐特分校1.1兆瓦(MW)光伏应用研究和测试实验室(PART Lab)两年的太阳能数据,提供基于集群的太阳能光伏(PV)生产概况的准确表示。这些集群的可用性为测试和模拟现有太阳能发电厂在升级或并入发电设施和太阳能预测时的行为和反应提供了一个更容易的基础。在本研究中,使用机器学习方法生成聚类算法,采用三种不同的现有精度指标。建立了一种有效的动态时间弯曲k-Means模型,以合理的精度对PV数据进行聚类。该研究的新颖之处在于提供了一种有效的时间自适应多模型聚类方法。这些集群可以在设计和运行阶段减少太阳能微电网建模和仿真研究的计算费用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning-Enabled Clustering Approach for Large-scale Classification of Solar Data
Solar power generation is one of the renewable energy sources that has gained prominence in recent times. Power generation companies and researchers are interested in the behavior of solar facilities with respect to daily weather fluctuations over time. Researchers have often tried to cluster solar spatio-temporal data. Some of the proposed methods contain unnecessary ambiguity with no clear justifications of the applicability of their models. This study aims to provide an accurate cluster-based representation of solar Photovoltaic (PV) production profiles, using the solar data from the University of Louisiana at Lafayette's 1.1 Megawatt(MW) Photovoltaic Applied Research and Testing Lab (PART lab) over a two-year interval. The availability of these clusters provides an easier basis for testing and modelling the behavior and response of an existing solar plant in the event of an upgrade, or incorporation into a power generating facility and solar forecasting. In this study,a machine learning approach is used to generate a clustering algorithm, employing three different existing accuracy metrics. A efficient Dynamic Time-Warping (DTW) k-Means model was developed to cluster the PV data with reasonable accuracy. The novelty of this study provides an efficient temporal-adaptive multi-model approach of clustering solar PV data. These clusters can reduce the computational expense of solar-connected microgrid modelling and simulation studies at the design and operational stages.
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