Variability and Trend Analysis of a Grid-Scale Solar Photovoltaic Array above the Arctic Circle

Henry Toal, A. K. Das
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Abstract

As solar photovoltaic (PV) power generation continues to grow in popularity, the variability in solar irradiance caused by weather effects such as clouds poses an increasing challenge to maintaining grid stability. Characterizing the variability and trends present in historical PV production data is vital to the development of effective models for predicting rapid changes. This is particularly important at higher latitudes where seasonal changes in PV generation are more extreme. In this paper, we analyse data from a small, grid-scale PV array in Kotzebue, Alaska (66.8969° N, 162.5931° W), located above Arctic Circle. We also successfully validate the variability index (VI), a previously proposed metric which quantifies the volatility of solar PV data over a given time span using a synthetic cloudless (clear-sky) dataset as a reference. We also include an examination of the stationarity of the PV production data at various timescales as well as the efficacy of using clear-sky models as a reference for de-trending solar irradiance data via, showing that better results can be obtained from data closer to solar noon. To the best of our knowledge, this is the first use of VI to assess PV production data from above the Arctic Circle.
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北极圈以上电网规模太阳能光伏阵列的变率和趋势分析
随着太阳能光伏(PV)发电的不断普及,由云层等天气影响引起的太阳辐照度的变化对维持电网的稳定性提出了越来越大的挑战。描述历史PV生产数据中的变异性和趋势对于开发预测快速变化的有效模型至关重要。这在高纬度地区尤其重要,因为那里光伏发电的季节性变化更为极端。在本文中,我们分析了位于阿拉斯加Kotzebue(66.8969°N, 162.5931°W)的小型电网规模光伏阵列的数据,该阵列位于北极圈以上。我们还成功验证了变异性指数(VI),这是一个先前提出的指标,它使用合成无云(晴空)数据集作为参考,量化了给定时间范围内太阳能光伏数据的波动性。我们还考察了PV生产数据在不同时间尺度上的平稳性,以及使用晴空模型作为参考太阳辐照度数据的有效性,结果表明,更接近太阳正午的数据可以获得更好的结果。据我们所知,这是第一次使用VI来评估北极圈以上的光伏生产数据。
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