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A Regression Model to Correct for Intra-Hourly Irradiance Variability Bias in Solar Energy Models

机译:回归模型,以校正太阳能模型中小时辐照度变异偏差

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Industry-standard solar resource assessment methods assume hourly-resolution modeling, which typically overestimates generation due to irradiance variability within an hour. Depending on PV site location and configuration, the high bias introduced by hourly modeling methods is generally greater than 1.5% and can exceed 4% on the annual AC energy when compared to real-world operations. It is critical that bias corrections be applied to hourly solar energy simulations prior to making binding investment and financing decisions. This study presents a random forest regression model that accurately resolves the modeling bias attributed to intra-hour irradiance variability. The model considers site-specific meteorology and layout design parameters to resolve typical seasonal and diurnal variability patterns. It has been validated using minute-resolution observations from operational solar farms and pre-construction meteorological measurements, with model bias error shown to be −0.1% on annual energy.
机译:行业标准的太阳能资源评估方法假设每小时分辨率建模,通常在一小时内辐照度变异性导致的产生高估。根据光伏点的位置和配置,由每小时建模方法引入的高偏差通常大于1.5%,与现实世界运营相比,年度交流能量可能超过4%。重要的是,在制定投资和融资决策之前将偏差校正应用于每小时太阳能模拟。本研究提出了一种随机森林回归模型,可准确地解决归因于小时内辐照度变异性的偏差。该模型考虑了特定于现场的气象和布局设计参数,以解决典型的季节性和昼夜变异模式。使用来自运营太阳能电池和预施工前的气象测量的微小分辨率观测验证,模型偏差误差显示为-0.1%的年能。

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