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Physics-Guided Machine Learning for Prediction of Cloud Properties in Satellite-Derived Solar Data

机译:物理引导机器学习,用于预测卫星衍生太阳能数据中的云属性

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With over 20 years of high-resolution surface irradiance data covering most of the western hemisphere, the National Solar Radiation Database (NSRDB) is a vital public data asset. The NSRDB uses a two-step Physical Solar Model (PSM) that explicitly considers the effects of clouds and other atmospheric variables on radiative transfer. High-quality physical and optical cloud properties derived from satellite imagery are perhaps the most important data inputs to the PSM, representing the greatest source of radiation attenuation and scattering. However, traditional methods for cloud property retrieval have their own limitations and are unable to accurately predict cloud properties outside of nominal conditions. We introduce a physics-guided neural network that can accurately predict cloud properties when traditional methods fail or are inaccurate. Using this framework, we show reductions in relative Root Mean Square Error (RMSE) for Global Horizontal Irradiance (GHI) up to 13 percentage points for timesteps that previously had missing or low-quality cloud property data. We expect that this methodology will be effective in improving the quality of cloud property and solar irradiance data in the NSRDB.
机译:拥有超过20年的高分辨率表面辐照度数据,覆盖大部分西半球,国家太阳辐射数据库(NSRDB)是一个重要的公共数据资产。 NSRDB使用两步物理太阳能模型(PSM),明确地考虑云和其他大气变量对辐射转移的影响。源自卫星图像的高质量物理和光云属性可能是PSM最重要的数据输入,代表辐射衰减和散射的最大来源。但是,传统的云属性检索方法具有自身的限制,无法准确地预测名义条件之外的云属性。我们介绍了一种物理引导的神经网络,可以在传统方法失败或不准确时准确地预测云属性。使用此框架,我们显示全球水平辐照度(GHI)的相对根均方误差(RMSE)的减少,最高可达13个百分点,以便以前缺少或低质量的云属性数据。我们预计该方法将有效地提高NSRDB中的云属性和太阳辐照度数据的质量。

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