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A Machine Learning Approach to Estimation of Downward Solar Radiation from Satellite-derived Data Products: An Application Over a Semi-Arid Ecosystem in the U.S.

机译:一种估计来自卫星数据产品的向下太阳辐射的机器学习方法:在美国半干旱生态系统中的应用

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摘要

Shortwave solar radiation is an important component of the surface energy balance and provides the principal source of energy for terrestrial ecosystems. This paper presents a machine learning approach in the form of a random forest (RF) model for estimating daily downward solar radiation flux at the land surface over complex terrain using MODIS (MODerate Resolution Imaging Spectroradiometer) remote sensing data. The model-building technique makes use of a unique network of 16 solar flux measurements in the semi-arid Reynolds Creek Experimental Watershed and Critical Zone Observatory, in southwest Idaho, USA. Based on a composite RF model built on daily observations from all 16 sites in the watershed, the model simulation of downward solar radiation matches well with the observation data (r2 = 0.96). To evaluate model performance, RF models were built from 12 of 16 sites selected at random and validated against the observations at the remaining four sites. Overall root mean square errors (RMSE), bias, and mean absolute error (MAE) are small (range: 37.17 W/m2-81.27 W/m2, -48.31 W/m2-15.67 W/m2, and 26.56 W/m2-63.77 W/m2, respectively). When extrapolated to the entire watershed, spatiotemporal patterns of solar flux are largely consistent with expected trends in this watershed. We also explored significant predictors of downward solar flux in order to reveal important properties and processes controlling downward solar radiation. Based on the composite RF model built on all 16 sites, the three most important predictors to estimate downward solar radiation include the black sky albedo (BSA) near infrared band (0.858 μm), BSA visible band (0.3–0.7 μm), and clear day coverage. This study has important implications for improving the ability to derive downward solar radiation through a fusion of multiple remote sensing datasets and can potentially capture spatiotemporally varying trends in solar radiation that is useful for land surface hydrologic and terrestrial ecosystem modeling.
机译:短波太阳辐射是表面能平衡的重要组成部分,是陆地生态系统的主要能源。本文以随机森林(RF)模型的形式提出了一种机器学习方法,用于使用MODIS(中等分辨率成像光谱仪)遥感数据估算复杂地形上陆地表面的每日向下太阳辐射通量。该模型构建技术利用了美国爱达荷州西南部半干旱的雷诺兹河实验分水岭和临界区天文台的16个太阳通量测量值的独特网络。基于对流域所有16个站点进行日常观测而建立的复合RF模型,向下太阳辐射的模型模拟与观测数据非常吻合(r2 = 0.96)。为了评估模型的性能,从随机选择的16个站点中的12个站点构建了RF模型,并针对其余四个站点的观察结果进行了验证。整体均方根误差(RMSE),偏差和平均绝对误差(MAE)小(范围:37.17 W / m2-81.27 W / m2,-48.31 W / m2-15.67 W / m2和26.56 W / m2-分别为63.77 W / m2)。当推算到整个流域时,太阳通量的时空分布在很大程度上与该流域的预期趋势一致。我们还探索了向下太阳通量的重要预测因子,以揭示控制向下太阳辐射的重要特性和过程。基于在所有16个站点上建立的复合RF模型,估计向下太阳辐射的三个最重要的预测因素包括:近红外波段(0.858μm)的黑天空反照率(BSA),BSA可见波段(0.3–0.7μm)和晴朗全天覆盖。这项研究对于通过融合多个遥感数据集来提高向下辐射的能力具有重要意义,并且可以潜在地捕获太阳辐射的时空变化趋势,这对于陆地表面水文和陆地生态系统建模很有用。

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