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Spatial disaggregation of ASCAT soil moisture under all sky condition using support vector machine

机译:支持向量机在天空条件下ASCAT土壤水分的空间分解。

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With recent advances in downscaling methodologies, soil moisture (SM) estimation using microwave remote sensing has become feasible for local application. However, disaggregation of SM under all sky conditions remains challenging. This study suggests a new downscaling approach under all sky conditions based on support vector regression (SVR) using microwave and optical/infrared data and geolocation information. Optically derived estimates of land surface temperature and normalized difference vegetation index from MODerate Resolution Imaging Spectroradiometer land and atmosphere products were utilized to obtain a continuous spatio-temporal input datasets to disaggregate SM observation from Advanced SCATterometer in South Korea during 2015 growing season. SVR model was compared to synergistic downscaling approach (SDA), which is based on physical relationship between SM and hydrometeorological factors. Evaluation against in situ observations showed that the SVR model under all sky conditions (R: 0.57 to 0.81, ubRMSE: 0.0292 m(3) m(-3) to 0.0398 m(3) m(-3)) outperformed coarse ASCAT SM (R: 0.55 to 0.77, ubRMSE: 0.0300 m(3) m(-3) to 0.0408m(3)m(-3)) and SDA model (mean R: 0.56 to 0.78, ubRMSE: 0.0324 m(3) m(-3) to 0.0436 m(3) m(-3)) in terms of statistical results as well as sensitivity with precipitation. This study suggests that the spatial downscaling technique based on remote sensing has the potential to derive high resolution SM regardless of weather conditions without relying on data from other sources. It offers an insight for analyzing hydrological, climate, and agricultural conditions at regional to local scale.
机译:随着降尺度方法的最新进展,使用微波遥感估算土壤湿度(SM)对于本地应用已变得可行。但是,在所有天空条件下分解SM仍然具有挑战性。这项研究提出了一种新的降低尺度的方法,该方法基于使用微波和光学/红外数据以及地理位置信息的支持向量回归(SVR),在所有天空条件下均可实现。利用MODerate分辨率成像光谱仪土地和大气产品的光学方法得出的地表温度和归一化差异植被指数的光学估算,用于获取连续的时空输入数据集,以分解2015年生长季节韩国Advanced SCATterometer的SM观测值。将SVR模型与基于SM和水文气象因素之间物理关系的协同降尺度方法(SDA)进行了比较。针对现场观测的评估表明,在所有天空条件下(R:0.57至0.81,ubRMSE:0.0292 m(3)m(-3)至0.0398 m(3)m(-3)),SVR模型的性能均优于ASCAT SM( R:0.55至0.77,ubRMSE:0.0300 m(3)m(-3)至0.0408m(3)m(-3))和SDA模型(平均值R:0.56至0.78,ubRMSE:0.0324 m(3)m( -3)至0.0436 m(3)m(-3))的统计结果以及对降水的敏感性。这项研究表明,基于遥感的空间缩减技术有可能在不依赖其他来源数据的情况下,不受天气条件的影响而获得高分辨率SM。它为分析区域到地方规模的水文,气候和农业状况提供了见识。

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