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Land Surface Temperature Downscaling Using Random Forest Regression: Primary Result and Sensitivity Analysis

机译:使用随机森林回归落地落地:主要结果和敏感性分析

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The land surface temperature (LST) derived from thermal infrared satellite images is a meaningful variable in many remote sensing applications. However, at present, the spatial resolution of the satellite thermal infrared remote sensing sensor is coarser, which cannot meet the needs. In this study, LST image was downscaled by a random forest model between LST and multiple predictors in an arid region with an oasis-desert ecotone. The proposed downscaling approach was evaluated using LST derived from the MODIS LST product of Zhangye City in Heihe Basin. The primary result of LST downscaling has been shown that the distribution of downscaled LST matched with that of the ecosystem of oasis and desert. By the way of sensitivity analysis, the most sensitive factors to LST downscaling were modified normalized difference water index (MNDWI)/normalized multi-band drought index (NMDI), soil adjusted vegetation index (SAVI)/ shortwave infrared reflectance (SWIR)/normalized difference vegetation index (NDVI), normalized difference building index (NDBI)/SAVI and SWIR/NDBI/MNDWI/NDWI for the region of water, vegetation, building and desert, with LST variation (at most) of 0.20/-0.22 K, 0.92/0.62/0.46 K, 0.28/-0.29 K and 3.87/-1.53/-0.64/-0.25 K in the situation of ±0.02 predictor perturbances, respectively.
机译:源自热红外卫星图像的陆地温度(LST)是许多遥感应用中的有意义变量。然而,目前,卫星热红外遥感传感器的空间分辨率是粗糙的,这不能满足需求。在这项研究中,LST图像被LST与多个预测因子之间的随机森林模型缩小了干旱地区,其中干旱地区与绿洲沙漠Ecotone。通过从黑河盆地张掖市的MODIS LST产品中得出的LST评估了所提出的缩小方法。已经显示LST级级的主要结果表明,与绿洲和沙漠生态系统相匹配的较低的LST分布。通过敏感性分析,对LST较低的最敏感因素进行了修改标准化差异水指数(MNDWI)/归一化多带干旱指数(NMDI),土壤调整后的植被指数(SAVI)/短波红外反射(SWIR)/标准化差异植被指数(NDVI),标准化差异建筑指数(NDBI)/ SAVI和SWIR / NDBI / MNDWI / NDWI用于水,植被,建筑和沙漠区域,LST变化(至多)0.20 / -0.22 k, 0.92 / 0.62 / 0.46 k,0.28 / -0.29 k和3.87 / -1.53​​ / -0.64 / -0.25 k分别为±0.02预测扰动。

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