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Downscaling Land Surface Temperature in an Arid Area by Using Multiple Remote Sensing Indices with Random Forest Regression

机译:利用随机森林回归的多个遥感指数降低干旱地区的地表温度

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Many downscaling algorithms have been proposed to address the issue of coarse-resolution land surface temperature (LST) derived from available satellite-borne sensors. However, few studies have focused on improving LST downscaling in arid regions (especially in deserts) because of inaccurate remote sensing LST products. In this study, LST was downscaled by a random forest model between LST and multiple remote sensing indices (such as soil-adjusted vegetation index, normalized multi-band drought index, modified normalized difference water index, and normalized difference building index) in an arid region with an oasis–desert ecotone. The proposed downscaling approach, which involves the selection of remote sensing indices, was evaluated using LST derived from the MODIS LST product of Zhangye City in Heihe Basin. The spatial resolution of MODIS LST was downscaled from 1 km to 500 m. Results of visual and quantitative analyses show that the distribution of downscaled LST matched that of the oasis and desert ecosystem. The lowest (approximately 22 °C) and highest temperatures (higher than 37 °C) were detected in the middle oasis and desert regions, respectively. Furthermore, the proposed approach achieves relatively satisfactory downscaling results, with coefficient of determination and root mean square error of 0.84 and 2.42 °C, respectively. The proposed approach shows higher accuracy and minimization of the MODIS LST in the desert region compared with other methods. Optimal availability occurs in the vegetated region during summer and autumn. In addition, the approach is also efficient and reliable for LST downscaling of Landsat images. Future tasks include reliable LST downscaling in challenging regions.
机译:已经提出了许多缩小尺寸的算法来解决从可用的星载传感器得出的粗糙分辨率地表温度(LST)的问题。但是,由于遥感LST产品不准确,很少有研究集中在改善干旱地区(特别是在沙漠地区)的LST降尺度。在这项研究中,在干旱地区,LST通过随机森林模型在LST和多个遥感指数(如土壤调整植被指数,归一化多波段干旱指数,修正归一化差异水指数和归一化差异建筑指数)之间进行缩减。绿洲-荒漠过渡带的区域。利用从黑河盆地张ye市MODIS LST产品得出的LST,对所提出的涉及遥感指标选择的降尺度方法进行了评估。 MODIS LST的空间分辨率从1 km缩小到500 m。视觉和定量分析结果表明,缩小的LST的分布与绿洲和沙漠生态系统的分布相匹配。在中部绿洲和沙漠地区分别检测到最低温度(约22°C)和最高温度(高于37°C)。此外,所提出的方法获得了相对令人满意的降尺度结果,确定系数和均方根误差分别为0.84和2.42°C。与其他方法相比,该方法在沙漠地区显示出更高的精度和MODIS LST的最小化。夏季和秋季,植被区的可用性最佳。此外,该方法对于Landsat影像的LST缩小也是有效且可靠的。未来的任务包括在具有挑战性的地区进行可靠的LST降级。

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