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A Machine Learning Method to Correct the Terrain Effect on Land Surface Temperature in Mountainous Areas

机译:一种纠正山区地形对地形影响的机器学习方法

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In mountainous areas, land surface temperature (LST) shows significant terrain effect, which can be directly reflected by the spatial distribution associated with the change of topographic factors (elevation, slope, and aspect). By the way, the terrain effect diminishes the impacts from the differences in surface water and heat fluxes, and influences their comparison or estimation over complex terrain. In this study, a practical way to reduce the terrain effect is proposed based on the random forest method with datasets from MODIS products, which is used to build a LST prediction model instead of the previous model developed based on some numerical model or empirical method. The results indicates that the constructed LST model shows a good performance in predicting LST with the R2 of 0.93 and the RMSE lower than 2.0 K for four selected days. Corrected LST maps are compared with the original LST map, which presents a preliminary correction results with an obvious correction on pixels with significant terrain effect.
机译:在山区,地表温度(LST)表现出明显的地形效应,这可以直接通过与地形因子(高程,坡度和坡度)变化相关的空间分布来反映。顺便说一下,地形效应减少了地表水和热通量差异的影响,并影响了它们在复杂地形上的比较或估算。在这项研究中,基于MODIS产品数据集的随机森林方法,提出了一种减少地形影响的实用方法,该方法用于建立LST预测模型,而不是基于某些数值模型或经验方法开发的先前模型。结果表明,所构建的LST模型在预测LST方面表现出良好的性能,在选定的四天内R2为0.93,RMSE低于2.0K。将校正后的LST贴图与原始LST贴图进行比较,后者提供了初步的校正结果,并对具有明显地形影响的像素进行了明显的校正。

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