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Normalization of the temporal effect on the MODIS land surface temperature product using random forest regression

机译:利用随机森林回归对MODIS地表温度乘积的时间效应进行归一化

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Information about land surface temperature (LST) acquired from remote sensing satellite observations is very important to monitor surface energy and water exchange processes at the land-atmosphere interface. However, the wide-view of the popularly used polar-orbiting satellites (Terra and Aqua) face the challenge from the temporal effect on their LST products induced by the big temporal differences along the scan line. To generate a time-consistent LST product, a practical normalization method is proposed in this study based on random forest regression for LST observations from the Moderate Resolution Imaging Spectroradiometer (MODIS) sensor on-board Terra satellite. A linking model is constructed to express LST as a function of various surface variables including vegetation indices, leaf area index, surface albedo, water index, solar radiation factor, and surface elevation. Under the assumption that the temporal effect is induced primarily by the differences in incident solar radiation, the temporal effect normalization is conducted by deriving a temporally consistent solar radiation factor which is used to drive the linking model and obtain the normalized LST. The proposed method is applied to the central Iberian Peninsula on the day of year 170 and 181, 2015. Results show that the areas with positive complement in solar radiation factor generally exhibit a positive increase in LST. An obvious improvement can be observed in the spatial pattern of the normalized LST data with the disappearance of the temperature boundary due to the big difference of satellite observation time. The Meteosat Second Generation (MSG) LST data which have the observations at the same local solar time is used for quantitative validation. The evaluation shows that the normalized LST data is more coincident with the MSG LST data than the original MODIS LST data, with significant improvements in the root mean squared deviation and bias with the MSG LST data (1.23 K and 1.66 K, respectively). Unlike previous normalization methods, the proposed method is conducted based on only satellite observations without other ancillary data. Therefore, the method demonstrates good potential for normalizing the temporal effect of the wide-view polar-orbiting satellite observations.
机译:从遥感卫星观测获得的有关地表温度(LST)的信息对于监测陆-气界面的地表能量和水交换过程非常重要。但是,由于沿扫描线的时间差异较大,因此对广泛使用的极轨道卫星(Terra和Aqua)的宽视域面临着其LST产品的时间效应所带来的挑战。为了生成时间一致的LST产品,本研究提出了一种实用的归一化方法,该方法基于随机森林回归,对Terra卫星中分辨率成像光谱仪(MODIS)传感器进行的LST观测进行了研究。构建链接模型以将LST表示为各种表面变量的函数,包括植被指数,叶面积指数,表面反照率,水指数,太阳辐射因子和表面海拔高度。在假定时间效应主要是由入射太阳辐射的差异引起的假设下,通过推导用于驱动链接模型并获得归一化LST的时间一致太阳辐射因子来进行时间效应归一化。拟议的方法于2015年170和181日应用于伊比利亚中部半岛。结果表明,太阳辐射因子具有正补体的区域通常LST呈正增加。由于卫星观测时间的差异较大,随着温度边界的消失,归一化的LST数据的空间格局有了明显的改善。具有在相同当地太阳时间观测的Meteosat第二代(MSG)LST数据用于定量验证。评估显示,归一化的LST数据与MSG LST数据比原始的MODIS LST数据更加一致,并且与MSG LST数据相比,均方根偏差和偏差的均方根有了显着改善(分别为1.23 K和1.66 K)。与以前的归一化方法不同,所提出的方法仅基于卫星观测而没有其他辅助数据。因此,该方法展示出了标准化宽视极轨道卫星观测的时间效应的良好潜力。

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