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首页> 外文期刊>Journal of Hydrology >Generation of spatio-temporally continuous evapotranspiration and its components by coupling a two-source energy balance model and a deep neural network over the Heihe River Basin
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Generation of spatio-temporally continuous evapotranspiration and its components by coupling a two-source energy balance model and a deep neural network over the Heihe River Basin

机译:通过耦合双源能量平衡模型和黑河流域的深神经网络来产生时空连续蒸发及其组件

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Evapotranspiration (ET) and its components of soil evaporation (E) and vegetation transpiration (T), as key variables for the water-energy exchange between the land surface and the atmosphere, are widely used in hydrological and agricultural applications. The land surface temperature based two-source energy balance (TSEB) model can provide high accuracy E, T and ET, which are spatio-temporally discontinuous, whereas the spatio-temporally continuous daily ET is more helpful in water resources management. In this study, to improve the continuity of estimates from the TSEB model, we developed a new combined model coupling the TSEB model and deep neural network (DNN) (TSEB_DNN). First, spatio-temporally continuous reference data was prepared based on the remote sensing and meteorological data as input, and E from soil and T from vegetation were obtained from the TSEB model under clear-sky condition as outputs. Then, the DNN was trained under clear-sky condition to obtain the relationship between E and T estimates from TSEB and reference data. Finally, the trained DNN was driven by the spatio-temporally continuous reference data to obtain spatio-temporally continuous E, T and ET. Compared with the ET estimates from the original TSEB model, the continuity was significantly improved for the TSEB_DNN model. The TSEB_DNN model was well consistent with the in situ measurements and had the overall correlation coefficient (R), root-mean-square-error (RMSE), and bias values of 0.88, 0.88 mm d(-1), and 0.37 mm d(-1), respectively. The ratio of T/ET estimates from the TSEB_DNN model had high accuracy against in situ measurements with RMSE and bias values of 7.49% and -2.22%, respectively. The combined model and the maps of E, T and ET will help improve water resource management.
机译:蒸发蒸腾量(ET)及其土壤蒸发量(E)和植被蒸腾量(T)的组成部分,作为地表和大气之间水能交换的关键变量,在水文和农业应用中有着广泛的应用。基于陆地表面温度的双源能量平衡(TSEB)模型可以提供高精度的E、T和ET,这是时空不连续的,而时空连续的每日ET更有助于水资源管理。在本研究中,为了改善TSEB模型估计值的连续性,我们开发了一种新的耦合TSEB模型和深度神经网络(DNN)的组合模型(TSEB_DNN)。首先,以遥感和气象数据为输入,准备时空连续的参考数据,以晴空条件下的TSEB模型为输出,获得土壤E和植被T。然后,在晴朗的天空条件下对DNN进行训练,以获得来自TSEB的E和T估计值与参考数据之间的关系。最后,训练后的DNN由时空连续的参考数据驱动,以获得时空连续的E、T和ET。与原始TSEB模型的ET估计值相比,TSEB_DNN模型的连续性得到了显著改善。TSEB_DNN模型与现场测量结果非常一致,总体相关系数(R)、均方根误差(RMSE)和偏差值分别为0.88、0.88 mm d(-1)和0.37 mm d(-1)。根据TSEB_DNN模型估算的T/ET比率与现场测量相比具有较高的准确性,RMSE和偏差值分别为7.49%和-2.22%。组合模型和E、T和ET地图将有助于改善水资源管理。

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