Intelligent monitoring of surface evapotranspiration in the Heihe River Basin based on SEBS modelling

Zijie Pang, Kehao Su
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Abstract

[Objective] The Heihe River Basin, located in northwestern China, is the second largest inland basin in China, and its water resources play a crucial role in the ecology, agriculture and human life of the region. The aim of this study is to investigate the spatial and temporal variations of surface evapotranspiration in the Heihe River Basin and the potential impacts of these variations on water resource management. [Methods] To achieve this goal, we applied the PM-based dual-source model, a meteorological model for estimating global surface ET, which takes into account a variety of factors such as temperature, humidity, wind speed and downward solar shortwave radiation. By analysing the meteorological data and remote sensing data of the Black River Basin, we first investigated the spatial and temporal distribution of surface evapotranspiration. [Conclusion] The results show that surface evapotranspiration shows obvious seasonal and regional variations and is significantly affected by meteorological conditions. The inversion of surface ET in the Heihe River Basin by this dual-source model needs to be improved, and the trend of ET values calculated by the model is relatively small compared with the actual values.
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基于 SEBS 模型的黑河流域地表蒸散量智能监测
[目的] 位于中国西北部的黑河流域是中国第二大内陆流域,其水资源对该地区的生态、农业和人类生活起着至关重要的作用。本研究旨在探讨黑河流域地表蒸散量的时空变化及其对水资源管理的潜在影响。[方法] 为了实现这一目标,我们应用了基于 PM 的双源模型,这是一种用于估算全球地表蒸散发的气象模型,考虑了温度、湿度、风速和向下的太阳短波辐射等多种因素。通过分析黑河流域的气象数据和遥感数据,我们首先研究了地表蒸散发的时空分布。[结论]研究结果表明,地表蒸散发具有明显的季节性和区域性变化,受气象条件影响较大。该双源模型对黑河流域地表蒸散发的反演能力有待提高,模型计算的蒸散发值与实际值相比变化趋势较小。
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