探索用于超分辨率地表建模的地形降尺度方法

IF 3.8 2区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES Journal of Geophysical Research: Atmospheres Pub Date : 2024-10-22 DOI:10.1029/2024JD041338
Sisi Chen, Lu Li, Zhongwang Wei, Nan Wei, Yonggen Zhang, Shupeng Zhang, Hua Yuan, Wei Shangguan, Shulei Zhang, Qingliang Li, Yongjiu Dai
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引用次数: 0

摘要

超分辨率地表建模为模拟与当地相关的水循环和能量循环提供了前所未有的机会。然而,现有的气象强迫数据往往不足以满足超分辨率建模的要求。在此,我们开发了一个基于地形调整方法和自动机器学习(AutoML)的综合降尺度框架。利用该框架,我们从分辨率为 0.25°的ERA5 数据中开发了 90 米和每小时大气强迫数据集,然后利用开发的强迫数据对两个复杂地形区(黑河流域和科罗拉多河上游流域)的共同陆地模式(CoLM)进行了强迫。我们对照原地观测数据和网格数据,系统地评估了降尺度强迫和 CoLM 输出结果。地面验证结果表明,所有降尺度强迫变量都得到了一致的改善,平均均方根误差(RMSE)改善了 6.362%-95.86%。包含详细地形特征的降尺度作用力提供了更好的幅值估计,达到了与区域再分析作用力数据相当的性能水平。经现场验证,CoLM 模型的降尺度强迫在模拟水和能量通量方面表现出相当或更好的能力。超分辨率模拟对陆地表面过程进行了更详细、更合理的描述,并获得了与高分辨率陆地表面数据相似的空间模式和幅度,尤其是在高海拔地区。此外,这项研究还强调了使用基于山地辐射理论的短波辐射降尺度模型和 AutoML 辅助降水降尺度模型的好处。这些发现强调了在山坡尺度模拟中整合基于地形的降尺度方法的重要性。
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Exploring Topography Downscaling Methods for Hyper-Resolution Land Surface Modeling

Hyper-resolution land surface modeling provides an unprecedented opportunity to simulate locally relevant water and energy cycles. However, the available meteorological forcing data is often insufficient to fulfill the requirements of hyper-resolution modeling. Here, we developed a comprehensive downscaling framework based on topography-adjusted methods and automated machine learning (AutoML). With this framework, a 90 m and hourly atmospheric forcing data set was developed from ERA5 data at a 0.25° resolution, and the Common Land Model (CoLM) was then forced with the developed forcing data over two complex terrain regions (the Heihe River Basin and Upper Colorado River Basin). We systematically evaluated the downscaled forcing and the CoLM outputs against both in situ observations and gridded data. The ground-based validation results suggested consistent improvements for all downscaled forcing variables with mean RMSE improved by 6.362%–95.86%. The downscaled forcings, which incorporated detailed topographic features, offered improved magnitude estimates, achieving a comparable level of performance to that of regional reanalysis forcing data. The downscaled forcing driving the CoLM model showed comparable or better skills in simulating water and energy fluxes, as verified by in situ validations. The hyper-resolution simulations provided a detailed and more reasonable description of land surface processes and attained similar spatial patterns and magnitudes with high-resolution land surface data, especially over highly elevated areas. Additionally, this study highlighted the benefits of using mountain radiation theory-based shortwave radiation downscaling models and AutoML-assisted precipitation downscaling models. These findings emphasized the significance of integrating topography-based downscaling methods for hillslope-scale simulations.

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来源期刊
Journal of Geophysical Research: Atmospheres
Journal of Geophysical Research: Atmospheres Earth and Planetary Sciences-Geophysics
CiteScore
7.30
自引率
11.40%
发文量
684
期刊介绍: JGR: Atmospheres publishes articles that advance and improve understanding of atmospheric properties and processes, including the interaction of the atmosphere with other components of the Earth system.
期刊最新文献
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