陆地数据同化:陆地表面过程研究中的理论与数据协调

IF 25.2 1区 地球科学 Q1 GEOCHEMISTRY & GEOPHYSICS Reviews of Geophysics Pub Date : 2024-03-19 DOI:10.1029/2022RG000801
Xin Li, Feng Liu, Chunfeng Ma, Jinliang Hou, Donghai Zheng, Hanqing Ma, Yulong Bai, Xujun Han, Harry Vereecken, Kun Yang, Qingyun Duan, Chunlin Huang
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引用次数: 0

摘要

数据同化在促进 "科学 "理解和充当地球系统科学的 "工程工具 "方面发挥着双重作用。陆地数据同化(LDA)已发展成为地球物理学中一门独特的学科,促进了理论和数据的协调统一,使陆地模型和观测数据能够相互补充和制约。近几十年来,LDA 在理论、方法和应用方面都取得了长足的进步,因此有必要对其进行全面深入的探讨。在此,我们将对 LDA 的理论和方法论发展及其显著特点进行全面综述。其中包括在解决地表过程中的强非线性、探索机器学习方法在数据同化中的潜力、量化多尺度空间相关性引起的不确定性以及同时估计模型状态和参数等方面的突破。事实证明,LDA 成功地增强了对各种地表过程(包括土壤水分、积雪、蒸散、溪流、地下水、灌溉和地表温度)的理解和预测,特别是在水循环和能量循环领域。本综述概述了全球、区域和流域尺度 LDA 系统和软件平台的发展情况,提出了生成陆地再分析和推进陆地-大气耦合 DA 的重大挑战。最后,我们强调了通过接收大量地球观测和社会感知数据,将 LDA 的应用从纯地球物理系统扩展到自然和人类耦合系统的机会。本文综述了当前的 LDA 知识,并为其未来发展,特别是在促进理论-数据双驱动的陆地过程研究方面,提供了一个基石。
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Land Data Assimilation: Harmonizing Theory and Data in Land Surface Process Studies

Data assimilation plays a dual role in advancing the “scientific” understanding and serving as an “engineering tool” for the Earth system sciences. Land data assimilation (LDA) has evolved into a distinct discipline within geophysics, facilitating the harmonization of theory and data and allowing land models and observations to complement and constrain each other. Over recent decades, substantial progress has been made in the theory, methodology, and application of LDA, necessitating a holistic and in-depth exploration of its full spectrum. Here, we present a thorough review elucidating the theoretical and methodological developments in LDA and its distinctive features. This encompasses breakthroughs in addressing strong nonlinearities in land surface processes, exploring the potential of machine learning approaches in data assimilation, quantifying uncertainties arising from multiscale spatial correlation, and simultaneously estimating model states and parameters. LDA has proven successful in enhancing the understanding and prediction of various land surface processes (including soil moisture, snow, evapotranspiration, streamflow, groundwater, irrigation and land surface temperature), particularly within the realms of water and energy cycles. This review outlines the development of global, regional, and catchment-scale LDA systems and software platforms, proposing grand challenges of generating land reanalysis and advancing coupled land‒atmosphere DA. We lastly highlight the opportunities to expand the applications of LDA from pure geophysical systems to coupled natural and human systems by ingesting a deluge of Earth observation and social sensing data. The paper synthesizes current LDA knowledge and provides a steppingstone for its future development, particularly in promoting dual driven theory-data land processes studies.

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来源期刊
Reviews of Geophysics
Reviews of Geophysics 地学-地球化学与地球物理
CiteScore
50.30
自引率
0.80%
发文量
28
审稿时长
12 months
期刊介绍: Geophysics Reviews (ROG) offers comprehensive overviews and syntheses of current research across various domains of the Earth and space sciences. Our goal is to present accessible and engaging reviews that cater to the diverse AGU community. While authorship is typically by invitation, we warmly encourage readers and potential authors to share their suggestions with our editors.
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