Land Data Assimilation: Harmonizing Theory and Data in Land Surface Process Studies

Author:

Li Xin1ORCID,Liu Feng2ORCID,Ma Chunfeng2ORCID,Hou Jinliang2ORCID,Zheng Donghai1ORCID,Ma Hanqing2ORCID,Bai Yulong3ORCID,Han Xujun4ORCID,Vereecken Harry5ORCID,Yang Kun6ORCID,Duan Qingyun7ORCID,Huang Chunlin2ORCID

Affiliation:

1. National Tibetan Plateau Data Center State Key Laboratory of Tibetan Plateau Earth System Environment and Resources Institute of Tibetan Plateau Research Chinese Academy of Sciences Beijing China

2. Key Laboratory of Remote Sensing of Gansu Province Heihe Remote Sensing Experimental Research Station Northwest Institute of Eco‐Environment and Resources Chinese Academy of Sciences Lanzhou China

3. College of Physics and Electrical Engineering Northwest Normal University Lanzhou China

4. Chongqing Jinfo Mountain Karst Ecosystem National Observation and Research Station School of Geographical Sciences Southwest University Chongqing China

5. Forschungszentrum Jülich Agrosphere (IBG 3) Jülich Germany

6. Ministry of Education Key Laboratory for Earth System Modeling Department of Earth System Science Tsinghua University Beijing China

7. College of Hydrology and Water Resources Hohai University Nanjing China

Abstract

AbstractData 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.

Funder

National Natural Science Foundation of China

Publisher

American Geophysical Union (AGU)

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