Forecasting Next Year's Global Land Water Storage Using GRACE Data

Author:

Li Fupeng123ORCID,Kusche Jürgen2,Sneeuw Nico4ORCID,Siebert Stefan5ORCID,Gerdener Helena2ORCID,Wang Zhengtao16ORCID,Chao Nengfang3ORCID,Chen Gang3,Tian Kunjun7

Affiliation:

1. School of Geodesy and Geomatics Wuhan University Wuhan China

2. Institute of Geodesy and Geoinformation University of Bonn Bonn Germany

3. College of Marine Science and Technology China University of Geosciences Wuhan China

4. Institute of Geodesy University of Stuttgart Stuttgart Germany

5. Department of Crop Sciences University of Göttingen Göttingen Germany

6. Hubei Luojia Laboratory Wuhan China

7. School of Civil Engineering and Geomatics Shandong University of Technology Zibo China

Abstract

AbstractExisting approaches for predicting total water storage (TWS) rely on land surface or hydrological models using meteorological forcing data. Yet, such models are more adept at predicting specific water compartments, such as soil moisture, rather than others, which consequently impedes accurately forecasting of TWS. Here we show that machine learning can be used to uncover relations between nonseasonal terms of Gravity Recovery and Climate Experiment (GRACE) derived total water storage and the preceding hydrometeorological drivers, and these relations can subsequently be used to predict water storage up to 12 months ahead, and even exceptional droughts on the basis of near real‐time observational forcing data. Validation by actual GRACE observations suggests that the method developed here has the capability to forecast trends in global land water storage for the following year. If applied in early warning systems, these predictions would better inform decision‐makers to improve current drought and water resource management.

Funder

Deutsches Zentrum für Luft- und Raumfahrt

National Natural Science Foundation of China

Deutsche Forschungsgemeinschaft

China Postdoctoral Science Foundation

Publisher

American Geophysical Union (AGU)

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