Learning Global Evapotranspiration Dataset Corrections from a Water Cycle Closure Supervision

Author:

Hascoet Tristan1,Pellet Victor2ORCID,Aires Filipe2ORCID,Takiguchi Tetsuya1ORCID

Affiliation:

1. Graduate School of System Informatics, Kobe University, Kobe 657-8501, Japan

2. Laboratoire d’Etude du Rayonnement et de la Matière en Astrophysique et en Atmosphère, Observatoire de Paris, 75014 Paris, France

Abstract

Evapotranspiration (E) is one of the most uncertain components of the global water cycle (WC). Improving global E estimates is necessary to improve our understanding of climate and its impact on available surface water resources. This work presents a methodology for deriving monthly corrections to global E datasets at 0.25∘ resolution. A principled approach is proposed to firstly use indirect information from the other water components to correct E estimates at the catchment level, and secondly to extend this sparse catchment-level information to global pixel-level corrections using machine learning (ML). Several E satellite products are available, each with its own errors (both random and systematic). Four such global E datasets are used to validate the proposed approach and highlight its ability to extract seasonal and regional systematic biases. The resulting E corrections are shown to accurately generalize WC closure constraints to unseen catchments. With an average deviation of 14% from the original E datasets, the proposed method achieves up to 20% WC residual reduction on the most favorable dataset.

Funder

Japanese Society for the Promotion of Science’s Grant-in-Aid for Early-Career Scientists

European Space Agency

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

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