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Evaluation of global terrestrial evapotranspiration using state-of-the-art approaches in remote sensing, machine learning and land surface modelingEvapotranspiration (ET) is critical in linking global water, carbon and energy cycles. However, direct measurement of global terrestrial ET is not feasible. Here, we first reviewed the basic theory and state-of-the-art approaches for estimating global terrestrial ET, including remote-sensing-based physical models, machine-learning algorithms and land surface models (LSMs). We then utilized 4 remote-sensing-based physical models, 2 machine-learning algorithms and 14 LSMs to analyze the spatial and temporal variations in global terrestrial ET. The results showed that the ensemble means of annual global terrestrial ET estimated by these three categories of approaches agreed well, with values ranging from 589.6 mm/yr (6.56×10^4 cu.km/yr) to 617.1 mm/yr (6.87×10^4 cu.km/yr). For the period from 1982 to 2011, both the ensembles of remote-sensing-based physical models and machine-learning algorithms suggested increasing trends in global terrestrial ET (0.62 mm/sq.yr with a significance level of p<0.05 and 0.38 mm yr−2 with a significance level of p<0.05, respectively). In contrast, the ensemble mean of the LSMs showed no statistically significant change (0.23 mm/sq.yr, p>0.05), although many of the individual LSMs reproduced an increasing trend. Nevertheless, all 20 models used in this study showed that anthropogenic Earth greening had a positive role in increasing terrestrial ET. The concurrent small interannual variability, i.e., relative stability, found in all estimates of global terrestrial ET, suggests that a potential planetary boundary exists in regulating global terrestrial ET, with the value of this boundary being around 600 mm/yr. Uncertainties among approaches were identified in specific regions, particularly in the Amazon Basin and arid/semiarid regions. Improvements in parameterizing water stress and canopy dynamics, the utilization of new available satellite retrievals and deep-learning methods, and model–data fusion will advance our predictive understanding of global terrestrial ET.
Document ID
20210011662
Acquisition Source
Goddard Space Flight Center
Document Type
Reprint (Version printed in journal)
Authors
Shufen Pan
(Auburn University Auburn, Alabama, United States)
Naiqing Pan
(Auburn University Auburn, Alabama, United States)
Hanqin Tian
(Auburn University Auburn, Alabama, United States)
Pierre Friedlingstein
(University of Exeter Exeter, United Kingdom)
Stephen Sitch
(University of Exeter Exeter, United Kingdom)
Hao Shi
(Auburn University Auburn, Alabama, United States)
Vivek K. Arora
(University of Victoria Victoria, British Columbia, Canada)
Vanessa Haverd
(Commonwealth Scientific and Industrial Research Organisation Canberra, Australian Capital Territory, Australia)
Atul K. Jain
(University of Illinois at Urbana Champaign Urbana, Illinois, United States)
Etsushi Kato
(Institute of Applied Energy Tokyo, Japan)
Sebastian Lienert
(University of Bern Bern, Switzerland)
Danica Lombardozzi
(National Center for Atmospheric Research Boulder, Colorado, United States)
Julia E. M. S. Nabel
(Max Planck Institute for Meteorology Hamburg, Germany)
Catherine Ottlé
(Institut Pierre-Simon Laplace Paris, France)
Benjamin Poulter
(Goddard Space Flight Center Greenbelt, Maryland, United States)
Sönke Zaehle
(Max Planck Institute for Biogeochemistry Jena, Germany)
Date Acquired
March 19, 2021
Publication Date
March 31, 2020
Publication Information
Publication: Hydrology and Earth System Sciences
Publisher: Copernicus Publications / European Geosciences Union
Volume: 24
Issue: 3
Issue Publication Date: March 1, 2020
ISSN: 1027-5606
e-ISSN: 1607-7938
URL: https://hess.copernicus.org/articles/24/1485/2020/
Subject Category
Earth Resources And Remote Sensing
Funding Number(s)
WBS: 304029.01.20.04.01.02
CONTRACT_GRANT: NSF 1903722
CONTRACT_GRANT: NSF 1243232
CONTRACT_GRANT: AGS 12-43071
CONTRACT_GRANT: DE-SC0016323
CONTRACT_GRANT: USDA 2015-67003-23489
CONTRACT_GRANT: USDA 2015-67003-23485
CONTRACT_GRANT: EC H2020 CCiCC 821003
CONTRACT_GRANT: SNSF 20020_172476
Distribution Limits
Public
Copyright
Use by or on behalf of the US Gov. Permitted.
Technical Review
External Peer Committee
Keywords
surface modeling
remote sensing
machine learning
surface modeling
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