Spatial variability of mean daily estimates of actual evaporation from remotely sensed imagery and surface reference data
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Published:2019-11-29
Issue:12
Volume:23
Page:4891-4907
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ISSN:1607-7938
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Container-title:Hydrology and Earth System Sciences
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language:en
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Short-container-title:Hydrol. Earth Syst. Sci.
Author:
Armstrong Robert N., Pomeroy John W.ORCID, Martz Lawrence W.
Abstract
Abstract. Land surface evaporation has considerable spatial variability that
is not captured by point-scale estimates calculated from meteorological data
alone. Knowing how evaporation varies spatially remains an important issue
for improving parameterisations of land surface schemes and hydrological
models and various land management practices. Satellite-based and aerial
remote sensing has been crucial for capturing moderate- to larger-scale
surface variables to indirectly estimate evaporative fluxes. However, more
recent advances for field research via unmanned aerial vehicles (UAVs) now allow
for the acquisition of more highly detailed surface data. Integrating models that can estimate “actual” evaporation from higher-resolution imagery and surface reference data would be valuable to better examine potential impacts of local variations in evaporation on upscaled estimates. This study introduces a novel approach for computing a normalised ratiometric index from surface variables that can be used to obtain more-realistic distributed estimates of actual evaporation. For demonstration purposes the Granger–Gray evaporation model (Granger and Gray, 1989) was applied at a rolling prairie agricultural site in central Saskatchewan, Canada. Visible and thermal images and meteorological reference data required to parameterise the model were obtained at midday. Ratiometric indexes were computed for the key surface variables albedo and
net radiation at midday. This allowed point observations of albedo and mean
daily net radiation to be scaled across high-resolution images over a large
study region. Albedo and net radiation estimates were within 5 %–10 % of measured values. A daily evaporation estimate for a grassed surface was 0.5 mm (23 %) larger than eddy covariance measurements. Spatial variations in key factors driving evaporation and their impacts on upscaled evaporation estimates are also discussed. The methods applied have two key advantages for estimating evaporation over previous remote-sensing approaches: (1) detailed daily estimates of actual evaporation can be directly obtained using a physically based evaporation model, and
(2) analysis of more-detailed and more-reliable evaporation estimates may lead to improved methods for upscaling evaporative fluxes to larger areas.
Funder
Canadian Foundation for Climate and Atmospheric Sciences Natural Sciences and Engineering Research Council of Canada
Publisher
Copernicus GmbH
Subject
General Earth and Planetary Sciences,General Engineering,General Environmental Science
Reference52 articles.
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Cited by
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