Downscaled hyper-resolution (400 m) gridded datasets of daily precipitation and temperature (2008–2019) for the East–Taylor subbasin (western United States)
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Published:2022-11-11
Issue:11
Volume:14
Page:4949-4966
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ISSN:1866-3516
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Container-title:Earth System Science Data
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language:en
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Short-container-title:Earth Syst. Sci. Data
Author:
Mital UtkarshORCID, Dwivedi Dipankar, Brown James B., Steefel Carl I.
Abstract
Abstract. High-resolution gridded datasets of meteorological
variables are needed in order to resolve fine-scale hydrological gradients
in complex mountainous terrain. Across the United States, the highest
available spatial resolution of gridded datasets of daily meteorological
records is approximately 800 m. This work presents gridded datasets of daily
precipitation and mean temperature for the East–Taylor subbasin (in the western
United States) covering a 12-year period (2008–2019) at a high spatial
resolution (400 m). The datasets are generated using a downscaling framework
that uses data-driven models to learn relationships between climate
variables and topography. We observe that downscaled datasets of
precipitation and mean temperature exhibit smoother spatial gradients (while
preserving the spatial variability) when compared to their coarser
counterparts. Additionally, we also observe that when downscaled datasets
are upscaled to the original resolution (800 m), the mean residual error is
almost zero, ensuring no bias when compared with the original data.
Furthermore, the downscaled datasets are observed to be linearly related to
elevation, which is consistent with the methodology underlying the original
800 m product. Finally, we validate the spatial patterns exhibited by
downscaled datasets via an example use case that models lidar-derived
estimates of snowpack. The presented dataset constitutes a valuable resource
to resolve fine-scale hydrological gradients in the mountainous terrain of
the East–Taylor subbasin, which is an important study area in the context of
water security for the southwestern United States and Mexico. The dataset is
publicly available at https://doi.org/10.15485/1822259
(Mital et al., 2021).
Funder
U.S. Department of Energy
Publisher
Copernicus GmbH
Subject
General Earth and Planetary Sciences
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