2023
DOI: 10.1002/env.2815
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Spatio‐temporal downscaling emulator for regional climate models

Abstract: Regional climate models (RCM) describe the mesoscale global atmospheric and oceanic dynamics and serve as dynamical downscaling models. In other words, RCMs use atmospheric and oceanic climate output from general circulation models (GCM) to develop a higher resolution climate output. They are computationally demanding and, depending on the application, require several orders of magnitude of compute time more than statistical climate downscaling. In this article, we describe how to use a spatio‐temporal statist… Show more

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Cited by 4 publications
(3 citation statements)
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“…Temporal downscaling serves as a crucial technique in various scientific applications [29][30][31][32], particularly in environmental modeling where high-frequency fluctuations often matter. The traditional ways to tackle this issue have primarily been statistical.…”
Section: Temporal Downscalingmentioning
confidence: 99%
“…Temporal downscaling serves as a crucial technique in various scientific applications [29][30][31][32], particularly in environmental modeling where high-frequency fluctuations often matter. The traditional ways to tackle this issue have primarily been statistical.…”
Section: Temporal Downscalingmentioning
confidence: 99%
“…Temporal downscaling serves as a crucial technique in various scientific applications [17][18][19][20], particularly in environmental modeling where high-frequency fluctuations often matter. The traditional ways to tackle this issue have primarily been statistical.…”
Section: Temporal Downscalingmentioning
confidence: 99%
“…Recent papers published in the literature have highlighted the growing interest in the INLA method and its diverse applications. Barboza et al (2023), for instance, validated the superiority of the INLA method for estimating parameters for a spatio‐temporal statistical model used as a downscaling emulator for regional climate models. Castro‐Camilo et al (2022) implemented a novel blended generalized extreme value (bGEV) distribution in the R‐INLA package and demonstrated their effective performance through simulations and a case study on NO2$$ {\mathrm{NO}}_2 $$ pollution levels in California.…”
Section: Introductionmentioning
confidence: 99%