Spatio-temporal Downscaling Emulator for Regional Climate Models
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Authors
Barboza Chinchilla, Luis Alberto
Chou Chen, Shu Wei
Alfaro Córdoba, Marcela
Alfaro Martínez, Eric J.
Hidalgo León, Hugo G.
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Abstract
Regional Climate Models (RCM) describe the meso scale 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 computer time more than statistical climate downscaling. In this paper we describe
how to use a spatio-temporal statistical model with varying coefficients (VC), as a downscaling emulator for a RCM using varying coefficients. In order to estimate the proposed model, two options are
compared: INLA, and varycoef. We set up a simulation to compare the performance of both methods for building a statistical downscaling emulator for RCM, and then show that the emulator works
properly for NARCCAP data. The results show that the model is able to estimate non-stationary
marginal effects, which means that the downscaling output can vary over space. Furthermore, the
model has flexibility to estimate the mean of any variable in space and time, and has good prediction
results. INLA was the fastest method for all the cases, and the approximation with best accuracy
to estimate the different parameters from the model and the posterior distribution of the response
variable
Description
Keywords
Climate model output, INLA, Spatial temporal statistics, Statistical emulator, Varying coefficients
Citation
https://onlinelibrary.wiley.com/doi/10.1002/env.2815
https://arxiv.org/abs/2206.03914?context=stat
https://arxiv.org/abs/2206.03914?context=stat