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A Spatio-Temporal Downscaler for Output From Numerical Models
Authors:Veronica J Berrocal  Alan E Gelfand  David M Holland
Institution:(1) Department of Statistical Science, Duke University, Durham, NC 27708, USA;(2) 27711, U.S. Environmental Protection Agency, National Exposure Research Laboratory, Research Triangle Park, NC, USA
Abstract:Often, in environmental data collection, data arise from two sources: numerical models and monitoring networks. The first source provides predictions at the level of grid cells, while the second source gives measurements at points. The first is characterized by full spatial coverage of the region of interest, high temporal resolution, no missing data but consequential calibration concerns. The second tends to be sparsely collected in space with coarser temporal resolution, often with missing data but, where recorded, provides, essentially, the true value. Accommodating the spatial misalignment between the two types of data is of fundamental importance for both improved predictions of exposure as well as for evaluation and calibration of the numerical model. In this article we propose a simple, fully model-based strategy to downscale the output from numerical models to point level. The static spatial model, specified within a Bayesian framework, regresses the observed data on the numerical model output using spatially-varying coefficients which are specified through a correlated spatial Gaussian process.
Keywords:
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