2023
DOI: 10.1002/env.2824
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A Bayesian spatio‐temporal model for short‐term forecasting of precipitation fields

Abstract: With extreme weather events becoming more common, the risk posed by surface water flooding is ever increasing. In this work we propose a model, and associated Bayesian inference scheme, for generating short‐term, probabilistic forecasts of localised precipitation on a spatial grid. Our generative hierarchical dynamic model is formulated in discrete space and time with a lattice‐Markov spatio‐temporal auto‐regressive structure, inspired by continuous models of advection and diffusion. Observations from both wea… Show more

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“…Spatial‐temporal data analysis has attracted increasing research interests and applications in many scientific and engineering fields, such as disease spread analysis (Feng, 2022; Lawson, 2018; Torabi & Rosychuk, 2011; Ugarte et al, 2010), climate data analysis (Erhardt et al, 2015; Velarde et al, 2004; Wan et al, 2021; Zhang et al, 2016), house market study (Gong & de Haan, 2018; Wang et al, 2022), and environmental science (Fioravanti et al, 2022; Johnson et al, 2023; Jurek & Katzfuss, 2023; Rougier et al, 2023; Zhang et al, 2023). In these practical applications, it is an essential step to investigate the underlying spatial‐temporal pattern.…”
Section: Introductionmentioning
confidence: 99%
“…Spatial‐temporal data analysis has attracted increasing research interests and applications in many scientific and engineering fields, such as disease spread analysis (Feng, 2022; Lawson, 2018; Torabi & Rosychuk, 2011; Ugarte et al, 2010), climate data analysis (Erhardt et al, 2015; Velarde et al, 2004; Wan et al, 2021; Zhang et al, 2016), house market study (Gong & de Haan, 2018; Wang et al, 2022), and environmental science (Fioravanti et al, 2022; Johnson et al, 2023; Jurek & Katzfuss, 2023; Rougier et al, 2023; Zhang et al, 2023). In these practical applications, it is an essential step to investigate the underlying spatial‐temporal pattern.…”
Section: Introductionmentioning
confidence: 99%