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使用集成嵌套拉普拉斯近似对超高分辨率雷达降水数据进行快速空间模拟

Fast spatial simulation of extreme high-resolution radar precipitation data using integrated nested Laplace approximations

Journal of the Royal Statistical Society. Series C: Applied Statistics · 2024
被引 1
ABS 3

中文导读

提出一种基于集成嵌套拉普拉斯近似的快速方法,用于模拟高维空间降水极值,同时捕捉其边缘分布和尾部依赖结构,并以挪威中部13年1×1km²雷达数据验证了方法的有效性。

Abstract

Abstract Aiming to deliver improved precipitation simulations for hydrological impact assessment studies, we develop a methodology for modelling and simulating high-dimensional spatial precipitation extremes, focusing on both their marginal distributions and tail dependence structures. Tail dependence is crucial for assessing the consequences of extreme precipitation events, yet most stochastic weather generators do not attempt to capture this property. The spatial distribution of precipitation occurrences is modelled with four competing models, while the spatial distribution of nonzero extreme precipitation intensities are modelled with a latent Gaussian version of the spatial conditional extremes model. Nonzero precipitation marginal distributions are modelled using latent Gaussian models with gamma and generalized Pareto likelihoods. Fast inference is achieved using integrated nested Laplace approximations. We model and simulate spatial precipitation extremes in Central Norway, using 13 years of hourly radar data with a spatial resolution of 1×1km2, over an area of size 6,461km2, to describe the behaviour of extreme precipitation over a small drainage area. Inference on this high-dimensional data set is achieved within hours, and the simulations capture the main trends of the observed precipitation well.

水文学气象学极端事件统计空间统计