Spatial maps of extreme precipitation are crucial in flood protection. With the aim of producing maps of precipitation return levels, we propose a novel approach to model a collection of spatially distributed time series where the asymptotic assumption, typical of the traditional extreme value theory, is relaxed. We introduce a Bayesian hierarchical model that accounts for the possible underlying variability in the distribution of event magnitudes and occurrences, which are described through latent temporal and spatial processes. Spatial dependence is characterized by geographical covariates and effects not fully described by the covariates are captured by spatial structure in the hierarchies. The performance of the approach is illustrated through simulation studies and an application to daily rainfall extremes across North Carolina (USA). The results show that we significantly reduce the estimation uncertainty with respect to state of the art techniques.
翻译:极端降水的空间分布图对于防洪至关重要。为了绘制降水回流水平图,我们建议采用新颖的方法,模拟空间分布时间序列集,在空间分布时间序列集中,放松了传统极端价值理论典型的无症状假设。我们引入了一种贝叶斯等级模型,根据隐性时间和空间过程描述的事件数量和事件分布可能具有的潜在变化性。空间依赖性的特点为地理共变和,共同变差未充分描述的效应由等级结构的空间结构所捕捉。该方法的绩效通过模拟研究和对北卡罗来纳州(美国)各地每日降雨极端情况的应用加以说明。结果显示,我们大幅降低了对艺术技术状况的估计不确定性。