Although most models for rainfall extremes focus on point-wise values, it is aggregated precipitation over areas up to river catchment scale that is of the most interest. To capture the joint behaviour of precipitation aggregates evaluated at different spatial scales, parsimonious and effective models must be built with knowledge of the underlying spatial process. Precipitation is driven by a mixture of processes acting at different scales and intensities, e.g., convective and frontal, with extremes of aggregates for typical catchment sizes arising from extremes of only one of these processes, rather than a combination of them. High-intensity convective events cause extreme spatial aggregates at small scales but the contribution of lower-intensity large-scale fronts is likely to increase as the area aggregated increases. Thus, to capture small to large scale spatial aggregates within a single approach requires a model that can accurately capture the extremal properties of both convective and frontal events. Previous extreme value methods have ignored this mixture structure; we propose a spatial extreme value model which is a mixture of two components with different marginal and dependence models that are able to capture the extremal behaviour of convective and frontal rainfall and more faithfully reproduces spatial aggregates for a wide range of scales. Modelling extremes of the frontal component raises new challenges due to it exhibiting strong long-range extremal spatial dependence. Our modelling approach is applied to fine-scale, high-dimensional, gridded precipitation data. We show that accounting for the mixture structure improves the joint inference on extremes of spatial aggregates over regions of different sizes.
翻译:虽然大多数降雨极端模型都侧重于点值,但它是河流集水规模以至最感兴趣的地区的综合降水量。为了捕捉不同空间尺度评估的降水总量的共同行为,必须随着对基础空间过程的了解而建立敏锐和有效的模型。降水是由不同规模和强度(例如对流和前方事件)的各种过程混合驱动的,其中典型集水体规模的极端总量来自其中一种过程,而不是其中一种过程的结合。高强度共振事件导致小规模的极端空间总量,但低密度大规模前沿的促成因素很可能随着地区聚集的增加而增加。因此,为了在单一方法中捕捉小到大范围的空间总量,需要一个能够准确捕捉对流和前方事件极端特征的极端特性的模型。以前的极端价值方法忽视了这种混合结构;我们提出了一种空间极端值模型,这是两个组成部分的混合,其中两个组成部分是不同的边际和依赖性模型,在小尺度上产生极端的高度的累计总量总量总量总量总量的集合性结构,在模型前方一级的模型中展示了我们最接近的弹性的弹性的模型,在前方层的模型中展示了我们前方层的弹性的模型的模型的弹性结构的弹性结构。