In recent years, parametric models for max-stable processes have become a popular choice for modeling spatial extremes because they arise as the asymptotic limit of rescaled maxima of independent and identically distributed random processes. Apart from few exceptions for the class of extremal-t processes, existing literature mainly focuses on models with stationary dependence structures. In this paper, we propose a novel non-stationary approach that can be used for both Brown-Resnick and extremal-t processes - two of the most popular classes of max-stable processes - by including covariates in the corresponding variogram and correlation functions, respectively. We apply our new approach to extreme precipitation data in two regions in Southern and Northern Germany and compare the results to existing stationary models in terms of Takeuchi's information criterion (TIC). Our results indicate that, for this case study, non-stationary models are more appropriate than stationary ones for the region in Southern Germany. In addition, we investigate theoretical properties of max-stable processes conditional on random covariates. We show that these can result in both asymptotically dependent and asymptotically independent processes. Thus, conditional models are more flexible than classical max-stable models.
翻译:近年来,最高稳定进程参数模型已成为模拟空间极端的流行选择,因为它们是独立和相同分布随机进程的重新定序最大值的无症状限制,独立和相同分布的随机进程。除了极端偏差的少数例外外,现有文献主要侧重于固定依赖结构的模型。在本文中,我们提出一种新的非静止方法,既可用于棕色-Resnick和极端偏差进程,也是最受欢迎的最高稳定进程的两个类别,分别包括相应的变异和相关功能中的共变。我们采用新办法处理德国南部和北部两个区域的极端降水数据,并以Takeuchi的信息标准(TIC)将结果与现有的固定模型进行比较。我们的结果表明,对于本案例研究来说,非静止模型比位于南德地区的固定模型更为合适。此外,我们调查了以随机变异为条件的最多稳定进程的理论特性。我们显示,这些模型可以产生具有灵活性的模型,而不是最传统的模型。因此,最传统的模型是独立的。