Non-stationary max-stable models with an application to heavy rainfall data

12/22/2022
by   Carolin Forster, et al.
0

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.

READ FULL TEXT

page 13

page 16

research
07/12/2019

A Regionalisation Approach for Rainfall based on Extremal Dependence

To mitigate the risk posed by extreme rainfall events, we require statis...
research
02/12/2021

Multivariate Max-Stable Processes and Homogeneous Functionals

Multivariate max-stable processes are important for both theoretical inv...
research
11/06/2017

Modelling non-stationary extreme precipitation with max-stable processes and multi-dimensional scaling

Modeling the joint distribution of extreme weather events in several loc...
research
06/13/2023

Regionalization approaches for the spatial analysis of extremal dependence

The impact of an extreme climate event depends strongly on its geographi...
research
10/16/2019

Representations of Hermite processes using local time of intersecting stationary stable regenerative sets

Hermite processes are a class of self-similar processes with stationary ...
research
03/12/2020

Spatial Modeling of Heavy Precipitation by Coupling Weather Station Recordings and Ensemble Forecasts with Max-Stable Processes

Due to complex physical phenomena, the distribution of heavy rainfall ev...
research
12/14/2022

A Deep Learning Synthetic Likelihood Approximation of a Non-stationary Spatial Model for Extreme Streamflow Forecasting

Extreme streamflow is a key indicator of flood risk, and quantifying the...

Please sign up or login with your details

Forgot password? Click here to reset