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Main Authors: Campbell, Ryan, Grolmusova, Kristina, Kakampakou, Lydia, Lee, Jeongjin
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.18149
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author Campbell, Ryan
Grolmusova, Kristina
Kakampakou, Lydia
Lee, Jeongjin
author_facet Campbell, Ryan
Grolmusova, Kristina
Kakampakou, Lydia
Lee, Jeongjin
contents Motivated by the EVA 2025 Data Challenge, we address the problem of predicting extreme rainfall in the eastern United States using data from a large ensemble of climate model runs. The challenge focuses on three quantities of interest related to the spatial extent and/or temporal duration of extreme rainfall, each requiring extrapolation. To tackle these questions, we adopt the recently developed geometric framework for extreme-value analysis, offering substantial flexibility for capturing complex extremal dependence structures and enabling extrapolation across the entire multivariate tail. In this work, we focus on the spatial geometric framework for analysing the spatial extent and consider a sampling procedure that retains the temporal information in the data, thereby enabling estimation of the duration of extreme rainfall events. We also account for the non-stationary behaviour, arising from topographical and seasonal effects, that commonly characterises extreme weather events in both space and time. Using diagnostic metrics, we demonstrate that the proposed model is appropriate for inferring extreme events on this dataset and apply it to estimate target quantities of interest.
format Preprint
id arxiv_https___arxiv_org_abs_2603_18149
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Analysing Extreme Rainfall via a Geometric Framework
Campbell, Ryan
Grolmusova, Kristina
Kakampakou, Lydia
Lee, Jeongjin
Methodology
Motivated by the EVA 2025 Data Challenge, we address the problem of predicting extreme rainfall in the eastern United States using data from a large ensemble of climate model runs. The challenge focuses on three quantities of interest related to the spatial extent and/or temporal duration of extreme rainfall, each requiring extrapolation. To tackle these questions, we adopt the recently developed geometric framework for extreme-value analysis, offering substantial flexibility for capturing complex extremal dependence structures and enabling extrapolation across the entire multivariate tail. In this work, we focus on the spatial geometric framework for analysing the spatial extent and consider a sampling procedure that retains the temporal information in the data, thereby enabling estimation of the duration of extreme rainfall events. We also account for the non-stationary behaviour, arising from topographical and seasonal effects, that commonly characterises extreme weather events in both space and time. Using diagnostic metrics, we demonstrate that the proposed model is appropriate for inferring extreme events on this dataset and apply it to estimate target quantities of interest.
title Analysing Extreme Rainfall via a Geometric Framework
topic Methodology
url https://arxiv.org/abs/2603.18149