Modelling non-stationary extremes of storm severity: a tale of two approaches

05/27/2020
by   Evandro Konzen, et al.
0

Models for extreme values accommodating non-stationarity have been amply studied and evaluated from a parametric perspective. Whilst these models are flexible, in the sense that many parametrizations can be explored, they assume an asymptotic distribution as the proper fit to observations from the tail. This paper provides a holistic approach to the modelling of non-stationary extreme events by iterating between parametric and semi-parametric approaches, thus providing an automatic procedure to estimate a moving threshold with respect to a periodic covariate in circular data. By exploiting advantages and mitigating pitfalls of each approach, a unified framework is provided as the backbone for estimating extreme quantiles, including that of the T-year level and finite right endpoint, which seeks to optimize bias-variance trade-off. To this end, two tuning parameters related to the spread of peaks over threshold are introduced. We provide guidance for applying the methodology to the directional modelling of hindcast storm peak significant wave heights recorded in the North Sea. Although the theoretical underpinning for adaptation of well-known estimators in statistics of extremes to circular data is given in some detail, the derivation of their asymptotic properties lays beyond the scope of this paper. A bootstrap technique is implemented for obtaining direction-driven confidence bounds in such a way as to account for the relevant boundary restrictions with minimal sensitivity to initial point. This provides a template for other applications where the analysis of directional extremes is of importance.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/31/2021

A flexible, semi-parametric, cluster-based approach for predicting wildfire extremes across the contiguous United States

This paper details the methodology proposed by the Lancaster Ducks team ...
research
01/11/2022

A penalised piecewise-linear model for non-stationary extreme value analysis of peaks over threshold

Metocean extremes often vary systematically with covariates such as dire...
research
12/09/2018

Constant versus Covariate Dependent Threshold in the Peaks-Over Threshold Method

The Peaks-Over Threshold is a fundamental method in the estimation of ra...
research
10/02/2017

Local likelihood estimation of complex tail dependence structures in high dimensions, applied to U.S. precipitation extremes

In order to model the complex non-stationary dependence structure of pre...
research
01/30/2018

Change point analysis in non-stationary processes - a mass excess approach

This paper considers the problem of testing if a sequence of means (μ_t)...
research
05/22/2020

Extreme Learning and Regression for Objects Moving in Non-Stationary Spatial Environments

We study supervised learning by extreme learning machines and regression...
research
05/13/2021

Threshold selection for wave heights: asymptotic methods based on L-moments

Two automatic threshold selection (TS) methods for Extreme Value analysi...

Please sign up or login with your details

Forgot password? Click here to reset