Skip to content

A Non-stationary Dependence Model for Extreme European Windstorms

License

Notifications You must be signed in to change notification settings

pcastelain/master-thesis

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

1 Commit
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

A Non-stationary Dependence Model for Extreme European Windstorms

This repository contains R code used in my master thesis. This code implements non-stationary dependence in the generalized r-Pareto framework using locally anisotropic SPDEs. The optimization process uses the recent parallel implementation of Marquardt–Levenberg Algorithm in R.

[ The project is not under development anymore, please fork for functionalities improvement. If you see any bug please submit a pull/merge request.]

Documentation

To understand the approach and the implementation you can read the following documents:

Background

The code implementation is mainly based on the following articles:

  • de Fondeville, R., and Davison, A. C. (2020), “Functional Peaks-over-threshold Analysis,” arXiv:2002.02711 [stat].
  • de Fondeville, R., and Davison, A. C. (2018), “High-dimensional peaks-over-threshold inference,” Biometrika, 105, 575–592. https://doi.org/10.1093/biomet/asy026.
  • Fuglstad, G.-A., Lindgren, F., Simpson, D., and Rue, H. (2015), “Exploring a New Class of Non-stationary Spatial Gaussian Random Fields with Varying Local Anisotropy,” Statistica Sinica, 25, 115–133. https://doi.org/10.5705/ss.2013.106w.
  • Philipps, V., Hejblum, B. P., Prague, M., Commenges, D., and Proust-Lima, C. (2020), “Robust and Efficient Optimization Using a Marquardt-Levenberg Algorithm with R Package marqLevAlg,” arXiv:2009.03840 [stat].

Repository structure

The repository contains the following folders:

  • Documentation - Contains the thesis report and a presentation on the project.
  • Data - Contains windgust data from ERA-Interim model.
  • Code - Contains scripts, functions and a package to perform the inference on the data.
  • Tmp - Temporary data folder, contains intermidiate results.
  • Debug - Default debug directory.

Getting Started

Prerequisites

You will need a few libraries to run the scripts. You can install them with

install.packages(c('sp','rgdal','patchwork','parallel','ggplot2','ggmap','EnvStats','evd','Matrix','marqLevAlg','devtools','grid'))

To perform parallel optimization using the 'marqLevAlg' package we need to package some functions to send them to parallel workers. This is done with a custom package called 'nonStatInf' located in 'Code/nonStatInf' that is rebuild everytime the inference script is run using 'devtools' functionalities.

Scripts and functions

The two main scripts are located in 'Code' and will take you through the inference process.

Most of the functions used are located in 'Code/Functions' and a few of them (that need to be packaged) are located in 'Code/nonStatInf/R'

Pre-computed Results

Some temporary files are already located in the 'Tmp' directory and can be used to save-up on computationally intensive part of the scripts.

Author and acknowledgements

Paul Castelain - paul.castelain@alumni.epfl.ch

The implementation of Fuglstad et al. (2015) was kindly provided by Raphaël de Fondeville.

License

This project is licensed under the MIT License - see the LICENSE.md file for details

About

A Non-stationary Dependence Model for Extreme European Windstorms

Topics

Resources

License

Stars

Watchers

Forks

Languages