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Journal article

Detecting British Columbia coastal rainfall patterns by clustering Gaussian processes

Abstract

Abstract Functional data analysis is a statistical framework where data are assumed to follow some functional form. This method of analysis is commonly applied to time series data, where time, measured continuously or in discrete intervals, serves as the location for a function's value. Gaussian processes are a generalization of the multivariate normal distribution to function space and, in this article, they are used to shed light on coastal rainfall patterns in British Columbia (BC). Specifically, this work addressed the question over how one should carry out an exploratory cluster analysis for the BC, or any similar, coastal rainfall data. An approach is developed for clustering multiple processes observed on a comparable interval, based on how similar their underlying covariance kernel is. This approach provides interesting insights into the BC data, and these insights can be framed in terms of Pacific Ocean temperatures. From one perspective, the results show that clustering annual rainfall can potentially be used to identify extreme weather patterns.

Authors

Paton F; McNicholas PD

Journal

Environmetrics, Vol. 31, No. 8,

Publisher

Wiley

Publication Date

December 1, 2020

DOI

10.1002/env.2631

ISSN

1180-4009

Labels

Sustainable Development Goals (SDG)

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