A generalized Spatio-Temporal Threshold Clustering method for identification of extreme event patterns

<p>Extreme weather and climate events such as floods, droughts, and heat waves can cause extensive societal damages. While various statistical and climate models have been developed for the purpose of simulating extremes, a consistent definition of extreme events is still lacking. Furthermore...

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Main Authors: V. Kholodovsky, X.-Z. Liang
Format: Article
Language:English
Published: Copernicus Publications 2021-04-01
Series:Advances in Statistical Climatology, Meteorology and Oceanography
Online Access:https://ascmo.copernicus.org/articles/7/35/2021/ascmo-7-35-2021.pdf
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spelling doaj-020685b0f75c41cebcf0591dfdae6ce02021-04-21T06:08:37ZengCopernicus PublicationsAdvances in Statistical Climatology, Meteorology and Oceanography2364-35792364-35872021-04-017355210.5194/ascmo-7-35-2021A generalized Spatio-Temporal Threshold Clustering method for identification of extreme event patternsV. Kholodovsky0X.-Z. Liang1X.-Z. Liang2Department of Atmospheric and Oceanic Science, University of Maryland, College Park, USADepartment of Atmospheric and Oceanic Science, University of Maryland, College Park, USAEarth System Science Interdisciplinary Center, University of Maryland, College Park, USA<p>Extreme weather and climate events such as floods, droughts, and heat waves can cause extensive societal damages. While various statistical and climate models have been developed for the purpose of simulating extremes, a consistent definition of extreme events is still lacking. Furthermore, to better assess the performance of the climate models, a variety of spatial forecast verification measures have been developed. However, in most cases, the spatial verification measures that are widely used to compare mean states do not have sufficient theoretical justification to benchmark extreme events. In order to alleviate inconsistencies when defining extreme events within different scientific communities, we propose a new generalized Spatio-Temporal Threshold Clustering method for the identification of extreme event episodes, which uses machine learning techniques to couple existing pattern recognition indices with high or low threshold choices. The method consists of five main steps: (1) construction of essential field quantities; (2) dimension reduction; (3) spatial domain mapping; (4) time series clustering; and (5) threshold selection. We develop and apply this method using a gridded daily precipitation dataset derived from rain gauge stations over the contiguous United States. We observe changes in the distribution of conditional frequency of extreme precipitation from large-scale well-connected spatial patterns to smaller-scale more isolated rainfall clusters, possibly leading to more localized droughts and heat waves, especially during the summer months. The proposed method automates the threshold selection process through a clustering algorithm and can be directly applicable in conjunction with modeling and spatial forecast verification of extremes. Additionally, it allows for the identification of synoptic-scale spatial patterns that can be directly traced to the individual extreme episodes, and it offers users the flexibility to select an extreme threshold that is linked to the desired geometrical properties. The approach can be applied to broad scientific disciplines.</p>https://ascmo.copernicus.org/articles/7/35/2021/ascmo-7-35-2021.pdf
collection DOAJ
language English
format Article
sources DOAJ
author V. Kholodovsky
X.-Z. Liang
X.-Z. Liang
spellingShingle V. Kholodovsky
X.-Z. Liang
X.-Z. Liang
A generalized Spatio-Temporal Threshold Clustering method for identification of extreme event patterns
Advances in Statistical Climatology, Meteorology and Oceanography
author_facet V. Kholodovsky
X.-Z. Liang
X.-Z. Liang
author_sort V. Kholodovsky
title A generalized Spatio-Temporal Threshold Clustering method for identification of extreme event patterns
title_short A generalized Spatio-Temporal Threshold Clustering method for identification of extreme event patterns
title_full A generalized Spatio-Temporal Threshold Clustering method for identification of extreme event patterns
title_fullStr A generalized Spatio-Temporal Threshold Clustering method for identification of extreme event patterns
title_full_unstemmed A generalized Spatio-Temporal Threshold Clustering method for identification of extreme event patterns
title_sort generalized spatio-temporal threshold clustering method for identification of extreme event patterns
publisher Copernicus Publications
series Advances in Statistical Climatology, Meteorology and Oceanography
issn 2364-3579
2364-3587
publishDate 2021-04-01
description <p>Extreme weather and climate events such as floods, droughts, and heat waves can cause extensive societal damages. While various statistical and climate models have been developed for the purpose of simulating extremes, a consistent definition of extreme events is still lacking. Furthermore, to better assess the performance of the climate models, a variety of spatial forecast verification measures have been developed. However, in most cases, the spatial verification measures that are widely used to compare mean states do not have sufficient theoretical justification to benchmark extreme events. In order to alleviate inconsistencies when defining extreme events within different scientific communities, we propose a new generalized Spatio-Temporal Threshold Clustering method for the identification of extreme event episodes, which uses machine learning techniques to couple existing pattern recognition indices with high or low threshold choices. The method consists of five main steps: (1) construction of essential field quantities; (2) dimension reduction; (3) spatial domain mapping; (4) time series clustering; and (5) threshold selection. We develop and apply this method using a gridded daily precipitation dataset derived from rain gauge stations over the contiguous United States. We observe changes in the distribution of conditional frequency of extreme precipitation from large-scale well-connected spatial patterns to smaller-scale more isolated rainfall clusters, possibly leading to more localized droughts and heat waves, especially during the summer months. The proposed method automates the threshold selection process through a clustering algorithm and can be directly applicable in conjunction with modeling and spatial forecast verification of extremes. Additionally, it allows for the identification of synoptic-scale spatial patterns that can be directly traced to the individual extreme episodes, and it offers users the flexibility to select an extreme threshold that is linked to the desired geometrical properties. The approach can be applied to broad scientific disciplines.</p>
url https://ascmo.copernicus.org/articles/7/35/2021/ascmo-7-35-2021.pdf
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