Compound Extremes in Hydroclimatology: A Review

Extreme events, such as drought, heat wave, cold wave, flood, and extreme rainfall, have received increasing attention in recent decades due to their wide impacts on society and ecosystems. Meanwhile, the compound extremes (i.e., the simultaneous or sequential occurrence of multiple extremes at sing...

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Main Authors: Zengchao Hao, Vijay P. Singh, Fanghua Hao
Format: Article
Language:English
Published: MDPI AG 2018-06-01
Series:Water
Subjects:
Online Access:http://www.mdpi.com/2073-4441/10/6/718
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spelling doaj-a28e7d9e73ff461ea4d4443829a1ea3b2020-11-25T01:48:36ZengMDPI AGWater2073-44412018-06-0110671810.3390/w10060718w10060718Compound Extremes in Hydroclimatology: A ReviewZengchao Hao0Vijay P. Singh1Fanghua Hao2Green Development Institute, College of Water Sciences, Beijing Normal University, Beijing 100875, ChinaDepartment of Biological and Agricultural Engineering and Zachry Department of Civil Engineering, Texas A&M University, College Station, TX 77843-2117, USAGreen Development Institute, College of Water Sciences, Beijing Normal University, Beijing 100875, ChinaExtreme events, such as drought, heat wave, cold wave, flood, and extreme rainfall, have received increasing attention in recent decades due to their wide impacts on society and ecosystems. Meanwhile, the compound extremes (i.e., the simultaneous or sequential occurrence of multiple extremes at single or multiple locations) may exert even larger impacts on society or the environment. Thus, the past decade has witnessed an increasing interest in compound extremes. In this study, we review different approaches for the statistical characterization and modeling of compound extremes in hydroclimatology, including the empirical approach, multivariate distribution, the indicator approach, quantile regression, and the Markov Chain model. The limitation in the data availability to represent extremes and lack of flexibility in modeling asymmetric/tail dependences of multiple variables/events are among the challenges in the statistical characterization and modeling of compound extremes. Major future research endeavors include probing compound extremes through both observations with improved data availability (and statistical model development) and model simulations with improved representation of the physical processes to mitigate the impacts of compound extremes.http://www.mdpi.com/2073-4441/10/6/718compound extremesclimate changemultivariate distributionquantile regressionindicator
collection DOAJ
language English
format Article
sources DOAJ
author Zengchao Hao
Vijay P. Singh
Fanghua Hao
spellingShingle Zengchao Hao
Vijay P. Singh
Fanghua Hao
Compound Extremes in Hydroclimatology: A Review
Water
compound extremes
climate change
multivariate distribution
quantile regression
indicator
author_facet Zengchao Hao
Vijay P. Singh
Fanghua Hao
author_sort Zengchao Hao
title Compound Extremes in Hydroclimatology: A Review
title_short Compound Extremes in Hydroclimatology: A Review
title_full Compound Extremes in Hydroclimatology: A Review
title_fullStr Compound Extremes in Hydroclimatology: A Review
title_full_unstemmed Compound Extremes in Hydroclimatology: A Review
title_sort compound extremes in hydroclimatology: a review
publisher MDPI AG
series Water
issn 2073-4441
publishDate 2018-06-01
description Extreme events, such as drought, heat wave, cold wave, flood, and extreme rainfall, have received increasing attention in recent decades due to their wide impacts on society and ecosystems. Meanwhile, the compound extremes (i.e., the simultaneous or sequential occurrence of multiple extremes at single or multiple locations) may exert even larger impacts on society or the environment. Thus, the past decade has witnessed an increasing interest in compound extremes. In this study, we review different approaches for the statistical characterization and modeling of compound extremes in hydroclimatology, including the empirical approach, multivariate distribution, the indicator approach, quantile regression, and the Markov Chain model. The limitation in the data availability to represent extremes and lack of flexibility in modeling asymmetric/tail dependences of multiple variables/events are among the challenges in the statistical characterization and modeling of compound extremes. Major future research endeavors include probing compound extremes through both observations with improved data availability (and statistical model development) and model simulations with improved representation of the physical processes to mitigate the impacts of compound extremes.
topic compound extremes
climate change
multivariate distribution
quantile regression
indicator
url http://www.mdpi.com/2073-4441/10/6/718
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