Regional climate change trends and uncertainty analysis using extreme indices: A case study of Hamilton, Canada

This study aims to provide a deeper understanding of the level of uncertainty associated with the development of extreme weather frequency and intensity indices at the local scale. Several different global climate models, downscaling methods, and emission scenarios were used to develop extreme tempe...

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Main Authors: Tara Razavi, Harris Switzman, Altaf Arain, Paulin Coulibaly
Format: Article
Language:English
Published: Elsevier 2016-01-01
Series:Climate Risk Management
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2212096316300171
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spelling doaj-c5a18f0745784f3190eb6d0b280b1c9d2020-11-24T21:05:56ZengElsevierClimate Risk Management2212-09632016-01-0113C436310.1016/j.crm.2016.06.002Regional climate change trends and uncertainty analysis using extreme indices: A case study of Hamilton, CanadaTara Razavi0Harris Switzman1Altaf Arain2Paulin Coulibaly3McMaster University, Department of Civil Engineering, 1280 Main Street West, Hamilton, Ontario L8S 4L7, CanadaOntario Climate Consortium/Toronto and Region Conservation, Toronto, Ontario, CanadaMcMaster University, School of Geography and Earth Sciences, 1280 Main Street West, Hamilton, Ontario L8S 4L7, CanadaMcMaster University, Department of Civil Engineering, 1280 Main Street West, Hamilton, Ontario L8S 4L7, CanadaThis study aims to provide a deeper understanding of the level of uncertainty associated with the development of extreme weather frequency and intensity indices at the local scale. Several different global climate models, downscaling methods, and emission scenarios were used to develop extreme temperature and precipitation indices at the local scale in the Hamilton region, Ontario, Canada. Uncertainty associated with historical and future trends in extreme indices and future climate projections were also analyzed using daily precipitation and temperature time series and their extreme indices, calculated from gridded daily observed climate data along with and projections from dynamically downscaled datasets of CanRCM4 and PRECIS, and the statistically downscaled CIMP5 ensemble. A bias correction technique was applied to all raw daily temperature and precipitation time series prior to calculation of the indices. All climate models predicted increasing trends for extreme temperature indices, maximum 1-day and 5-day precipitation (RX1day and RX5day), total wet day precipitation (PRCPTOT), very heavy precipitation days (R20mm), Summer Days (SU), and Tropical Nights (TR) and decreasing trend for Forest Days (FD) and Ice Days (ID) in 2020s, 2050s, and 2080s compared to present. CanRCM4 model did consistently project values in the upper range of the CMIP5 ensemble while the PRECIS ensemble was more in-line with the CMIP5 mean values. This difference may however be a function of different emission scenarios used.http://www.sciencedirect.com/science/article/pii/S2212096316300171Climate changeUncertaintyTrendDownscalingPrecipitationTemperature
collection DOAJ
language English
format Article
sources DOAJ
author Tara Razavi
Harris Switzman
Altaf Arain
Paulin Coulibaly
spellingShingle Tara Razavi
Harris Switzman
Altaf Arain
Paulin Coulibaly
Regional climate change trends and uncertainty analysis using extreme indices: A case study of Hamilton, Canada
Climate Risk Management
Climate change
Uncertainty
Trend
Downscaling
Precipitation
Temperature
author_facet Tara Razavi
Harris Switzman
Altaf Arain
Paulin Coulibaly
author_sort Tara Razavi
title Regional climate change trends and uncertainty analysis using extreme indices: A case study of Hamilton, Canada
title_short Regional climate change trends and uncertainty analysis using extreme indices: A case study of Hamilton, Canada
title_full Regional climate change trends and uncertainty analysis using extreme indices: A case study of Hamilton, Canada
title_fullStr Regional climate change trends and uncertainty analysis using extreme indices: A case study of Hamilton, Canada
title_full_unstemmed Regional climate change trends and uncertainty analysis using extreme indices: A case study of Hamilton, Canada
title_sort regional climate change trends and uncertainty analysis using extreme indices: a case study of hamilton, canada
publisher Elsevier
series Climate Risk Management
issn 2212-0963
publishDate 2016-01-01
description This study aims to provide a deeper understanding of the level of uncertainty associated with the development of extreme weather frequency and intensity indices at the local scale. Several different global climate models, downscaling methods, and emission scenarios were used to develop extreme temperature and precipitation indices at the local scale in the Hamilton region, Ontario, Canada. Uncertainty associated with historical and future trends in extreme indices and future climate projections were also analyzed using daily precipitation and temperature time series and their extreme indices, calculated from gridded daily observed climate data along with and projections from dynamically downscaled datasets of CanRCM4 and PRECIS, and the statistically downscaled CIMP5 ensemble. A bias correction technique was applied to all raw daily temperature and precipitation time series prior to calculation of the indices. All climate models predicted increasing trends for extreme temperature indices, maximum 1-day and 5-day precipitation (RX1day and RX5day), total wet day precipitation (PRCPTOT), very heavy precipitation days (R20mm), Summer Days (SU), and Tropical Nights (TR) and decreasing trend for Forest Days (FD) and Ice Days (ID) in 2020s, 2050s, and 2080s compared to present. CanRCM4 model did consistently project values in the upper range of the CMIP5 ensemble while the PRECIS ensemble was more in-line with the CMIP5 mean values. This difference may however be a function of different emission scenarios used.
topic Climate change
Uncertainty
Trend
Downscaling
Precipitation
Temperature
url http://www.sciencedirect.com/science/article/pii/S2212096316300171
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