Skill of precipitation projectionin the Chao Phraya river Basinby multi-model ensemble CMIP3-CMIP5

Weather and climate extremes are of many types and they result in various physical and environmental impacts. The massive flooding and inundation in the Chao Phraya River basin, in Thailand, caused serious damage to various activities for a prolonged period of time. The consequence of 2011 great flo...

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Main Author: S. Supharatid
Format: Article
Language:English
Published: Elsevier 2016-06-01
Series:Weather and Climate Extremes
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2212094716300111
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author S. Supharatid
author_facet S. Supharatid
author_sort S. Supharatid
collection DOAJ
description Weather and climate extremes are of many types and they result in various physical and environmental impacts. The massive flooding and inundation in the Chao Phraya River basin, in Thailand, caused serious damage to various activities for a prolonged period of time. The consequence of 2011 great flood was a total of 815 deaths and has been recorded as the most economic damage (US$45.7 billion). The present study analyses the skill of the two generations of global climate model ensembles, CMIP3 and CMIP5, in projection of precipitation. We firstly examine the flood behavior in 2011 and perform statistical downscaling for 9 GCMs of CMIP3 and CMIP5. The observed precipitation data from 83 stations around the country were interpolated to grid data using various methods. The Inverse Distance Weighted (IDW), after performing cross-validation, is found to give the best statistical performance and is used for GCMs assessment. Both CMIP3 and CMIP5 models underestimate the mean precipitation in the southwestern and eastern regions for historical climatology (1980–1999). The CMIP3 and CMIP5 MME show similar pattern but different magnitudes (CMIP5 gives higher mean precipitation than CMIP3). The majority of CMIP3 and CMIP5 models overestimate the dry spell and the peak precipitation. The precipitation projection was downscaled by the distribution mapping for the near-future (2010–2039), the mid-future (2040–2069) and the far-future (2070–2099). Both model generations perform reasonably well in capturing the amplitude and phasing of past mean annual precipitation. The correlation coefficient from all models lies between 0.6 and 0.9, implying reasonable simulation. The summer monsoon precipitation has an increase trend (from low to high GHG emissions), of 7–32% in October, 6–28% in September, and 8–20% in September for Bhumibol reservoir, Sirikit reservoir, and Nakhon Sawan, respectively. A possibility of increase in hydrological extreme flood in the wet season may be indicated by these findings.
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spelling doaj.art-f6b0bf4953314ecc85706261587b7e262022-12-22T00:39:40ZengElsevierWeather and Climate Extremes2212-09472016-06-0112C11410.1016/j.wace.2016.03.001Skill of precipitation projectionin the Chao Phraya river Basinby multi-model ensemble CMIP3-CMIP5S. SupharatidWeather and climate extremes are of many types and they result in various physical and environmental impacts. The massive flooding and inundation in the Chao Phraya River basin, in Thailand, caused serious damage to various activities for a prolonged period of time. The consequence of 2011 great flood was a total of 815 deaths and has been recorded as the most economic damage (US$45.7 billion). The present study analyses the skill of the two generations of global climate model ensembles, CMIP3 and CMIP5, in projection of precipitation. We firstly examine the flood behavior in 2011 and perform statistical downscaling for 9 GCMs of CMIP3 and CMIP5. The observed precipitation data from 83 stations around the country were interpolated to grid data using various methods. The Inverse Distance Weighted (IDW), after performing cross-validation, is found to give the best statistical performance and is used for GCMs assessment. Both CMIP3 and CMIP5 models underestimate the mean precipitation in the southwestern and eastern regions for historical climatology (1980–1999). The CMIP3 and CMIP5 MME show similar pattern but different magnitudes (CMIP5 gives higher mean precipitation than CMIP3). The majority of CMIP3 and CMIP5 models overestimate the dry spell and the peak precipitation. The precipitation projection was downscaled by the distribution mapping for the near-future (2010–2039), the mid-future (2040–2069) and the far-future (2070–2099). Both model generations perform reasonably well in capturing the amplitude and phasing of past mean annual precipitation. The correlation coefficient from all models lies between 0.6 and 0.9, implying reasonable simulation. The summer monsoon precipitation has an increase trend (from low to high GHG emissions), of 7–32% in October, 6–28% in September, and 8–20% in September for Bhumibol reservoir, Sirikit reservoir, and Nakhon Sawan, respectively. A possibility of increase in hydrological extreme flood in the wet season may be indicated by these findings.http://www.sciencedirect.com/science/article/pii/S2212094716300111The 2011 great floodCMIP3CMIP5Climate downscalingDistribution mapping
spellingShingle S. Supharatid
Skill of precipitation projectionin the Chao Phraya river Basinby multi-model ensemble CMIP3-CMIP5
Weather and Climate Extremes
The 2011 great flood
CMIP3
CMIP5
Climate downscaling
Distribution mapping
title Skill of precipitation projectionin the Chao Phraya river Basinby multi-model ensemble CMIP3-CMIP5
title_full Skill of precipitation projectionin the Chao Phraya river Basinby multi-model ensemble CMIP3-CMIP5
title_fullStr Skill of precipitation projectionin the Chao Phraya river Basinby multi-model ensemble CMIP3-CMIP5
title_full_unstemmed Skill of precipitation projectionin the Chao Phraya river Basinby multi-model ensemble CMIP3-CMIP5
title_short Skill of precipitation projectionin the Chao Phraya river Basinby multi-model ensemble CMIP3-CMIP5
title_sort skill of precipitation projectionin the chao phraya river basinby multi model ensemble cmip3 cmip5
topic The 2011 great flood
CMIP3
CMIP5
Climate downscaling
Distribution mapping
url http://www.sciencedirect.com/science/article/pii/S2212094716300111
work_keys_str_mv AT ssupharatid skillofprecipitationprojectioninthechaophrayariverbasinbymultimodelensemblecmip3cmip5