Statistically downscaling of climate change

As global warming and increasing emission of greenhouse gases have gained much concern from scientists around the world, studies on climate impact is important. Global Climate Models (GCMs) is the most advanced technology and models that are widely used to facilitate their study on climate change. H...

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Main Author: Tang, Xin Ning
Other Authors: Qin Xiaosheng
Format: Final Year Project
Language:English
Published: 2016
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Online Access:http://hdl.handle.net/10356/67249
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-672492023-03-03T16:50:09Z Statistically downscaling of climate change Tang, Xin Ning Qin Xiaosheng School of Civil and Environmental Engineering DRNTU::Engineering As global warming and increasing emission of greenhouse gases have gained much concern from scientists around the world, studies on climate impact is important. Global Climate Models (GCMs) is the most advanced technology and models that are widely used to facilitate their study on climate change. However, GCMs usually have a coarse spatial resolution which is ill in providing accurate regional climate change information. In order to overcome this obstacles, scientists have introduced numerous downscaling techniques to refine the coarse resolution GCMs to obtain local climate information. Amongst the downscaling techniques, a multiple regression-based model namely Statistical Downscaling Model (SDSM) has gained its popularity around the world in downscaling weather series. In this study, SDSM was applied to downscale rainfall and temperature at Singapore Changi Airport, provided observed weather data from weather station. The study included the evaluation of model calibration and validation in SDSM with National Centers for Environmental Prediction (NCEP) re-analysis predictor variables. Then, predictions of future rainfall and temperature in SDSM with CGCM3 predictors corresponding to environment scenario A2 were carried out. The study results shows that SDSM is capable in model calibration and validation stages. However, it is relatively incompetent in projection for future weather series especially for conditional models like rainfall. There is a significant increment or decrement trend for several months. Bachelor of Engineering (Civil) 2016-05-13T04:01:26Z 2016-05-13T04:01:26Z 2016 Final Year Project (FYP) http://hdl.handle.net/10356/67249 en Nanyang Technological University 97 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering
spellingShingle DRNTU::Engineering
Tang, Xin Ning
Statistically downscaling of climate change
description As global warming and increasing emission of greenhouse gases have gained much concern from scientists around the world, studies on climate impact is important. Global Climate Models (GCMs) is the most advanced technology and models that are widely used to facilitate their study on climate change. However, GCMs usually have a coarse spatial resolution which is ill in providing accurate regional climate change information. In order to overcome this obstacles, scientists have introduced numerous downscaling techniques to refine the coarse resolution GCMs to obtain local climate information. Amongst the downscaling techniques, a multiple regression-based model namely Statistical Downscaling Model (SDSM) has gained its popularity around the world in downscaling weather series. In this study, SDSM was applied to downscale rainfall and temperature at Singapore Changi Airport, provided observed weather data from weather station. The study included the evaluation of model calibration and validation in SDSM with National Centers for Environmental Prediction (NCEP) re-analysis predictor variables. Then, predictions of future rainfall and temperature in SDSM with CGCM3 predictors corresponding to environment scenario A2 were carried out. The study results shows that SDSM is capable in model calibration and validation stages. However, it is relatively incompetent in projection for future weather series especially for conditional models like rainfall. There is a significant increment or decrement trend for several months.
author2 Qin Xiaosheng
author_facet Qin Xiaosheng
Tang, Xin Ning
format Final Year Project
author Tang, Xin Ning
author_sort Tang, Xin Ning
title Statistically downscaling of climate change
title_short Statistically downscaling of climate change
title_full Statistically downscaling of climate change
title_fullStr Statistically downscaling of climate change
title_full_unstemmed Statistically downscaling of climate change
title_sort statistically downscaling of climate change
publishDate 2016
url http://hdl.handle.net/10356/67249
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