Extreme rainfall analysis using different statistical models
It is important to design flood prevention systems such that they can strike a good balance between being able to handle a high enough rainfall, and not being too expensive and over-designed. To know what level of rainfall to design for, statistical analysis of historical rainfall values is done to...
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sg-ntu-dr.10356-1589542022-06-11T13:45:37Z Extreme rainfall analysis using different statistical models Lee, Eugene Xun Wei Qin Xiaosheng School of Civil and Environmental Engineering XSQIN@ntu.edu.sg Engineering::Civil engineering It is important to design flood prevention systems such that they can strike a good balance between being able to handle a high enough rainfall, and not being too expensive and over-designed. To know what level of rainfall to design for, statistical analysis of historical rainfall values is done to make estimations on future rainfall amounts. The first step of analysing rainfall data is to select the most appropriate probability distribution curve. This will provide a better estimation of the return period of an extreme rainfall event. This study aims to identify the rainfall patterns in different regions of Singapore, by fitting daily rainfall data to different probability distributions and comparing their correlation coefficients and root mean square errors. In addition, the temperature patterns were also determined using the same method with maximum daily temperature. Yearly maximum daily rainfall and maximum temperature from three climate stations in Singapore over the last 40 years were used in this report, and MATLAB was used to perform data analysis. It was found that the Generalised Extreme Value distribution was the most appropriate distribution curve in general, with the Log Pearson Type III distribution showing similar results. Bachelor of Engineering (Civil) 2022-06-11T13:45:37Z 2022-06-11T13:45:37Z 2022 Final Year Project (FYP) Lee, E. X. W. (2022). Extreme rainfall analysis using different statistical models. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/158954 https://hdl.handle.net/10356/158954 en WR-16 application/pdf Nanyang Technological University |
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Engineering::Civil engineering Lee, Eugene Xun Wei Extreme rainfall analysis using different statistical models |
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It is important to design flood prevention systems such that they can strike a good balance between being able to handle a high enough rainfall, and not being too expensive and over-designed. To know what level of rainfall to design for, statistical analysis of historical rainfall values is done to make estimations on future rainfall amounts. The first step of analysing rainfall data is to select the most appropriate probability distribution curve. This will provide a better estimation of the return period of an extreme rainfall event.
This study aims to identify the rainfall patterns in different regions of Singapore, by fitting daily rainfall data to different probability distributions and comparing their correlation coefficients and root mean square errors. In addition, the temperature patterns were also determined using the same method with maximum daily temperature. Yearly maximum daily rainfall and maximum temperature from three climate stations in Singapore over the last 40 years were used in this report, and MATLAB was used to perform data analysis. It was found that the Generalised Extreme Value distribution was the most appropriate distribution curve in general, with the Log Pearson Type III distribution showing similar results. |
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Qin Xiaosheng |
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Qin Xiaosheng Lee, Eugene Xun Wei |
format |
Final Year Project |
author |
Lee, Eugene Xun Wei |
author_sort |
Lee, Eugene Xun Wei |
title |
Extreme rainfall analysis using different statistical models |
title_short |
Extreme rainfall analysis using different statistical models |
title_full |
Extreme rainfall analysis using different statistical models |
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Extreme rainfall analysis using different statistical models |
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Extreme rainfall analysis using different statistical models |
title_sort |
extreme rainfall analysis using different statistical models |
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Nanyang Technological University |
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2022 |
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https://hdl.handle.net/10356/158954 |
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1735491172498931712 |