Prediction Of Pm10 Concentrations Using Extreme Value Distributions (Evd) Classical And Bayesian Approaches

Keadaan zarahan tinggi (jerebu) secara umumnya dikaitkan dengan kehadiran PM10 atau PM2.5. Ia adalah penting untuk memaklumkan kepada umum terhadap tahap PM10 dan kepentingannya supaya langkah-langkah penyesuaian yang lebih berkesan dapat diambil bagi kalangan umum yang terjejas. Kajian ini dijalank...

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Main Author: Ahmat, Hasfazilah
Format: Thesis
Language:English
Published: 2016
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Online Access:http://eprints.usm.my/41717/1/Prediction_Of_Pm10_Concentrations_Using_Extreme_Value_Distributions_%28Evd%29__Classical_And_Bayesian_Approaches.pdf
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spelling my.usm.eprints.41717 http://eprints.usm.my/41717/ Prediction Of Pm10 Concentrations Using Extreme Value Distributions (Evd) Classical And Bayesian Approaches Ahmat, Hasfazilah T Technology TA1-2040 Engineering (General). Civil engineering (General) Keadaan zarahan tinggi (jerebu) secara umumnya dikaitkan dengan kehadiran PM10 atau PM2.5. Ia adalah penting untuk memaklumkan kepada umum terhadap tahap PM10 dan kepentingannya supaya langkah-langkah penyesuaian yang lebih berkesan dapat diambil bagi kalangan umum yang terjejas. Kajian ini dijalankan dengan objektif untuk membandingkan Taburan Nilai Melampau (EVD) menggunakan pendekatan konvensional dan Bayesian dan menggunakan taburan terbaik untuk peramalan kepekatan PM10 pada masa hadapan. Ketika ini, tiada pendekatan Bayesian di dalam kajian kepekatan PM10. Rekod daripada lapan stesen pengawasan di Semenanjung Malaysia telah dipilih untuk tempoh 1 Januari 2000 hingga 31 Disember 2012 selepas analisis awal untuk menilai kewujudan nilai melampau. Taburan dengan pengukuran ralat yang terkecil dan pengukuran kejituan tertinggi di lima stesen pemantauan  Bukit Rambai, Jerantut, Nilai, Pasir Gudang dan Shah Alam adalah taburan menggunakan kaedah Bayesian dengan kebolehjadian GEV dan taburan prior tanpa maklumat menggunakan taburan seragam. Walau bagaimanapun, bagi Klang dan Seberang Jaya taburan EVD GEV disimpulkan sebagai taburan yang terbaik dan EVD dua parameter Weibull adalah taburan terbaik untuk Perai. Pendekatan Bayesian adalah lebih unggul dari kaedah konvensional apabila menggunakan data maksimum harian dan boleh digunakan untuk menilai tahap kepekatan tinggi PM10 untuk penggubal dasar melaksanakan dasar-dasar yang lebih berkesan untuk mewujudkan persekitaran yang lebih bersih. ________________________________________________________________________________________________________________________ High particulate event (haze) is generally associated with presence of PM10 or PM2.5. It is important to make known to public of PM10 level and its importance for more effective adaptation measures among the affected public. This study was conducted with the objectives to compare the best Extreme Value Distributions (EVD) using the conventional and Bayesian approaches and use the best distribution for the prediction of future PM10 exceedances. Currently, there is none on the application of Bayesian approach in the study of PM10 concentrations. Records from eight monitoring stations in the Peninsular Malaysia were selected for the period of 1st January 2000 to 31st December 2012 after preliminary analysis to check for the existance of extreme values. The distribution with the smallest error measures and highest accuracy measures in five of the monitoring stations  Bukit Rambai, Jerantut, Nilai, Pasir Gudang and Shah Alam was the Bayesian GEV likelihood with uniform non-informative prior distribution. However, for Klang and Seberang Jaya the EVD GEV distribution was concluded as the best distribution and EVD two-parameter Weibull was the best distribution for Perai. The Bayesian approach is superior than the conventional method using the daily maximum data and can be used to assess high level of PM10 concentrations for the policy makers to implement effective policies to create cleaner environment. 2016-03 Thesis NonPeerReviewed application/pdf en http://eprints.usm.my/41717/1/Prediction_Of_Pm10_Concentrations_Using_Extreme_Value_Distributions_%28Evd%29__Classical_And_Bayesian_Approaches.pdf Ahmat, Hasfazilah (2016) Prediction Of Pm10 Concentrations Using Extreme Value Distributions (Evd) Classical And Bayesian Approaches. PhD thesis, Universiti Sains Malaysia.
institution Universiti Sains Malaysia
building Hamzah Sendut Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Sains Malaysia
content_source USM Institutional Repository
url_provider http://eprints.usm.my/
language English
topic T Technology
TA1-2040 Engineering (General). Civil engineering (General)
spellingShingle T Technology
TA1-2040 Engineering (General). Civil engineering (General)
Ahmat, Hasfazilah
Prediction Of Pm10 Concentrations Using Extreme Value Distributions (Evd) Classical And Bayesian Approaches
description Keadaan zarahan tinggi (jerebu) secara umumnya dikaitkan dengan kehadiran PM10 atau PM2.5. Ia adalah penting untuk memaklumkan kepada umum terhadap tahap PM10 dan kepentingannya supaya langkah-langkah penyesuaian yang lebih berkesan dapat diambil bagi kalangan umum yang terjejas. Kajian ini dijalankan dengan objektif untuk membandingkan Taburan Nilai Melampau (EVD) menggunakan pendekatan konvensional dan Bayesian dan menggunakan taburan terbaik untuk peramalan kepekatan PM10 pada masa hadapan. Ketika ini, tiada pendekatan Bayesian di dalam kajian kepekatan PM10. Rekod daripada lapan stesen pengawasan di Semenanjung Malaysia telah dipilih untuk tempoh 1 Januari 2000 hingga 31 Disember 2012 selepas analisis awal untuk menilai kewujudan nilai melampau. Taburan dengan pengukuran ralat yang terkecil dan pengukuran kejituan tertinggi di lima stesen pemantauan  Bukit Rambai, Jerantut, Nilai, Pasir Gudang dan Shah Alam adalah taburan menggunakan kaedah Bayesian dengan kebolehjadian GEV dan taburan prior tanpa maklumat menggunakan taburan seragam. Walau bagaimanapun, bagi Klang dan Seberang Jaya taburan EVD GEV disimpulkan sebagai taburan yang terbaik dan EVD dua parameter Weibull adalah taburan terbaik untuk Perai. Pendekatan Bayesian adalah lebih unggul dari kaedah konvensional apabila menggunakan data maksimum harian dan boleh digunakan untuk menilai tahap kepekatan tinggi PM10 untuk penggubal dasar melaksanakan dasar-dasar yang lebih berkesan untuk mewujudkan persekitaran yang lebih bersih. ________________________________________________________________________________________________________________________ High particulate event (haze) is generally associated with presence of PM10 or PM2.5. It is important to make known to public of PM10 level and its importance for more effective adaptation measures among the affected public. This study was conducted with the objectives to compare the best Extreme Value Distributions (EVD) using the conventional and Bayesian approaches and use the best distribution for the prediction of future PM10 exceedances. Currently, there is none on the application of Bayesian approach in the study of PM10 concentrations. Records from eight monitoring stations in the Peninsular Malaysia were selected for the period of 1st January 2000 to 31st December 2012 after preliminary analysis to check for the existance of extreme values. The distribution with the smallest error measures and highest accuracy measures in five of the monitoring stations  Bukit Rambai, Jerantut, Nilai, Pasir Gudang and Shah Alam was the Bayesian GEV likelihood with uniform non-informative prior distribution. However, for Klang and Seberang Jaya the EVD GEV distribution was concluded as the best distribution and EVD two-parameter Weibull was the best distribution for Perai. The Bayesian approach is superior than the conventional method using the daily maximum data and can be used to assess high level of PM10 concentrations for the policy makers to implement effective policies to create cleaner environment.
format Thesis
author Ahmat, Hasfazilah
author_facet Ahmat, Hasfazilah
author_sort Ahmat, Hasfazilah
title Prediction Of Pm10 Concentrations Using Extreme Value Distributions (Evd) Classical And Bayesian Approaches
title_short Prediction Of Pm10 Concentrations Using Extreme Value Distributions (Evd) Classical And Bayesian Approaches
title_full Prediction Of Pm10 Concentrations Using Extreme Value Distributions (Evd) Classical And Bayesian Approaches
title_fullStr Prediction Of Pm10 Concentrations Using Extreme Value Distributions (Evd) Classical And Bayesian Approaches
title_full_unstemmed Prediction Of Pm10 Concentrations Using Extreme Value Distributions (Evd) Classical And Bayesian Approaches
title_sort prediction of pm10 concentrations using extreme value distributions (evd) classical and bayesian approaches
publishDate 2016
url http://eprints.usm.my/41717/1/Prediction_Of_Pm10_Concentrations_Using_Extreme_Value_Distributions_%28Evd%29__Classical_And_Bayesian_Approaches.pdf
http://eprints.usm.my/41717/
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score 13.160551