Evaluation of single missing value imputation approaches for incomplete air pollution data in Malaysia / Wan Suhailah Wan Mohamed Fauzi, Zuraira Libasin and Ahmad Zia ul-Saufie

This research is mainly focused on environmental scope, which is air pollution. İt is about evaluation of single missing value imputation approaches for incomplete air pollution data in Malaysia. Single missing value imputation means the replacement of blank space in monitoring dataset from chosen D...

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Main Authors: Wan Mohamed Fauzi, Wan Suhailah, Libasin, Zuraira, Mohamad Japeri, Ahmad Zia Ul-Saufie
Format: Conference or Workshop Item
Language:English
Published: 2020
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Online Access:https://ir.uitm.edu.my/id/eprint/82889/1/82889.pdf
https://ir.uitm.edu.my/id/eprint/82889/
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Institution: Universiti Teknologi Mara
Language: English
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spelling my.uitm.ir.828892023-08-18T06:33:27Z https://ir.uitm.edu.my/id/eprint/82889/ Evaluation of single missing value imputation approaches for incomplete air pollution data in Malaysia / Wan Suhailah Wan Mohamed Fauzi, Zuraira Libasin and Ahmad Zia ul-Saufie Wan Mohamed Fauzi, Wan Suhailah Libasin, Zuraira Mohamad Japeri, Ahmad Zia Ul-Saufie Air pollution and its control Malaysia This research is mainly focused on environmental scope, which is air pollution. İt is about evaluation of single missing value imputation approaches for incomplete air pollution data in Malaysia. Single missing value imputation means the replacement of blank space in monitoring dataset from chosen DOE monitoring station with calculated value from the best method for long gap hours. The variable that mainly being monitor is PM10. This variable is the primary source of air pollution release from industrial and transporation of everyday activities. Single imputation method focused in this research is mean imputation method. Furthermore, this methd will be tested on the dataset from Tanjung Malim monitoring station by fitting with many performance indicators such as MAE, RSME, R2, PA and IA. The result will be compared with previous study whether it is the best used for long gap hour data. Four stages need to be followed in order to complete this research. The steps are data acquisitions, characteristic analyzing of missing value, single imputation approach and lastly, verification of approach and suggestion of the best method. The four existing imputation method for missing data implemented in this research are series mean method, mean of nearby points, linear trend and linear interpolation. The finding from this research shows that interpolation method is the best method to be applied for particulate matter missing data replacement with least mean absolute error and the better in performance accuracy. 2020 Conference or Workshop Item PeerReviewed text en https://ir.uitm.edu.my/id/eprint/82889/1/82889.pdf Evaluation of single missing value imputation approaches for incomplete air pollution data in Malaysia / Wan Suhailah Wan Mohamed Fauzi, Zuraira Libasin and Ahmad Zia ul-Saufie. (2020) In: UNSPECIFIED.
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Air pollution and its control
Malaysia
spellingShingle Air pollution and its control
Malaysia
Wan Mohamed Fauzi, Wan Suhailah
Libasin, Zuraira
Mohamad Japeri, Ahmad Zia Ul-Saufie
Evaluation of single missing value imputation approaches for incomplete air pollution data in Malaysia / Wan Suhailah Wan Mohamed Fauzi, Zuraira Libasin and Ahmad Zia ul-Saufie
description This research is mainly focused on environmental scope, which is air pollution. İt is about evaluation of single missing value imputation approaches for incomplete air pollution data in Malaysia. Single missing value imputation means the replacement of blank space in monitoring dataset from chosen DOE monitoring station with calculated value from the best method for long gap hours. The variable that mainly being monitor is PM10. This variable is the primary source of air pollution release from industrial and transporation of everyday activities. Single imputation method focused in this research is mean imputation method. Furthermore, this methd will be tested on the dataset from Tanjung Malim monitoring station by fitting with many performance indicators such as MAE, RSME, R2, PA and IA. The result will be compared with previous study whether it is the best used for long gap hour data. Four stages need to be followed in order to complete this research. The steps are data acquisitions, characteristic analyzing of missing value, single imputation approach and lastly, verification of approach and suggestion of the best method. The four existing imputation method for missing data implemented in this research are series mean method, mean of nearby points, linear trend and linear interpolation. The finding from this research shows that interpolation method is the best method to be applied for particulate matter missing data replacement with least mean absolute error and the better in performance accuracy.
format Conference or Workshop Item
author Wan Mohamed Fauzi, Wan Suhailah
Libasin, Zuraira
Mohamad Japeri, Ahmad Zia Ul-Saufie
author_facet Wan Mohamed Fauzi, Wan Suhailah
Libasin, Zuraira
Mohamad Japeri, Ahmad Zia Ul-Saufie
author_sort Wan Mohamed Fauzi, Wan Suhailah
title Evaluation of single missing value imputation approaches for incomplete air pollution data in Malaysia / Wan Suhailah Wan Mohamed Fauzi, Zuraira Libasin and Ahmad Zia ul-Saufie
title_short Evaluation of single missing value imputation approaches for incomplete air pollution data in Malaysia / Wan Suhailah Wan Mohamed Fauzi, Zuraira Libasin and Ahmad Zia ul-Saufie
title_full Evaluation of single missing value imputation approaches for incomplete air pollution data in Malaysia / Wan Suhailah Wan Mohamed Fauzi, Zuraira Libasin and Ahmad Zia ul-Saufie
title_fullStr Evaluation of single missing value imputation approaches for incomplete air pollution data in Malaysia / Wan Suhailah Wan Mohamed Fauzi, Zuraira Libasin and Ahmad Zia ul-Saufie
title_full_unstemmed Evaluation of single missing value imputation approaches for incomplete air pollution data in Malaysia / Wan Suhailah Wan Mohamed Fauzi, Zuraira Libasin and Ahmad Zia ul-Saufie
title_sort evaluation of single missing value imputation approaches for incomplete air pollution data in malaysia / wan suhailah wan mohamed fauzi, zuraira libasin and ahmad zia ul-saufie
publishDate 2020
url https://ir.uitm.edu.my/id/eprint/82889/1/82889.pdf
https://ir.uitm.edu.my/id/eprint/82889/
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