An Advance Ozone Concentration Prediction By Implementing Machine Learning Algorithms In Selangor And Kuala Lumpur Malaysia

FYP 2 Sem 1 2019/2020

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Main Author: Ellysia Jumin
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Published: 2023
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spelling my.uniten.dspace-206602023-05-05T00:17:21Z An Advance Ozone Concentration Prediction By Implementing Machine Learning Algorithms In Selangor And Kuala Lumpur Malaysia Ellysia Jumin Ozone FYP 2 Sem 1 2019/2020 Malaysia is a developing country especially regions in Kuala Lumpur and Selangor. Current generation are indulging the comfort of life from the urbanization. Although it has positive advantageous yet somehow the disadvantageous slowly worsen life on earth through either direct or indirect impact contributing to adverse air quality. High level of tropospheric ozone concentration exceeding prescribed level by the department of environmental is an unfavorable air quality [17]. While ozone formation is a complex chemical reaction affected by many precursors, however in this study few ozone precursors has been identified and supported by past researches. Correlation between ozone and the precursors is based on Pearson Correlation Coefficient. Meteorology data such as wind speed and humidity are highly correlated followed by air quality data like nitrogen oxide, carbon monoxide, nitrogen dioxide and the least correlated Sulphur dioxide with ozone formation. Daytime dataset from 6:00 a.m. – 6:00 p.m. provide better model compared to 24-hour dataset for the best model Boosted Decision Tree Regression. Neural Network Regression with Gaussian Normalizer, Linear Regression and Neural Network with Min-Max Normalizer show over fit model. Among all three station of studies, S2 gives best data for the model development. Best model is successfully identified thus beneficial for any early prevention pertaining community safety in the near future. Further study on technique or by introducing complex input parameters can be applied to improve the model selected. 2023-05-03T15:11:32Z 2023-05-03T15:11:32Z 2019-10 https://irepository.uniten.edu.my/handle/123456789/20660 application/pdf
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
topic Ozone
spellingShingle Ozone
Ellysia Jumin
An Advance Ozone Concentration Prediction By Implementing Machine Learning Algorithms In Selangor And Kuala Lumpur Malaysia
description FYP 2 Sem 1 2019/2020
format
author Ellysia Jumin
author_facet Ellysia Jumin
author_sort Ellysia Jumin
title An Advance Ozone Concentration Prediction By Implementing Machine Learning Algorithms In Selangor And Kuala Lumpur Malaysia
title_short An Advance Ozone Concentration Prediction By Implementing Machine Learning Algorithms In Selangor And Kuala Lumpur Malaysia
title_full An Advance Ozone Concentration Prediction By Implementing Machine Learning Algorithms In Selangor And Kuala Lumpur Malaysia
title_fullStr An Advance Ozone Concentration Prediction By Implementing Machine Learning Algorithms In Selangor And Kuala Lumpur Malaysia
title_full_unstemmed An Advance Ozone Concentration Prediction By Implementing Machine Learning Algorithms In Selangor And Kuala Lumpur Malaysia
title_sort advance ozone concentration prediction by implementing machine learning algorithms in selangor and kuala lumpur malaysia
publishDate 2023
_version_ 1806426586339082240
score 13.211869