Forecasting of Air Pollution Index PM2.5 Using Support Vector Machine(SVM)
Air pollution is a current monitored problem in areas with high population density such as big cities. Many regions in Malaysia are facing extreme air quality issues. This situation is caused by several factors such as human behavior, environmental awareness and technological development. Accessing...
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Faculty of Computer and Mathematical Sciences, Universiti Teknologi MARA Perlis
2020-10-01
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doaj-0b600b0db3e74bfb8530d31c4da409a62021-02-01T02:31:20ZengFaculty of Computer and Mathematical Sciences, Universiti Teknologi MARA PerlisJournal of Computing Research and Innovation2600-87932020-10-01534353148Forecasting of Air Pollution Index PM2.5 Using Support Vector Machine(SVM)Nor Hayati Binti Shafii0Rohana Alias1Nur Fithrinnissaa Zamani2Nur Fatihah Fauzi3MrsUniversiti Teknologi MARA PerlisUniversiti Teknologi MARA PerlisUniversiti Teknologi MARA PerlisAir pollution is a current monitored problem in areas with high population density such as big cities. Many regions in Malaysia are facing extreme air quality issues. This situation is caused by several factors such as human behavior, environmental awareness and technological development. Accessing the air pollution index (API) accurately is very important to control its impact on environmental and human health. The work presented here aims to access air pollution index of PM2.5 using Support Vector Machine (SVM) and to compare the accuracy of four different types of the kernel function in Support Vector Machine (SVM). The data used is provided by the Department of Environment (DOE) and it is recorded from two Continuous Air Quality Monitoring Stations (CAQM) located at Tanah Merah and Kota Bharu. The results are analyzed using mean absolute error (MAE) and root mean squared error (RMSE). It is found that the proposed model using Radial Basis Function (RBF) with its parameters of cost and gamma equal to 100 can effectively and accurately forecast the air pollution index with Mean Absolute Error (MAE) and Root Mean Squared Error (RMSE) of 0.03868583 and 0.06251793 respectively for API in Kota Bharu and 0.03857308 (MAE) and 0.05895648 (RMSE) for API in Tanah Merah.https://crinn.conferencehunter.com/index.php/jcrinn/article/view/149air pollution indexpollution forecastingforecastingregressiontime-seriessvmsupport vector machine |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Nor Hayati Binti Shafii Rohana Alias Nur Fithrinnissaa Zamani Nur Fatihah Fauzi |
spellingShingle |
Nor Hayati Binti Shafii Rohana Alias Nur Fithrinnissaa Zamani Nur Fatihah Fauzi Forecasting of Air Pollution Index PM2.5 Using Support Vector Machine(SVM) Journal of Computing Research and Innovation air pollution index pollution forecasting forecasting regression time-series svm support vector machine |
author_facet |
Nor Hayati Binti Shafii Rohana Alias Nur Fithrinnissaa Zamani Nur Fatihah Fauzi |
author_sort |
Nor Hayati Binti Shafii |
title |
Forecasting of Air Pollution Index PM2.5 Using Support Vector Machine(SVM) |
title_short |
Forecasting of Air Pollution Index PM2.5 Using Support Vector Machine(SVM) |
title_full |
Forecasting of Air Pollution Index PM2.5 Using Support Vector Machine(SVM) |
title_fullStr |
Forecasting of Air Pollution Index PM2.5 Using Support Vector Machine(SVM) |
title_full_unstemmed |
Forecasting of Air Pollution Index PM2.5 Using Support Vector Machine(SVM) |
title_sort |
forecasting of air pollution index pm2.5 using support vector machine(svm) |
publisher |
Faculty of Computer and Mathematical Sciences, Universiti Teknologi MARA Perlis |
series |
Journal of Computing Research and Innovation |
issn |
2600-8793 |
publishDate |
2020-10-01 |
description |
Air pollution is a current monitored problem in areas with high population density such as big cities. Many regions in Malaysia are facing extreme air quality issues. This situation is caused by several factors such as human behavior, environmental awareness and technological development. Accessing the air pollution index (API) accurately is very important to control its impact on environmental and human health. The work presented here aims to access air pollution index of PM2.5 using Support Vector Machine (SVM) and to compare the accuracy of four different types of the kernel function in Support Vector Machine (SVM). The data used is provided by the Department of Environment (DOE) and it is recorded from two Continuous Air Quality Monitoring Stations (CAQM) located at Tanah Merah and Kota Bharu. The results are analyzed using mean absolute error (MAE) and root mean squared error (RMSE). It is found that the proposed model using Radial Basis Function (RBF) with its parameters of cost and gamma equal to 100 can effectively and accurately forecast the air pollution index with Mean Absolute Error (MAE) and Root Mean Squared Error (RMSE) of 0.03868583 and 0.06251793 respectively for API in Kota Bharu and 0.03857308 (MAE) and 0.05895648 (RMSE) for API in Tanah Merah. |
topic |
air pollution index pollution forecasting forecasting regression time-series svm support vector machine |
url |
https://crinn.conferencehunter.com/index.php/jcrinn/article/view/149 |
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