Forecasting the PM-10 using a deep neural network
The air pollutants related to PM-10 are increasingly adversely affecting people in upper Northern Thailand, especially during the annual dry season. Due to the highly nonlinear dynamics of PM-10 contributed by various factors, in this study a deep neural network (DNN) has been implemented as a too...
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Prince of Songkla University
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doaj-09cbde97cb91491b9346af72f5b7a65e2021-08-24T17:00:48ZengPrince of Songkla UniversitySongklanakarin Journal of Science and Technology (SJST)0125-33952021-06-0143368769510.14456/sjst-psu.2021.91Forecasting the PM-10 using a deep neural networkChinawat Chairungrueang0Rati Wongsathan1Department of Industrial Engineering, Faculty of Engineering, North-Chiang Mai University, Hang Dong, Chiang Mai, 50230 ThailandDepartment of Electrical Engineering, Faculty of Engineering, North-Chiang Mai University, Hang Dong, Chiang Mai, 50230 ThailandThe air pollutants related to PM-10 are increasingly adversely affecting people in upper Northern Thailand, especially during the annual dry season. Due to the highly nonlinear dynamics of PM-10 contributed by various factors, in this study a deep neural network (DNN) has been implemented as a tool forecasting PM-10 for air quality alerts. In its design, the time lags of PM10 and significant meteorology conditions, as well as the well-correlated fire-hotspots as major PM-10 sources in this area, are included in the predictor set. The training hyperparameters were optimized automatically by a genetic algorithm, whereas the DNN’s parameters were fine-tuned using back-propagation algorithm. Besides, regularization based on a dropout technique was employed to prevent over-fitting. In testing the proposed DNN-based PM-10 forecasting model outperformed the others. For oneday ahead forecasting it provides a good up to 85% accuracy.https://rdo.psu.ac.th/sjstweb/journal/43-3/11.pdfdeep neural networkpm-10genetic algorithmdropoutmachine learning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Chinawat Chairungrueang Rati Wongsathan |
spellingShingle |
Chinawat Chairungrueang Rati Wongsathan Forecasting the PM-10 using a deep neural network Songklanakarin Journal of Science and Technology (SJST) deep neural network pm-10 genetic algorithm dropout machine learning |
author_facet |
Chinawat Chairungrueang Rati Wongsathan |
author_sort |
Chinawat Chairungrueang |
title |
Forecasting the PM-10 using a deep neural network |
title_short |
Forecasting the PM-10 using a deep neural network |
title_full |
Forecasting the PM-10 using a deep neural network |
title_fullStr |
Forecasting the PM-10 using a deep neural network |
title_full_unstemmed |
Forecasting the PM-10 using a deep neural network |
title_sort |
forecasting the pm-10 using a deep neural network |
publisher |
Prince of Songkla University |
series |
Songklanakarin Journal of Science and Technology (SJST) |
issn |
0125-3395 |
publishDate |
2021-06-01 |
description |
The air pollutants related to PM-10 are increasingly adversely affecting people in upper Northern Thailand, especially
during the annual dry season. Due to the highly nonlinear dynamics of PM-10 contributed by various factors, in this study a deep
neural network (DNN) has been implemented as a tool forecasting PM-10 for air quality alerts. In its design, the time lags of PM10 and significant meteorology conditions, as well as the well-correlated fire-hotspots as major PM-10 sources in this area, are
included in the predictor set. The training hyperparameters were optimized automatically by a genetic algorithm, whereas the
DNN’s parameters were fine-tuned using back-propagation algorithm. Besides, regularization based on a dropout technique was
employed to prevent over-fitting. In testing the proposed DNN-based PM-10 forecasting model outperformed the others. For oneday ahead forecasting it provides a good up to 85% accuracy. |
topic |
deep neural network pm-10 genetic algorithm dropout machine learning |
url |
https://rdo.psu.ac.th/sjstweb/journal/43-3/11.pdf |
work_keys_str_mv |
AT chinawatchairungrueang forecastingthepm10usingadeepneuralnetwork AT ratiwongsathan forecastingthepm10usingadeepneuralnetwork |
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1721197164046057472 |