Hybrid machine learning for forecasting and monitoring air pollution in Surabaya

This research aims to propose hybrid machine learnings for forecasting and monitoring air pollution in Surabaya. In particular, we introduce two hybrid machine learnings, i.e. hybrid Time Series Regression – Feedforward Neural Network (TSR-FFNN) and hybrid Time Series Regression – Long Short-Term Me...

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Main Authors: Suhartono, Suhartono, Achmad Choiruddin, Achmad Choiruddin, Prabowo, Hendri, Lee, Muhammad Hisyam
Format: Conference or Workshop Item
Published: 2021
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Online Access:http://eprints.utm.my/id/eprint/98170/
http://dx.doi.org/10.1007/978-981-16-7334-4_27
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spelling my.utm.981702022-12-06T03:45:19Z http://eprints.utm.my/id/eprint/98170/ Hybrid machine learning for forecasting and monitoring air pollution in Surabaya Suhartono, Suhartono Achmad Choiruddin, Achmad Choiruddin Prabowo, Hendri Lee, Muhammad Hisyam QA Mathematics This research aims to propose hybrid machine learnings for forecasting and monitoring air pollution in Surabaya. In particular, we introduce two hybrid machine learnings, i.e. hybrid Time Series Regression – Feedforward Neural Network (TSR-FFNN) and hybrid Time Series Regression – Long Short-Term Memory (TSR-LSTM). TSR is used to capture linear patterns from data, whereas FFNN or LSTM is used to capture non-linear patterns. Fifteen half-hourly series data, i.e. CO, NO2, O3, PM10, and SO2 in three SUF stations at Surabaya, are used as the case study. We compare the forecasting accuracy of these hybrid machine learnings with several individual methods (i.e. TSR, ARIMA, FFNN, and LSTM), and combined methods (i.e. TSR with AR error and TSR with ARMA error). The identification step showed that these air pollution data have double seasonal patterns, i.e. daily and weekly seasonality. The comparison results showed that no superior method that yields the most accurate forecast for all series data. Moreover, the results showed that hybrid methods gave more accurate forecast at 8 series data, whereas the individual methods yielded better results at 7 series data. It supported that methods that are more complex do not always produce better forecasts than simple methods, as shown by the first result of the M3 competition. Additionally, the results of the forecast of air pollution index for monitoring air pollution in Surabaya show that the air quality is in good and moderate air pollution levels for duration of 19.30 to 03.00 and 0.30 to 19.30, respectively. 2021 Conference or Workshop Item PeerReviewed Suhartono, Suhartono and Achmad Choiruddin, Achmad Choiruddin and Prabowo, Hendri and Lee, Muhammad Hisyam (2021) Hybrid machine learning for forecasting and monitoring air pollution in Surabaya. In: 6th International Conference on Soft Computing in Data Science, SCDS 2021, 2 - 3 November 2021, Virtual, Online. http://dx.doi.org/10.1007/978-981-16-7334-4_27
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic QA Mathematics
spellingShingle QA Mathematics
Suhartono, Suhartono
Achmad Choiruddin, Achmad Choiruddin
Prabowo, Hendri
Lee, Muhammad Hisyam
Hybrid machine learning for forecasting and monitoring air pollution in Surabaya
description This research aims to propose hybrid machine learnings for forecasting and monitoring air pollution in Surabaya. In particular, we introduce two hybrid machine learnings, i.e. hybrid Time Series Regression – Feedforward Neural Network (TSR-FFNN) and hybrid Time Series Regression – Long Short-Term Memory (TSR-LSTM). TSR is used to capture linear patterns from data, whereas FFNN or LSTM is used to capture non-linear patterns. Fifteen half-hourly series data, i.e. CO, NO2, O3, PM10, and SO2 in three SUF stations at Surabaya, are used as the case study. We compare the forecasting accuracy of these hybrid machine learnings with several individual methods (i.e. TSR, ARIMA, FFNN, and LSTM), and combined methods (i.e. TSR with AR error and TSR with ARMA error). The identification step showed that these air pollution data have double seasonal patterns, i.e. daily and weekly seasonality. The comparison results showed that no superior method that yields the most accurate forecast for all series data. Moreover, the results showed that hybrid methods gave more accurate forecast at 8 series data, whereas the individual methods yielded better results at 7 series data. It supported that methods that are more complex do not always produce better forecasts than simple methods, as shown by the first result of the M3 competition. Additionally, the results of the forecast of air pollution index for monitoring air pollution in Surabaya show that the air quality is in good and moderate air pollution levels for duration of 19.30 to 03.00 and 0.30 to 19.30, respectively.
format Conference or Workshop Item
author Suhartono, Suhartono
Achmad Choiruddin, Achmad Choiruddin
Prabowo, Hendri
Lee, Muhammad Hisyam
author_facet Suhartono, Suhartono
Achmad Choiruddin, Achmad Choiruddin
Prabowo, Hendri
Lee, Muhammad Hisyam
author_sort Suhartono, Suhartono
title Hybrid machine learning for forecasting and monitoring air pollution in Surabaya
title_short Hybrid machine learning for forecasting and monitoring air pollution in Surabaya
title_full Hybrid machine learning for forecasting and monitoring air pollution in Surabaya
title_fullStr Hybrid machine learning for forecasting and monitoring air pollution in Surabaya
title_full_unstemmed Hybrid machine learning for forecasting and monitoring air pollution in Surabaya
title_sort hybrid machine learning for forecasting and monitoring air pollution in surabaya
publishDate 2021
url http://eprints.utm.my/id/eprint/98170/
http://dx.doi.org/10.1007/978-981-16-7334-4_27
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score 13.18916