New hybrid statistical method and machine learning for PM10 prediction

The objective of this research is to propose new hybrid model by combining Time Series Regression (TSR) as statistical method and Feedforward Neural Network (FFNN) or Long Short-Term Memory (LSTM) as machine learning for PM10 prediction at three SUF stations in Surabaya City, Indonesia. TSR as an in...

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Main Authors: Suhartono, Suhartono, Prabowo, H., Prastyo, D. D., Lee, M. H.
Format: Conference or Workshop Item
Published: 2019
Subjects:
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author Suhartono, Suhartono
Prabowo, H.
Prastyo, D. D.
Lee, M. H.
author_facet Suhartono, Suhartono
Prabowo, H.
Prastyo, D. D.
Lee, M. H.
author_sort Suhartono, Suhartono
collection ePrints
description The objective of this research is to propose new hybrid model by combining Time Series Regression (TSR) as statistical method and Feedforward Neural Network (FFNN) or Long Short-Term Memory (LSTM) as machine learning for PM10 prediction at three SUF stations in Surabaya City, Indonesia. TSR as an individual linear model is used to capture trend and seasonal pattern. Whereas, FFNN or LSTM is employed to handle nonlinear pattern. Thus, this research proposes two hybrid models, i.e. hybrid TSR-FFNN and hybrid TSR-LSTM. Data about PM10 level that be observed half hourly at three SUF stations in Surabaya are used as case study. The performance of these two hybrid models will be compared with several individual models such as ARIMA, FFNN, and LSTM by using sMAPEP. The results at identification step showed that the data has double seasonal patterns, i.e. daily and weekly seasonality. Moreover, the forecast accuracy comparison showed that hybrid TSR-FFNN produced more accurate PM10 forecast than other methods at SUF 7, whereas FFNN yielded more accurate forecast at SUF 1 and SUF 7. These results show that FFNN as an individual nonlinear model produce better forecast than TSR and ARIMA as an individual linear model. It indicates that the PM10 in Surabaya tend to have nonlinear pattern. Moreover, these results are also in line with the results of M3 competition, i.e. more complex method do not necessary produce better forecast than a simpler one.
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institution Universiti Teknologi Malaysia - ePrints
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spelling utm.eprints-926712021-10-28T10:09:51Z http://eprints.utm.my/92671/ New hybrid statistical method and machine learning for PM10 prediction Suhartono, Suhartono Prabowo, H. Prastyo, D. D. Lee, M. H. QA Mathematics The objective of this research is to propose new hybrid model by combining Time Series Regression (TSR) as statistical method and Feedforward Neural Network (FFNN) or Long Short-Term Memory (LSTM) as machine learning for PM10 prediction at three SUF stations in Surabaya City, Indonesia. TSR as an individual linear model is used to capture trend and seasonal pattern. Whereas, FFNN or LSTM is employed to handle nonlinear pattern. Thus, this research proposes two hybrid models, i.e. hybrid TSR-FFNN and hybrid TSR-LSTM. Data about PM10 level that be observed half hourly at three SUF stations in Surabaya are used as case study. The performance of these two hybrid models will be compared with several individual models such as ARIMA, FFNN, and LSTM by using sMAPEP. The results at identification step showed that the data has double seasonal patterns, i.e. daily and weekly seasonality. Moreover, the forecast accuracy comparison showed that hybrid TSR-FFNN produced more accurate PM10 forecast than other methods at SUF 7, whereas FFNN yielded more accurate forecast at SUF 1 and SUF 7. These results show that FFNN as an individual nonlinear model produce better forecast than TSR and ARIMA as an individual linear model. It indicates that the PM10 in Surabaya tend to have nonlinear pattern. Moreover, these results are also in line with the results of M3 competition, i.e. more complex method do not necessary produce better forecast than a simpler one. 2019 Conference or Workshop Item PeerReviewed Suhartono, Suhartono and Prabowo, H. and Prastyo, D. D. and Lee, M. H. (2019) New hybrid statistical method and machine learning for PM10 prediction. In: 5th International Conference on Soft Computing in Data Science, SCDS 2019, 28-29 Aug 2019, Iizuka, Japan. http://dx.doi.org/10.1007/978-981-15-0399-3_12
spellingShingle QA Mathematics
Suhartono, Suhartono
Prabowo, H.
Prastyo, D. D.
Lee, M. H.
New hybrid statistical method and machine learning for PM10 prediction
title New hybrid statistical method and machine learning for PM10 prediction
title_full New hybrid statistical method and machine learning for PM10 prediction
title_fullStr New hybrid statistical method and machine learning for PM10 prediction
title_full_unstemmed New hybrid statistical method and machine learning for PM10 prediction
title_short New hybrid statistical method and machine learning for PM10 prediction
title_sort new hybrid statistical method and machine learning for pm10 prediction
topic QA Mathematics
work_keys_str_mv AT suhartonosuhartono newhybridstatisticalmethodandmachinelearningforpm10prediction
AT prabowoh newhybridstatisticalmethodandmachinelearningforpm10prediction
AT prastyodd newhybridstatisticalmethodandmachinelearningforpm10prediction
AT leemh newhybridstatisticalmethodandmachinelearningforpm10prediction