PM2.5 Prediction Model Based on Combinational Hammerstein Recurrent Neural Networks
Airborne particulate matter 2.5 (PM2.5) can have a profound effect on the health of the population. Many researchers have been reporting highly accurate numerical predictions based on raw PM2.5 data imported directly into deep learning models; however, there is still considerable room for improvemen...
Main Authors: | , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
MDPI AG
2020-12-01
|
Series: | Mathematics |
Subjects: | |
Online Access: | https://www.mdpi.com/2227-7390/8/12/2178 |
id |
doaj-4dc91030a7e64de78cf8f7847abfc8dd |
---|---|
record_format |
Article |
spelling |
doaj-4dc91030a7e64de78cf8f7847abfc8dd2020-12-07T00:01:28ZengMDPI AGMathematics2227-73902020-12-0182178217810.3390/math8122178PM2.5 Prediction Model Based on Combinational Hammerstein Recurrent Neural NetworksYi-Chung Chen0Tsu-Chiang Lei1Shun Yao2Hsin-Ping Wang3Department of Industrial Engineering and Management, National Yunlin University of Science and Technology, College of Management, Main Campus, Yunlin 64002, TaiwanFeng-Chia University, Taichung 40724, TaiwanFeng-Chia University, Taichung 40724, TaiwanFeng-Chia University, Taichung 40724, TaiwanAirborne particulate matter 2.5 (PM2.5) can have a profound effect on the health of the population. Many researchers have been reporting highly accurate numerical predictions based on raw PM2.5 data imported directly into deep learning models; however, there is still considerable room for improvement in terms of implementation costs due to heavy computational overhead. From the perspective of environmental science, PM2.5 values in a given location can be attributed to local sources as well as external sources. Local sources tend to have a dramatic short-term impact on PM2.5 values, whereas external sources tend to have more subtle but longer-lasting effects. In the presence of PM2.5 from both sources at the same time, this combination of effects can undermine the predictive accuracy of the model. This paper presents a novel combinational Hammerstein recurrent neural network (CHRNN) to enhance predictive accuracy and overcome the heavy computational and monetary burden imposed by deep learning models. The CHRNN comprises a based-neural network tasked with learning gradual (long-term) fluctuations in conjunction with add-on neural networks to deal with dramatic (short-term) fluctuations. The CHRNN can be coupled with a random forest model to determine the degree to which short-term effects influence long-term outcomes. We also developed novel feature selection and normalization methods to enhance prediction accuracy. Using real-world measurement data of air quality and PM2.5 datasets from Taiwan, the precision of the proposed system in the numerical prediction of PM2.5 levels was comparable to that of state-of-the-art deep learning models, such as deep recurrent neural networks and long short-term memory, despite far lower implementation costs and computational overhead.https://www.mdpi.com/2227-7390/8/12/2178feature selectionrecurrent neural networksPM2.5 predictionstime series prediction |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Yi-Chung Chen Tsu-Chiang Lei Shun Yao Hsin-Ping Wang |
spellingShingle |
Yi-Chung Chen Tsu-Chiang Lei Shun Yao Hsin-Ping Wang PM2.5 Prediction Model Based on Combinational Hammerstein Recurrent Neural Networks Mathematics feature selection recurrent neural networks PM2.5 predictions time series prediction |
author_facet |
Yi-Chung Chen Tsu-Chiang Lei Shun Yao Hsin-Ping Wang |
author_sort |
Yi-Chung Chen |
title |
PM2.5 Prediction Model Based on Combinational Hammerstein Recurrent Neural Networks |
title_short |
PM2.5 Prediction Model Based on Combinational Hammerstein Recurrent Neural Networks |
title_full |
PM2.5 Prediction Model Based on Combinational Hammerstein Recurrent Neural Networks |
title_fullStr |
PM2.5 Prediction Model Based on Combinational Hammerstein Recurrent Neural Networks |
title_full_unstemmed |
PM2.5 Prediction Model Based on Combinational Hammerstein Recurrent Neural Networks |
title_sort |
pm2.5 prediction model based on combinational hammerstein recurrent neural networks |
publisher |
MDPI AG |
series |
Mathematics |
issn |
2227-7390 |
publishDate |
2020-12-01 |
description |
Airborne particulate matter 2.5 (PM2.5) can have a profound effect on the health of the population. Many researchers have been reporting highly accurate numerical predictions based on raw PM2.5 data imported directly into deep learning models; however, there is still considerable room for improvement in terms of implementation costs due to heavy computational overhead. From the perspective of environmental science, PM2.5 values in a given location can be attributed to local sources as well as external sources. Local sources tend to have a dramatic short-term impact on PM2.5 values, whereas external sources tend to have more subtle but longer-lasting effects. In the presence of PM2.5 from both sources at the same time, this combination of effects can undermine the predictive accuracy of the model. This paper presents a novel combinational Hammerstein recurrent neural network (CHRNN) to enhance predictive accuracy and overcome the heavy computational and monetary burden imposed by deep learning models. The CHRNN comprises a based-neural network tasked with learning gradual (long-term) fluctuations in conjunction with add-on neural networks to deal with dramatic (short-term) fluctuations. The CHRNN can be coupled with a random forest model to determine the degree to which short-term effects influence long-term outcomes. We also developed novel feature selection and normalization methods to enhance prediction accuracy. Using real-world measurement data of air quality and PM2.5 datasets from Taiwan, the precision of the proposed system in the numerical prediction of PM2.5 levels was comparable to that of state-of-the-art deep learning models, such as deep recurrent neural networks and long short-term memory, despite far lower implementation costs and computational overhead. |
topic |
feature selection recurrent neural networks PM2.5 predictions time series prediction |
url |
https://www.mdpi.com/2227-7390/8/12/2178 |
work_keys_str_mv |
AT yichungchen pm25predictionmodelbasedoncombinationalhammersteinrecurrentneuralnetworks AT tsuchianglei pm25predictionmodelbasedoncombinationalhammersteinrecurrentneuralnetworks AT shunyao pm25predictionmodelbasedoncombinationalhammersteinrecurrentneuralnetworks AT hsinpingwang pm25predictionmodelbasedoncombinationalhammersteinrecurrentneuralnetworks |
_version_ |
1724398162547834880 |