Apply a deep learning hybrid model optimized by an Improved Chimp Optimization Algorithm in PM2.5 prediction

PM2.5 pollution in the atmosphere not only contaminates the environment but also seriously affects human health. Therefore, studying how to accurately predict future PM2.5 concentrations holds significant importance and practical value. This paper innovatively PM2.5proposes a high-accuracy predictio...

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Main Authors: Ming Wei, Xiaopeng Du
Format: Article
Language:English
Published: Elsevier 2025-03-01
Series:Machine Learning with Applications
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Online Access:http://www.sciencedirect.com/science/article/pii/S2666827025000076
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author Ming Wei
Xiaopeng Du
author_facet Ming Wei
Xiaopeng Du
author_sort Ming Wei
collection DOAJ
description PM2.5 pollution in the atmosphere not only contaminates the environment but also seriously affects human health. Therefore, studying how to accurately predict future PM2.5 concentrations holds significant importance and practical value. This paper innovatively PM2.5proposes a high-accuracy prediction model: RF-ICHOA-CNN-LSTM-Attention. First, the Random Forest (RF) model is utilized to evaluate the importance of air pollution and meteorological features and select more suitable input features. Subsequently, a one-dimensional convolutional neural network (1DCNN) with efficient feature extraction capability is used to extract dynamic features from sequences. The extracted feature vector sequences are then fed into a Long Short-Term Memory Network (LSTM). After the LSTM, an Attention Mechanism is incorporated to assign different weights to the input features, emphasizing the role of the important features. Additionally, the Improved Chimp Optimization Algorithm (IChOA) is employed to optimize the number of neurons in the two hidden layers of LSTM, the learning rate, and the number of training epochs. The experimental results on 12 test functions demonstrate that the optimization performance of IChOA is better than that of ChOA and the representative swarm optimization algorithms used for comparison. In the case of PM2.5 predictions in Yining and Beijing, experimental results show that the proposed model achieved the best performance in terms of RMSE, MAE, and R2 This indicates its excellent prediction accuracy and generalization capability, Thus proving its effectiveness in predicting PM2.5 concentration in the real world.
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publishDate 2025-03-01
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spelling doaj-art-cb2b87304fac4c5b9e1590459f9e17f02025-02-04T04:10:38ZengElsevierMachine Learning with Applications2666-82702025-03-0119100624Apply a deep learning hybrid model optimized by an Improved Chimp Optimization Algorithm in PM2.5 predictionMing Wei0Xiaopeng Du1Corresponding author.; College of Computer Science and Technology, Qingdao University, Qingdao, 266071, ChinaCollege of Computer Science and Technology, Qingdao University, Qingdao, 266071, ChinaPM2.5 pollution in the atmosphere not only contaminates the environment but also seriously affects human health. Therefore, studying how to accurately predict future PM2.5 concentrations holds significant importance and practical value. This paper innovatively PM2.5proposes a high-accuracy prediction model: RF-ICHOA-CNN-LSTM-Attention. First, the Random Forest (RF) model is utilized to evaluate the importance of air pollution and meteorological features and select more suitable input features. Subsequently, a one-dimensional convolutional neural network (1DCNN) with efficient feature extraction capability is used to extract dynamic features from sequences. The extracted feature vector sequences are then fed into a Long Short-Term Memory Network (LSTM). After the LSTM, an Attention Mechanism is incorporated to assign different weights to the input features, emphasizing the role of the important features. Additionally, the Improved Chimp Optimization Algorithm (IChOA) is employed to optimize the number of neurons in the two hidden layers of LSTM, the learning rate, and the number of training epochs. The experimental results on 12 test functions demonstrate that the optimization performance of IChOA is better than that of ChOA and the representative swarm optimization algorithms used for comparison. In the case of PM2.5 predictions in Yining and Beijing, experimental results show that the proposed model achieved the best performance in terms of RMSE, MAE, and R2 This indicates its excellent prediction accuracy and generalization capability, Thus proving its effectiveness in predicting PM2.5 concentration in the real world.http://www.sciencedirect.com/science/article/pii/S2666827025000076PM2.5 predictionRF-IChOA-CNN-LSTM-AttentionImproved Chimp Optimization AlgorithmCombined model
spellingShingle Ming Wei
Xiaopeng Du
Apply a deep learning hybrid model optimized by an Improved Chimp Optimization Algorithm in PM2.5 prediction
Machine Learning with Applications
PM2.5 prediction
RF-IChOA-CNN-LSTM-Attention
Improved Chimp Optimization Algorithm
Combined model
title Apply a deep learning hybrid model optimized by an Improved Chimp Optimization Algorithm in PM2.5 prediction
title_full Apply a deep learning hybrid model optimized by an Improved Chimp Optimization Algorithm in PM2.5 prediction
title_fullStr Apply a deep learning hybrid model optimized by an Improved Chimp Optimization Algorithm in PM2.5 prediction
title_full_unstemmed Apply a deep learning hybrid model optimized by an Improved Chimp Optimization Algorithm in PM2.5 prediction
title_short Apply a deep learning hybrid model optimized by an Improved Chimp Optimization Algorithm in PM2.5 prediction
title_sort apply a deep learning hybrid model optimized by an improved chimp optimization algorithm in pm2 5 prediction
topic PM2.5 prediction
RF-IChOA-CNN-LSTM-Attention
Improved Chimp Optimization Algorithm
Combined model
url http://www.sciencedirect.com/science/article/pii/S2666827025000076
work_keys_str_mv AT mingwei applyadeeplearninghybridmodeloptimizedbyanimprovedchimpoptimizationalgorithminpm25prediction
AT xiaopengdu applyadeeplearninghybridmodeloptimizedbyanimprovedchimpoptimizationalgorithminpm25prediction