PR-FCNN: a data-driven hybrid approach for predicting PM2.5 concentration

The atmosphere’s fine articulate Matter (PM2.5) poses various health-related risks. Even though multiple efforts have been made to lower the emissions of these substances, the mortality rate is continuously increasing, requiring immediate inclination of the scientific community towards the design an...

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Published in:Discover Artificial Intelligence
Main Author: Inam S.A.; Khan A.A.; Mazhar T.; Ahmed N.; Shahzad T.; Khan M.A.; Saeed M.M.; Hamam H.
Format: Article
Language:English
Published: Springer Nature 2024
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85208652136&doi=10.1007%2fs44163-024-00184-7&partnerID=40&md5=0c2e4841fc8921c1ef151e3ff25c5b6c
id 2-s2.0-85208652136
spelling 2-s2.0-85208652136
Inam S.A.; Khan A.A.; Mazhar T.; Ahmed N.; Shahzad T.; Khan M.A.; Saeed M.M.; Hamam H.
PR-FCNN: a data-driven hybrid approach for predicting PM2.5 concentration
2024
Discover Artificial Intelligence
4
1
10.1007/s44163-024-00184-7
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85208652136&doi=10.1007%2fs44163-024-00184-7&partnerID=40&md5=0c2e4841fc8921c1ef151e3ff25c5b6c
The atmosphere’s fine articulate Matter (PM2.5) poses various health-related risks. Even though multiple efforts have been made to lower the emissions of these substances, the mortality rate is continuously increasing, requiring immediate inclination of the scientific community towards the design and development of advanced predictive models. Conventional statistical approaches have become dormant due to their limitations in capturing the innate relationships between the pollutants, particularly for predicting PM2.5 concentrations. In contrast, machine and deep learning techniques have shown great potential for forecasting air quality, providing more accuracy than its predecessor techniques. The present study investigates the utilization of hybrid approaches by integrating machine learning models with deep learning models to improve the prediction capabilities of PM2.5 concentration. It uses datasets from the World Air Quality Index (WAQI) and the State of Global Air (SOGA) to analyze the performance of the models on both the daily and annual data, respectively. This ensures the model’s effectiveness on a diversified dataset. The present study implements Random Forest (RF), Polynomial Regression (PR), XGBoost, and Extra Tree Regressor (ETR) coupled with Fully Connected Neural Network (FCNN), Long Short-Term Memory (LSTM), and Bi-directional LSTM (Bi-LSTM) for obtaining optimized results. Finally, after a thorough investigation, the hybrid PR model coupled with FCNN (PR-FCNN) is found to be the best model with improved R-squared (R2) values, portraying its potential for predicting PM2.5 concentration accurately. Based on the experimentation, the preset study recommends implementing hybrid approaches, offering better predictive accuracy in forecasting air pollutants, especially PM2.5. © The Author(s) 2024.
Springer Nature
27310809
English
Article
All Open Access; Gold Open Access
author Inam S.A.; Khan A.A.; Mazhar T.; Ahmed N.; Shahzad T.; Khan M.A.; Saeed M.M.; Hamam H.
spellingShingle Inam S.A.; Khan A.A.; Mazhar T.; Ahmed N.; Shahzad T.; Khan M.A.; Saeed M.M.; Hamam H.
PR-FCNN: a data-driven hybrid approach for predicting PM2.5 concentration
author_facet Inam S.A.; Khan A.A.; Mazhar T.; Ahmed N.; Shahzad T.; Khan M.A.; Saeed M.M.; Hamam H.
author_sort Inam S.A.; Khan A.A.; Mazhar T.; Ahmed N.; Shahzad T.; Khan M.A.; Saeed M.M.; Hamam H.
title PR-FCNN: a data-driven hybrid approach for predicting PM2.5 concentration
title_short PR-FCNN: a data-driven hybrid approach for predicting PM2.5 concentration
title_full PR-FCNN: a data-driven hybrid approach for predicting PM2.5 concentration
title_fullStr PR-FCNN: a data-driven hybrid approach for predicting PM2.5 concentration
title_full_unstemmed PR-FCNN: a data-driven hybrid approach for predicting PM2.5 concentration
title_sort PR-FCNN: a data-driven hybrid approach for predicting PM2.5 concentration
publishDate 2024
container_title Discover Artificial Intelligence
container_volume 4
container_issue 1
doi_str_mv 10.1007/s44163-024-00184-7
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85208652136&doi=10.1007%2fs44163-024-00184-7&partnerID=40&md5=0c2e4841fc8921c1ef151e3ff25c5b6c
description The atmosphere’s fine articulate Matter (PM2.5) poses various health-related risks. Even though multiple efforts have been made to lower the emissions of these substances, the mortality rate is continuously increasing, requiring immediate inclination of the scientific community towards the design and development of advanced predictive models. Conventional statistical approaches have become dormant due to their limitations in capturing the innate relationships between the pollutants, particularly for predicting PM2.5 concentrations. In contrast, machine and deep learning techniques have shown great potential for forecasting air quality, providing more accuracy than its predecessor techniques. The present study investigates the utilization of hybrid approaches by integrating machine learning models with deep learning models to improve the prediction capabilities of PM2.5 concentration. It uses datasets from the World Air Quality Index (WAQI) and the State of Global Air (SOGA) to analyze the performance of the models on both the daily and annual data, respectively. This ensures the model’s effectiveness on a diversified dataset. The present study implements Random Forest (RF), Polynomial Regression (PR), XGBoost, and Extra Tree Regressor (ETR) coupled with Fully Connected Neural Network (FCNN), Long Short-Term Memory (LSTM), and Bi-directional LSTM (Bi-LSTM) for obtaining optimized results. Finally, after a thorough investigation, the hybrid PR model coupled with FCNN (PR-FCNN) is found to be the best model with improved R-squared (R2) values, portraying its potential for predicting PM2.5 concentration accurately. Based on the experimentation, the preset study recommends implementing hybrid approaches, offering better predictive accuracy in forecasting air pollutants, especially PM2.5. © The Author(s) 2024.
publisher Springer Nature
issn 27310809
language English
format Article
accesstype All Open Access; Gold Open Access
record_format scopus
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