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Artificial intelligence-assisted air quality monitoring for smart city management

BACKGROUND: The environment has been significantly impacted by rapid urbanization, leading to a need for changes in climate change and pollution indicators. The 4IR offers a potential solution to efficiently manage these impacts. Smart city ecosystems can provide well-designed, sustainable, and safe...

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Autores principales: Neo, En Xin, Hasikin, Khairunnisa, Lai, Khin Wee, Mokhtar, Mohd Istajib, Azizan, Muhammad Mokhzaini, Hizaddin, Hanee Farzana, Razak, Sarah Abdul, Yanto
Formato: Online Artículo Texto
Lenguaje:English
Publicado: PeerJ Inc. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10280551/
https://www.ncbi.nlm.nih.gov/pubmed/37346549
http://dx.doi.org/10.7717/peerj-cs.1306
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author Neo, En Xin
Hasikin, Khairunnisa
Lai, Khin Wee
Mokhtar, Mohd Istajib
Azizan, Muhammad Mokhzaini
Hizaddin, Hanee Farzana
Razak, Sarah Abdul
Yanto
author_facet Neo, En Xin
Hasikin, Khairunnisa
Lai, Khin Wee
Mokhtar, Mohd Istajib
Azizan, Muhammad Mokhzaini
Hizaddin, Hanee Farzana
Razak, Sarah Abdul
Yanto
author_sort Neo, En Xin
collection PubMed
description BACKGROUND: The environment has been significantly impacted by rapid urbanization, leading to a need for changes in climate change and pollution indicators. The 4IR offers a potential solution to efficiently manage these impacts. Smart city ecosystems can provide well-designed, sustainable, and safe cities that enable holistic climate change and global warming solutions through various community-centred initiatives. These include smart planning techniques, smart environment monitoring, and smart governance. An air quality intelligence platform, which operates as a complete measurement site for monitoring and governing air quality, has shown promising results in providing actionable insights. This article aims to highlight the potential of machine learning models in predicting air quality, providing data-driven strategic and sustainable solutions for smart cities. METHODS: This study proposed an end-to-end air quality predictive model for smart city applications, utilizing four machine learning techniques and two deep learning techniques. These include Ada Boost, SVR, RF, KNN, MLP regressor and LSTM. The study was conducted in four different urban cities in Selangor, Malaysia, including Petaling Jaya, Banting, Klang, and Shah Alam. The model considered the air quality data of various pollution markers such as PM(2.5), PM(10), O(3), and CO. Additionally, meteorological data including wind speed and wind direction were also considered, and their interactions with the pollutant markers were quantified. The study aimed to determine the correlation variance of the dependent variable in predicting air pollution and proposed a feature optimization process to reduce dimensionality and remove irrelevant features to enhance the prediction of PM(2.5), improving the existing LSTM model. The study estimates the concentration of pollutants in the air based on training and highlights the contribution of feature optimization in air quality predictions through feature dimension reductions. RESULTS: In this section, the results of predicting the concentration of pollutants (PM(2.5), PM(10), O(3), and CO) in the air are presented in R(2) and RMSE. In predicting the PM(10) and PM(2.5)concentration, LSTM performed the best overall high R(2)values in the four study areas with the R(2) values of 0.998, 0.995, 0.918, and 0.993 in Banting, Petaling, Klang and Shah Alam stations, respectively. The study indicated that among the studied pollution markers, PM(2.5,)PM(10), NO(2), wind speed and humidity are the most important elements to monitor. By reducing the number of features used in the model the proposed feature optimization process can make the model more interpretable and provide insights into the most critical factor affecting air quality. Findings from this study can aid policymakers in understanding the underlying causes of air pollution and develop more effective smart strategies for reducing pollution levels.
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spelling pubmed-102805512023-06-21 Artificial intelligence-assisted air quality monitoring for smart city management Neo, En Xin Hasikin, Khairunnisa Lai, Khin Wee Mokhtar, Mohd Istajib Azizan, Muhammad Mokhzaini Hizaddin, Hanee Farzana Razak, Sarah Abdul Yanto PeerJ Comput Sci Artificial Intelligence BACKGROUND: The environment has been significantly impacted by rapid urbanization, leading to a need for changes in climate change and pollution indicators. The 4IR offers a potential solution to efficiently manage these impacts. Smart city ecosystems can provide well-designed, sustainable, and safe cities that enable holistic climate change and global warming solutions through various community-centred initiatives. These include smart planning techniques, smart environment monitoring, and smart governance. An air quality intelligence platform, which operates as a complete measurement site for monitoring and governing air quality, has shown promising results in providing actionable insights. This article aims to highlight the potential of machine learning models in predicting air quality, providing data-driven strategic and sustainable solutions for smart cities. METHODS: This study proposed an end-to-end air quality predictive model for smart city applications, utilizing four machine learning techniques and two deep learning techniques. These include Ada Boost, SVR, RF, KNN, MLP regressor and LSTM. The study was conducted in four different urban cities in Selangor, Malaysia, including Petaling Jaya, Banting, Klang, and Shah Alam. The model considered the air quality data of various pollution markers such as PM(2.5), PM(10), O(3), and CO. Additionally, meteorological data including wind speed and wind direction were also considered, and their interactions with the pollutant markers were quantified. The study aimed to determine the correlation variance of the dependent variable in predicting air pollution and proposed a feature optimization process to reduce dimensionality and remove irrelevant features to enhance the prediction of PM(2.5), improving the existing LSTM model. The study estimates the concentration of pollutants in the air based on training and highlights the contribution of feature optimization in air quality predictions through feature dimension reductions. RESULTS: In this section, the results of predicting the concentration of pollutants (PM(2.5), PM(10), O(3), and CO) in the air are presented in R(2) and RMSE. In predicting the PM(10) and PM(2.5)concentration, LSTM performed the best overall high R(2)values in the four study areas with the R(2) values of 0.998, 0.995, 0.918, and 0.993 in Banting, Petaling, Klang and Shah Alam stations, respectively. The study indicated that among the studied pollution markers, PM(2.5,)PM(10), NO(2), wind speed and humidity are the most important elements to monitor. By reducing the number of features used in the model the proposed feature optimization process can make the model more interpretable and provide insights into the most critical factor affecting air quality. Findings from this study can aid policymakers in understanding the underlying causes of air pollution and develop more effective smart strategies for reducing pollution levels. PeerJ Inc. 2023-05-24 /pmc/articles/PMC10280551/ /pubmed/37346549 http://dx.doi.org/10.7717/peerj-cs.1306 Text en ©2023 Neo et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, reproduction and adaptation in any medium and for any purpose provided that it is properly attributed. For attribution, the original author(s), title, publication source (PeerJ Computer Science) and either DOI or URL of the article must be cited.
spellingShingle Artificial Intelligence
Neo, En Xin
Hasikin, Khairunnisa
Lai, Khin Wee
Mokhtar, Mohd Istajib
Azizan, Muhammad Mokhzaini
Hizaddin, Hanee Farzana
Razak, Sarah Abdul
Yanto
Artificial intelligence-assisted air quality monitoring for smart city management
title Artificial intelligence-assisted air quality monitoring for smart city management
title_full Artificial intelligence-assisted air quality monitoring for smart city management
title_fullStr Artificial intelligence-assisted air quality monitoring for smart city management
title_full_unstemmed Artificial intelligence-assisted air quality monitoring for smart city management
title_short Artificial intelligence-assisted air quality monitoring for smart city management
title_sort artificial intelligence-assisted air quality monitoring for smart city management
topic Artificial Intelligence
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10280551/
https://www.ncbi.nlm.nih.gov/pubmed/37346549
http://dx.doi.org/10.7717/peerj-cs.1306
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