Smart City Gnosys

Smart city article details

Title Air Quality Analysis And Smog Detection In Smart Cities For Safer Transport Using Machine Learning (Ml) Regression Models
ID_Doc 7146
Authors Mishra A.; Jalaluddin Z.M.; Mahamuni C.V.
Year 2022
Published Proceedings - 2022 IEEE 11th International Conference on Communication Systems and Network Technologies, CSNT 2022
DOI http://dx.doi.org/10.1109/CSNT54456.2022.9787618
Abstract A smart city is a technologically modern urban area in which different electronic methods, and multiple advanced features based on Information and Communication Technologies (ICT) are developed. The Smart Transport is one of the important functions of a smart city which facilitates a smooth movement of vehicles and allows citizens a safe and luxurious journey experience. The two major reasons that are responsible for accidents and mishaps on urban highways are the excess pollution of the air and the smog. The smog is a mixture smoke and fog, and it is composed of ozone (O3) and the particulate matter like pollen, dust, sulphur oxides, etc. Thus, if the air pollutants and their concentration is determined, we can easily detect the presence of the smog in the air. In this paper different machine learning regression models namely Polynomial Regression Model, Decision Tree Regression Model, Random Forest Regression Model, and Support Vector Regression Model are used for the prediction of Air Quality Index (AQI) from which the pollutant concentration can be determined, which will help to detect the smog. The results of the implementation show that the Random Forest Regression Model gives a better result of prediction amongst all the five models. © 2022 IEEE.
Author Keywords Air quality index; Decision tree; machine learning; Random Forest; Regression; smog


Similar Articles


Id Similarity Authors Title Published
15001 View0.927Sharma G.; Khurana S.; Saina N.; Shivansh; Gupta G.Comparative Analysis Of Machine Learning Techniques In Air Quality Index (Aqi) Prediction In Smart CitiesInternational Journal of System Assurance Engineering and Management, 15, 7 (2024)
839 View0.917Garg K.D.; Gupta M.; Sharma B.; Dhaou I.B.A Comparison Of Regression Techniques For Prediction Of Air Quality In Smart Cities1st International Conference in Advanced Innovation on Smart City, ICAISC 2023 - Proceedings (2023)
49968 View0.91Murugan R.; Palanichamy N.Smart City Air Quality Prediction Using Machine LearningProceedings - 5th International Conference on Intelligent Computing and Control Systems, ICICCS 2021 (2021)
7169 View0.909Iskandaryan D.; Ramos F.; Trilles S.Air Quality Prediction In Smart Cities Using Machine Learning Technologies Based On Sensor Data: A ReviewApplied Sciences (Switzerland), 10, 7 (2020)
7168 View0.907Niveshitha N.; Amsaad F.; Jhanjhi N.Z.Air Quality Prediction In Smart Cities Using Cloud Machine Learning2023 2nd International Conference on Smart Technologies for Smart Nation, SmartTechCon 2023 (2023)
2472 View0.905Mahalingam U.; Elangovan K.; Dobhal H.; Valliappa C.; Shrestha S.; Kedam G.A Machine Learning Model For Air Quality Prediction For Smart Cities2019 International Conference on Wireless Communications, Signal Processing and Networking, WiSPNET 2019 (2019)
7158 View0.903Shree A.N.R.; Shankaramma; Reddy C.Air Quality Management In Smart Cities By Leveraging Machine Learning Techniques3rd International Conference on Automation, Computing and Renewable Systems, ICACRS 2024 - Proceedings (2024)
10552 View0.902Neo E.X.; Hasikin K.; Lai K.W.; Mokhtar M.I.; Azizan M.M.; Hizaddin H.F.; Razak S.A.; YantoArtificial Intelligence-Assisted Air Quality Monitoring For Smart City ManagementPeerJ Computer Science, 9 (2023)
15000 View0.902Ameer, S; Shah, MA; Khan, A; Song, HB; Maple, C; Ul Islam, S; Asghar, MNComparative Analysis Of Machine Learning Techniques For Predicting Air Quality In Smart CitiesIEEE ACCESS, 7 (2019)
29779 View0.901Mohammed Q.H.; Namburu A.Hybrid Model And Framework For Predicting Air Pollutants In Smart CitiesJournal of Engineering and Sustainable Development, 28, 3 (2024)