Machine Learning for Determining Interactions between Air Pollutants and Environmental Parameters in Three Cities of Iran

dc.bibliographicCitation.firstPage8027
dc.bibliographicCitation.issue13
dc.bibliographicCitation.journalTitleSustainabilityeng
dc.bibliographicCitation.volume14
dc.contributor.authorRad, Abdullah Kaviani
dc.contributor.authorShamshiri, Redmond R.
dc.contributor.authorNaghipour, Armin
dc.contributor.authorRazmi, Seraj-Odeen
dc.contributor.authorShariati, Mohsen
dc.contributor.authorGolkar, Foroogh
dc.contributor.authorBalasundram, Siva K.
dc.date.accessioned2023-04-03T08:17:39Z
dc.date.available2023-04-03T08:17:39Z
dc.date.issued2022
dc.description.abstractAir pollution, as one of the most significant environmental challenges, has adversely affected the global economy, human health, and ecosystems. Consequently, comprehensive research is being conducted to provide solutions to air quality management. Recently, it has been demonstrated that environmental parameters, including temperature, relative humidity, wind speed, air pressure, and vegetation, interact with air pollutants, such as particulate matter (PM), NO2, SO2, O3, and CO, contributing to frameworks for forecasting air quality. The objective of the present study is to explore these interactions in three Iranian metropolises of Tehran, Tabriz, and Shiraz from 2015 to 2019 and develop a machine learning-based model to predict daily air pollution. Three distinct assessment criteria were used to assess the proposed XGBoost model, including R squared (R2), Root Mean Squared Error (RMSE), and Mean Absolute Error (MAE). Preliminary results showed that although air pollutants were significantly associated with meteorological factors and vegetation, the formulated model had low accuracy in predicting (R2PM2.5 = 0.36, R2PM10 = 0.27, R2NO2 = 0.46, R2SO2 = 0.41, R2O3 = 0.52, and R2CO = 0.38). Accordingly, future studies should consider more variables, including emission data from manufactories and traffic, as well as sunlight and wind direction. It is also suggested that strategies be applied to minimize the lack of observational data by considering second-and third-order interactions between parameters, increasing the number of simultaneous air pollution and meteorological monitoring stations, as well as hybrid machine learning models based on proximal and satellite data.eng
dc.description.fondsLeibniz_Fonds
dc.description.versionpublishedVersioneng
dc.identifier.urihttps://oa.tib.eu/renate/handle/123456789/11860
dc.identifier.urihttp://dx.doi.org/10.34657/10893
dc.language.isoeng
dc.publisherBasel : MDPI
dc.relation.doihttps://doi.org/10.3390/su14138027
dc.relation.essn2071-1050
dc.rights.licenseCC BY 4.0 Unported
dc.rights.urihttps://creativecommons.org/licenses/by/4.0
dc.subject.ddc333.7
dc.subject.ddc690
dc.subject.otherair pollutioneng
dc.subject.otherAQIeng
dc.subject.otherinteractioneng
dc.subject.otherIraneng
dc.subject.othermachine learningeng
dc.subject.othermeteorological factorseng
dc.subject.othermodelingeng
dc.subject.otherqualityeng
dc.subject.othervegetationeng
dc.subject.otherXGBoosteng
dc.titleMachine Learning for Determining Interactions between Air Pollutants and Environmental Parameters in Three Cities of Iraneng
dc.typeArticleeng
dc.typeTexteng
tib.accessRightsopenAccess
wgl.contributorATB
wgl.subjectUmweltwissenschaftenger
wgl.typeZeitschriftenartikelger
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