Abstract
AbstractAir pollution is a significant and pressing environmental and public health concern in urban areas, primarily driven by road transport. By gaining a deeper understanding of how traffic dynamics influence air pollution, policymakers and experts can design targeted interventions to tackle these critical issues. In order to analyse this relationship, a series of regression algorithms were developed utilizing the Google Project Air View (GPAV) and Dublin City’s SCATS data, taking into account various spatiotemporal characteristics such as distance and weather. The analysis showed that Gaussian Process Regression (GPR) mostly outperformed Support Vector Regression (SVR) for air quality prediction, emphasizing its suitability and the importance of considering spatial variability in modelling. The model describes the data best for particulate matter (PM2.5) emissions, with R-squared (R2) values ranging from 0.40 to 0.55 at specific distances from the centre of the study area based on the GPR model. The visualization of pollutant concentrations in the study area also revealed an association with the distance between intersections. While the anticipated direct correlation between vehicular traffic and air pollution was not as pronounced, it underscores the complexity of urban emissions and the multitude of factors influencing air quality. This revelation highlights the need for a multifaceted approach to policymaking, ensuring that interventions address a broader spectrum of emission sources beyond just traffic. This study advances the current knowledge on the dynamic relationship between urban traffic and air pollution, and its findings could provide theoretical support for traffic planning and traffic control applicable to urban centres globally.
Funder
Dublin City Council
European Conference of Transport Research Institutes
Publisher
Springer Science and Business Media LLC
Reference27 articles.
1. Abdull, N., Yoneda, M., & Shimada, Y. (2020). Traffic characteristics and pollutant emission from road transport in urban area. Air Quality, Atmosphere & Health, 13(6), 731–738. https://doi.org/10.1007/s11869-020-00830-w
2. Coelho, S., Ferreira, J., Lopes, D., Carvalho, D., & Lopes, M. (2023). Facing the challenges of air quality and health in a future climate: The Aveiro region case study. Science of the Total Environment, 876, 162767. https://doi.org/10.1016/j.scitotenv.2023.162767
3. Data.gov.ie. (2023a). Google project air view data-Dublin City (May 2021–August 2022). Last accessed on 9 October 2023. https://data.gov.ie/dataset/google-airview-data-dublin-city.
4. Data.gov.ie. (2023b). Traffic counts datasets. Last accessed on 9 October 2023. https://data.gov.ie/dataset?tags=traffic-counts.
5. EPA. (2022). European city air quality viewer. Retrieved from https://www.eea.europa.eu/themes/air/urban-air-quality/european-city-air-quality-viewer.