Litcius/Paper detail

Spatial and temporal patterns of urban air pollution in tehran with a focus on PM2.5 and associated pollutants

Mohammad Taghi Abbasi, Ali Asghar Alesheikh, Ali Jafari, Aynaz Lotfata

2024Scientific Reports17 citationsDOIOpen Access PDF

Abstract

Understanding the spatial and temporal dynamics of air pollutants is crucial for effective urban air pollution management. This study focuses on the temporal dynamics of air quality monitoring stations (AQMSs) and the association among air pollutants, particularly PM 2.5 , in Tehran, Iran. Using time series clustering and the Copula model, we analyzed data from 2019 to 2022. We found that the levels and dynamics of O 3 and SO 2 were similar across most AQMSs and unrelated to geographical positions. CO levels and dynamics were consistent among urban and border AQMSs, with higher concentrations in urban stations. NO 2 levels and dynamics varied significantly among northern AQMSs with no relationship geographical positions. PM 10 levels and dynamics had a relationship with geographical positions, with western clusters having the highest and northern clusters the lowest concentrations. The dynamics of PM 2.5 showed significant relationship among AQMSs in the eastern, southern, and western regions, but not in the north. We also observed that PM 10 and O 3 levels were higher in warm seasons, whereas CO, SO 2 , NO 2 , and PM 2.5 levels were higher in cold seasons. Most pollutants, except O 3 , peaked during traffic hours. Notably, the significant increase in PM 2.5 since spring 2021 was primarily due to PM 10 . Policymakers should focus on these spatial and temporal variations to improve urban air quality and public health outcomes through targeted interventions.

Topics & Concepts

Air pollutionPollutantAir pollutantsPollutionFocus (optics)Environmental scienceEnvironmental healthEnvironmental planningGeographyMedicineEcologyBiologyOpticsPhysicsAir Quality Monitoring and ForecastingAtmospheric chemistry and aerosolsAtmospheric aerosols and clouds