Gavidia-Calderón Mario, Schuch Daniel, Vara-Vela Angel, Inoue Rita, Freitas Edmilson D, Albuquerque Taciana Toledo de A, Zhang Yang, Andrade Maria de Fatima, Bell Michelle L
Departamento de Ciências Atmosféricas, Instituto de Astronomia, Geofísica e Ciências Atmosféricas, Universidade de São Paulo, 05508-090, São Paulo, Brazil.
Department of Civil and Environmental Engineering, Northeastern University, Boston, MA 02115, USA.
Atmos Environ (1994). 2024 Feb 15;319:120301. doi: 10.1016/j.atmosenv.2023.120301.
Numerous studies have used air quality models to estimate pollutant concentrations in the Metropolitan Area of São Paulo (MASP) by using different inputs and assumptions. Our objectives are to summarize these studies, compare their performance, configurations, and inputs, and recommend areas of further research. We examined 29 air quality modeling studies that focused on ozone (O) and fine particulate matter (PM) performed over the MASP, published from 2001 to 2023. The California Institute of Technology airshed model (CIT) was the most used offline model, while the Weather Research and Forecasting model coupled with Chemistry (WRF-Chem) was the most used online model. Because the main source of air pollution in the MASP is the vehicular fleet, it is commonly used as the only anthropogenic input emissions. Simulation periods were typically the end of winter and during spring, seasons with higher O and PM concentrations. Model performance for hourly ozone is good with half of the studies with Pearson correlation above 0.6 and root mean square error (RMSE) ranging from 7.7 to 27.1 ppb. Fewer studies modeled PM and their performance is not as good as ozone estimates. Lack of information on emission sources, pollutant measurements, and urban meteorology parameters is the main limitation to perform air quality modeling. Nevertheless, researchers have used measurement campaign data to update emission factors, estimate temporal emission profiles, and estimate volatile organic compounds (VOCs) and aerosol speciation. They also tested different emission spatial disaggregation approaches and transitioned to global meteorological reanalysis with a higher spatial resolution. Areas of research to explore are further evaluation of models' physics and chemical configurations, the impact of climate change on air quality, the use of satellite data, data assimilation techniques, and using model results in health impact studies. This work provides an overview of advancements in air quality modeling within the MASP and offers practical approaches for modeling air quality in other South American cities with limited data, particularly those heavily impacted by vehicle emissions.
许多研究通过使用不同的输入和假设,利用空气质量模型来估算圣保罗大都市区(MASP)的污染物浓度。我们的目标是总结这些研究,比较它们的性能、配置和输入,并推荐进一步研究的领域。我们审查了29项针对MASP进行的、聚焦于臭氧(O)和细颗粒物(PM)的空气质量建模研究,这些研究发表于2001年至2023年。加州理工学院空气污染模型(CIT)是使用最多的离线模型,而天气研究与预报模型耦合化学(WRF-Chem)是使用最多的在线模型。由于MASP空气污染的主要来源是车辆,它通常被用作唯一的人为输入排放源。模拟期通常是冬季末和春季,这两个季节的O和PM浓度较高。每小时臭氧的模型性能良好,一半的研究中皮尔逊相关系数高于0.6,均方根误差(RMSE)在7.7至27.1 ppb之间。对PM进行建模的研究较少,其性能不如臭氧估算。缺乏排放源、污染物测量和城市气象参数信息是进行空气质量建模的主要限制。尽管如此,研究人员已利用测量活动数据来更新排放因子、估算时间排放概况以及估算挥发性有机化合物(VOCs)和气溶胶形态。他们还测试了不同的排放空间分解方法,并转向更高空间分辨率的全球气象再分析。有待探索的研究领域包括对模型物理和化学配置的进一步评估、气候变化对空气质量的影响、卫星数据的使用、数据同化技术以及在健康影响研究中使用模型结果。这项工作概述了MASP内空气质量建模的进展,并为在数据有限的其他南美城市,特别是那些受车辆排放严重影响的城市进行空气质量建模提供了实用方法。