Meotti Bianca, Ibarra-Espinosa Sergio, Hoinaski Leonardo
Department of Sanitary and Environmental Engineering, Federal University of Santa Catarina, Florianópolis, Brazil.
Department of Civil, Construction, and Environmental Engineering, North Carolina State University, Raleigh, NC, USA.
Environ Technol. 2025 Jul;46(17):3257-3270. doi: 10.1080/09593330.2025.2450556. Epub 2025 Jan 15.
Precise estimates of vehicular emissions at fine spatial scales are essential for effective emission reduction strategies. Achieving high-resolution vehicular emission inventories necessitates detailed data on traffic flow, driving patterns, and vehicle speeds for each road network segment. However, in developing countries, the lack of comprehensive traffic data, limited infrastructure, and insufficient monitoring systems constrains the development of high-resolution inventories. This gap poses significant challenges for accurately quantify emissions in regions that often experience rapid urbanisation and traffic growth. Here, we propose a novel method to enhance the spatial disaggregation of large-scale vehicular emission inventories. By analysing road-level emissions data from 63 Brazilian municipalities, we developed a model that predicts weighting factors to disaggregate vehicular emissions into a gridded format, based on the proportion of primary road lengths. Our findings indicate that the predicted weighting factors significantly improve the spatial disaggregation of vehicular emissions compared to the traditional road density method by reasonably increasing the emissions in high vehicular activity areas. This approach not only provides more accurate representations of vehicular emissions for urban planning in Brazil but also offers a solution that can be adapted to enhance top-down vehicular emissions inventories globally. Our study offers a valuable tool that can be tailored to various regions, enabling more precise urban planning and policy-making for air quality management worldwide.
在精细空间尺度上精确估算车辆排放对于有效的减排策略至关重要。要实现高分辨率的车辆排放清单,需要每个道路网络路段的交通流量、驾驶模式和车速的详细数据。然而,在发展中国家,缺乏全面的交通数据、有限的基础设施和不足的监测系统限制了高分辨率清单的编制。这种差距给经常经历快速城市化和交通增长的地区准确量化排放带来了重大挑战。在此,我们提出一种新方法来增强大规模车辆排放清单的空间分解。通过分析来自巴西63个城市的道路层面排放数据,我们开发了一个模型,该模型根据主要道路长度的比例预测加权因子,以将车辆排放分解为网格化形式。我们的研究结果表明,与传统的道路密度方法相比,预测的加权因子通过合理增加高车辆活动区域的排放,显著改善了车辆排放的空间分解。这种方法不仅为巴西的城市规划提供了更准确的车辆排放表示,还提供了一种可适用于全球增强自上而下车辆排放清单的解决方案。我们的研究提供了一个有价值的工具,可针对不同地区进行定制,从而为全球空气质量管理实现更精确的城市规划和政策制定。