Department of Mathematics, The Hong Kong University of Science and Technology, Clear Water Bay, Kowloon, Hong Kong.
Department of Geography, The University of Hong Kong, Hong Kong.
Int J Environ Res Public Health. 2021 Jun 17;18(12):6532. doi: 10.3390/ijerph18126532.
Excessive traffic pollutant emissions in high-density cities result in thermal discomfort and are associated with devastating health impacts. In this study, an improved data analytic framework that combines geo-processing techniques, social habits of local citizens like traffic patterns and working schedule and district-wise building morphologies was established to retrieve street-level traffic NO and PM emissions in all 18 districts of Hong Kong. The identification of possible human activity regions further visualizes the intersection between emission sources and human mobility. The updated spatial distribution of traffic emission could serve as good indicators for better air quality management, as well as the planning of social infrastructures in the neighborhood environment. Further, geo-processed traffic emission figures can systematically be distributed to respective districts via mathematical means, while the correlations of NO and mortality within different case studies range from 0.371 to 0.783, while varying from 0.509 to 0.754 for PM, with some assumptions imposed in our study. Outlying districts and good practices of maintaining an environmentally friendly transportation network were also identified and analyzed via statistical means. This newly developed data-driven framework of allocating and quantifying traffic emission could possibly be extended to other dense and heavily polluted cities, with the aim of enhancing health monitoring campaigns and relevant policy implementations.
高密度城市中过度的交通污染物排放导致热舒适度不佳,并与破坏性的健康影响有关。在这项研究中,建立了一个改进的数据分析框架,该框架结合了地理处理技术、当地市民的交通模式和工作时间表等社会习惯以及按区划分的建筑形态,以检索香港 18 个区的街道级交通 NO 和 PM 排放。可能的人类活动区域的识别进一步将排放源和人类流动性之间的交点可视化。更新的交通排放空间分布可以作为更好的空气质量管理以及邻里环境中的社会基础设施规划的良好指标。此外,可以通过数学手段将地理处理后的交通排放数据系统地分配到各个区域,而不同案例研究中 NO 和死亡率之间的相关性在 0.371 到 0.783 之间变化,而 PM 之间的相关性在 0.509 到 0.754 之间变化,在我们的研究中还存在一些假设。还通过统计手段识别和分析了偏远地区和维护环保交通网络的良好做法。这个新开发的数据驱动的交通排放分配和量化框架可以扩展到其他密集和污染严重的城市,以加强健康监测活动和相关政策的实施。