Department of Environmental Science, Kangwon National University, Chuncheon 24341, Korea.
School of Natural Resources and Environmental Science, Kangwon National University, Chuncheon 24341, Korea.
Int J Environ Res Public Health. 2020 Sep 22;17(18):6915. doi: 10.3390/ijerph17186915.
In this study, we have assessed the three-dimensional (3-D) spatial extent of near-road air pollution around a signalized intersection in a densely populated area using collaborating methodologies of stationary measurements, drone monitoring, and atmospheric dispersion modeling. Stationary measurement data collected in the roadside apartment building showed a substantial effect of emitted pollutants, such as nitrogen oxides (NO), black carbon (BC), and ultrafine particles (UFPs), especially during the morning rush hours. Vertical drone monitoring near the road intersection exhibited a steeper decreasing trend with increasing altitude for BC concentration rather than for fine particulate matter (PM) concentration below the apartment building height. Atmospheric NO dispersion was simulated using the weather research and forecasting (WRF) and computational fluid dynamics (CFD) models for the drone measurement periods. Based on the agreement between the measured BC and simulated NO concentrations, we concluded that the air pollution around the road intersection has adverse effects on the health of residents living within the 3-D spatial extent within at least 120 m horizontally and a half of building height vertically during the morning rush hours. The comparability between drone monitoring and WRF-CFD modeling can further guarantee the identification of air pollution hotspots using the methods.
在本研究中,我们使用固定测量、无人机监测和大气扩散模型相结合的方法,评估了一个人口密集地区信号交叉口附近道路空气污染的三维(3-D)空间范围。在路边公寓楼采集的固定测量数据显示,排放的污染物(如氮氧化物(NO)、黑碳(BC)和超细颗粒(UFPs))具有显著影响,尤其是在早晨高峰时段。靠近道路交叉口的无人机垂直监测显示,BC 浓度随海拔高度的增加呈陡峭下降趋势,而公寓楼高度以下的细颗粒物(PM)浓度则呈平缓下降趋势。使用天气研究和预报(WRF)和计算流体动力学(CFD)模型对大气 NO 进行了扩散模拟,以进行无人机测量时段。基于实测 BC 和模拟 NO 浓度之间的一致性,我们得出结论,道路交叉口周围的空气污染对至少 120 米水平距离内和早晨高峰时段半层楼高范围内的居民健康产生不利影响。无人机监测和 WRF-CFD 建模之间的可比性可以进一步保证使用这些方法识别空气污染热点。