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Mobile monitoring of urban air quality at high spatial resolution by low-cost sensors: impacts of COVID-19 pandemic lockdown

机译:低成本传感器在高空间分辨率下的城市空气质量的移动监控:Covid-19大流行锁定的影响

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The development of low-cost sensors and novel calibration algorithms provides new hints to complement conventional ground-based observation sites to evaluate the spatial and temporal distribution of pollutants on hyperlocal scales (tens of meters). Here we use sensors deployed on a taxi fleet to explore the air quality in the road network of Nanjing over the course of a year (October?2019–September?2020). Based on GIS technology, we develop a grid analysis method to obtain 50?m resolution maps of major air pollutants (CO, NO 2 , and O 3 ). Through hotspot identification analysis, we find three main sources of air pollutants including traffic, industrial emissions, and cooking fumes. We find that CO and NO 2 concentrations show a pattern: highways arterial roads secondary roads branch roads residential streets, reflecting traffic volume. The O 3 concentrations in these five road types are in opposite order due to the titration effect of NO x . Combined the mobile measurements and the stationary station data, we diagnose that the contribution of traffic-related emissions to CO and NO 2 are 42.6?% and 26.3?%, respectively. Compared to the pre-COVID period, the concentrations of CO and NO 2 during the COVID-lockdown period decreased for 44.9?% and 47.1?%, respectively, and the contribution of traffic-related emissions to them both decreased by more than 50?%. With the end of the COVID-lockdown period, traffic emissions and air pollutant concentrations rebounded substantially, indicating that traffic emissions have a crucial impact on the variation of air pollutant levels in urban regions. This research demonstrates the sensing power of mobile monitoring for urban air pollution, which provides detailed information for source attribution, accurate traceability, and potential mitigation strategies at the urban micro-scale.
机译:低成本传感器和新型校准算法的开发提供了补充传统地基观察部位的新提示,以评估污染物对高相位尺度(几十米)的空间和时间分布。在这里,我们使用部署的传感器在出租车船队上探索南京路网络的空气质量,在一年内(10月份?2019- 9月?2020)。基于GIS技术,我们开发了网格分析方法,以获得主要空气污染物(CO,NO 2和O 3)的50米分辨率映射。通过热点鉴定分析,我们发现三个主要的空气污染物来源,包括交通,工业排放和烹饪烟雾。我们发现CO和NO 2浓度显示了一种模式:HICHWAYS>动脉道路&二次道路&分支道路&住宅街道,反映交通量。由于NO X的滴定效应,这五种道路类型中的O 3浓度呈相反的顺序。组合移动测量和静止站数据,我们诊断出与CO和NO 2的交通相关排放的贡献分别为42.6?%和26.3?%。与预科酸前期相比,Covid-Lockdown期间的CO和NO 2的浓度分别降低了44.9℃和47.1倍,以及对其对其交通相关排放的贡献减少了50多个? %。随着Covid-Lockdown期间的结束,交通排放和空气污染物浓度大幅反弹,表明交通排放对城市地区空气污染物水平的变化影响至关重要。该研究展示了城市空气污染的移动监测的传感力,提供了源归因,准确可追溯性和城市微观规模潜在缓解策略的详细信息。

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