Aerosol and Air Quality Research Laboratory, Center for Aerosol Science and Engineering (CASE), Department of Energy, Environmental and Chemical Engineering, Washington University in St. Louis, St Louis, MO, USA.
Applied Particle Technology, Inc, St Louis, MO, USA.
J Air Waste Manag Assoc. 2021 Nov;71(11):1347-1360. doi: 10.1080/10962247.2021.1890276. Epub 2021 Sep 16.
Air quality is a global challenge issue, and many regions of the world, such as India, are experiencing daunting challenges. An important aspect is to identify and then control the emissions from major contributing sources. To advance this aspect, this paper describes an air quality network that has been set up in the National Capital Territory of Delhi (NCT-Delhi) to identify major contributing source categories in real-time. The various components include an innovative cloud-based dashboard to compile the data in real-time from a series of PM instruments (Beta Attenuation Monitors (BAM)) and a low-cost sensor network (22 APT- MAXIMA sensors). Furthermore, at one of the locations (urban site), three real-time chemical speciation monitors are installed to provide elemental speciation (30 elements), elemental carbon (EC), and organic carbon (OC) data. PM concentrations at different sites (urban, industrial, and background) were compared to the BAM measurements over an 8-month period from May 2019 to February 2020; spanning the summer, monsoon, autumn, and winter seasons in Delhi. The APT sensor measurements were well correlated to the BAM measurements, with R values ranging between 0.84 and 0.95 for all sites. This validated that the APT-MAXIMA low-cost sensors can be a useful tool for distributed monitoring of PM levels. The mean PM concentrations showed a trend with winter (Dec, Jan, Feb: 205.2 ± 95.1 µg m) and autumn (Oct, Nov: 171.7 ± 128.3 µg m) highs and summer (May, Jun: 64.6 ± 57.2 µg m) and monsoon (Jul, Aug, Sep: 27.6 ± 16.7 µg m) lows. The bivariate polar plot reveals high PM levels originated from local/regional combustion sources located east and south-west of the urban site, especially when high PM episodes are encountered during the festival season and other smog episodes.: Low-cost sensors are useful for distributed monitoring under both low and high pollution conditions. A cloud-based dashboard system provided real-time, remote access to the data and in the visualization of air quality in the entire region. The real-time data availability on the cloud enabled establishing hot-spot regions of air pollution, spatial variation of PM, real-time source apportionment, and health risk estimates to benefit both policy makers, and the general public.
空气质量是一个全球性的挑战问题,世界上许多地区,如印度,都在面临严峻的挑战。一个重要的方面是识别并控制主要贡献源的排放。为了推进这一方面,本文描述了在印度首都德里(NCT-Delhi)建立的空气质量网络,以实时识别主要贡献源类别。各个组成部分包括一个创新的基于云的仪表板,用于实时从一系列 PM 仪器(Beta Attenuation Monitors (BAM))和低成本传感器网络(22 个 APT-MAXIMA 传感器)中编译数据。此外,在一个地点(城市地点)安装了三个实时化学分类监测器,以提供元素分类(30 种元素)、元素碳(EC)和有机碳(OC)数据。在 2019 年 5 月至 2020 年 2 月的 8 个月期间,比较了不同地点(城市、工业和背景)的 PM 浓度与 BAM 测量结果;跨越了德里的夏季、季风、秋季和冬季。APT 传感器测量值与 BAM 测量值高度相关,所有站点的 R 值在 0.84 到 0.95 之间。这验证了 APT-MAXIMA 低成本传感器可以成为 PM 水平分布式监测的有用工具。平均 PM 浓度显示出与冬季(12 月、1 月和 2 月:205.2 ± 95.1 μg m)和秋季(10 月和 11 月:171.7 ± 128.3 μg m)高值和夏季(5 月和 6 月:64.6 ± 57.2 μg m)和季风(7 月、8 月和 9 月:27.6 ± 16.7 μg m)低值的趋势。二元极图显示,来自城市地点东部和西南部的本地/区域燃烧源的高 PM 水平,尤其是在节日期间和其他烟雾事件中遇到高 PM 事件时。低成本传感器在低污染和高污染条件下都可用于分布式监测。基于云的仪表板系统提供了对数据的实时、远程访问,并可视化了整个地区的空气质量。云的实时数据可用性使建立空气污染热点区域、PM 的空间变化、实时源分配和健康风险估计成为可能,这使政策制定者和公众都受益。