Research on urban ambient air monitoring network assessment guidance
JIANG Xiao-qun1, SONG Guo-jun1, WANG Teng1, WANG Shuai2, WANG Kun1, WANG Li1
1. School of Environment & Natural Resources, Renming University of China, Beijing 100872, China;
2. Shenyang Environmental Monitoring Centre, Shenyang 110015, China
Aiming at optimizing the Urban Ambient Air Monitoring Network (UAAMN), which borrowed from practices of many countries/cities, the general procedure of assessment management was put forward, the key index matrix of assessment was constructed, and the methodology of air quality monitoring network assessment for distinguishing pollutants was established. Taking 46 stations in Shenyang (including districts and counties) and six surrounding cities as an example, which took cost-benefit into account, this method was used to evaluate the monitoring network of PM2.5. The results showed that this method can be successfully applied to the optimization of UAAMNA, Shenhe District needed to add a maximum concentration station, Dadong District needed to add a high population density station, Huanggu District needed to add a cross border station. In addition, cross-city sites such as Shenyang-Tieling, Shenyang-Benxi and Shenyang-Liaoyang should be set up. In the future, the further research of urban air quality monitoring network assessment was about to establish regular assessment system of air quality monitoring network, implement classification assessment of monitoring stations and distinguish pollutant types.
姜晓群, 宋国君, 王腾, 王帅, 王昆, 王力. 城市空气质量监测网络评估方法[J]. 中国环境科学, 2020, 40(1): 115-122.
JIANG Xiao-qun, SONG Guo-jun, WANG Teng, WANG Shuai, WANG Kun, WANG Li. Research on urban ambient air monitoring network assessment guidance. CHINA ENVIRONMENTAL SCIENCECE, 2020, 40(1): 115-122.
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