特大城市
环境科学
大都市区
污染物
微粒
汽油
空气污染
空气质量指数
仪表(计算机编程)
环境工程
气溶胶
采样(信号处理)
人口
大气科学
气象学
地理
废物管理
工程类
化学
计算机科学
地质学
滤波器(信号处理)
有机化学
考古
经济
操作系统
人口学
社会学
电气工程
经济
作者
S. C. Herndon,John T. Jayne,M. S. Zahniser,Douglas R. Worsnop,B. Knighton,Eugene Alwine,Brian Lamb,M. Zavala,David D. Nelson,J. Barry McManus,Joanne H. Shorter,Manjula R. Canagaratna,T. B. Onasch,C. E. Kolb
出处
期刊:Faraday Discussions
[The Royal Society of Chemistry]
日期:2005-01-01
卷期号:130: 327-327
被引量:140
摘要
A large and increasing fraction of the planet's population lives in megacities, especially in the developing world. These large metropolitan areas generally have very high levels of both gaseous and particulate air pollutants that have severe impacts on human health, ecosystem viability, and climate on local, regional, and even continental scales. Emissions fluxes and ambient pollutant concentration distributions are generally poorly characterized for large urban areas even in developed nations. Much less is known about pollutant sources and concentration patterns in the faster growing megacities of the developing world. New methods of locating and measuring pollutant emission sources and tracking subsequent atmospheric chemical transformations and distributions are required. Measurement modes utilizing an innovative van based mobile laboratory equipped with a suite of fast response instruments to characterize the complex and "nastier" chemistry of the urban boundary layer are described. Instrumentation and measurement strategies are illustrated with examples from the Mexico City and Boston metropolitan areas. It is shown that fleet average exhaust emission ratios of formaldehyde (HCHO), acetaldehyde (CH3CHO) and benzene (C6H6) are substantial in Mexico City, with gasoline powered vehicles emitting higher levels normalized by fuel consumption. NH3 exhaust emissions from newer light duty vehicles in Mexico City exceed levels from similar traffic in Boston. A mobile conditional sampling air sample collection mode designed to collect samples from intercepted emission plumes for later analysis is also described.
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