Particulate Behavior in Subway Airspace

被引:0
|
作者
Jong Ryeul Sohn
Jo-Chun Kim
Min Young Kim
Youn-Suk Son
Young Sunwoo
机构
[1] Konkuk University,Department of Environmental Engineering
[2] Konkuk University,Department of Advanced Technology Fusion
[3] Seoul Metropolitan Government Research Institute of Public Health and Environment,Department of Environmental Health
[4] Korea University,undefined
关键词
Particulate; Subway; PM; Indoor Air Quality;
D O I
10.1007/BF03654890
中图分类号
学科分类号
摘要
The most pivotal approach to improve subway indoor air quality (IAQ) is to examine the emission sources and particulate behavior. Therefore, the main objective of this study is to investigate the particulate behavior in the subway. In order to examine IAQ in the subway, a sampling and measurement campaign was carried out for 35 sites during the summer and winter seasons from May, 2005 to February, 2006. In case of 24 hour measurement, the mean concentrations (PM10-24 hr) of platform and waiting room were 156.18±53.79 μg/m3 and 111.00±53.31 μg/m3. Besides, as a result of 20 hour measurement, the mean concentrations (PM10-20 hr) of platform and waiting room were 146.09±53.71 μg/m3 and 99.08±42.77 μg/m3, respectively. In general, PM10- 24 hr was higher than PM10-20 hr, and both PM concentrations showed a high correlation coefficient (r= 0.803). It was found that the PM2.5 concentration (109.56±28.24 μg/m3) in winter was higher than that (83.66±57.82 μg/m3) in summer.
引用
收藏
页码:54 / 59
页数:5
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