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A principal components analysis of the factors effecting personal exposure to air pollution in urban commuters in Dublin, Ireland

机译:对爱尔兰都柏林城市通勤者个人暴露于空气污染的因素进行主成分分析

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Principal component analysis was used to examine air pollution personal exposure data of four urban commuter transport modes for their interrelationships between pollutants and relationships with traffic and meteorological data. Air quality samples of PM2.5 and VOCs were recorded during peak traffic congestion for the car, bus, cyclist and pedestrian between January 2005 and June 2006 on a busy route in Dublin, Ireland. In total, 200 personal exposure samples were recorded each comprising 17 variables describing the personal exposure concentrations, meteorological conditions and traffic conditions. The data reduction technique, principal component analysis (PCA), was used to create weighted linear combinations of the data and these were subsequently examined for interrelationships between the many variables recorded. The results of the PCA found that personal exposure concentrations in non-motorised forms of transport were influenced to a higher degree by wind speed, whereas personal exposure concentrations in motorised forms of transport were influenced to a higher degree by traffic congestion. The findings of the investigation show that the most effective mechanisms of personal exposure reduction differ between motorised and non-motorised modes of commuter transport.
机译:主成分分析用于检查四种城市通勤交通方式的空气污染个人暴露数据,以了解污染物之间的相互关系以及与交通和气象数据的关系。在2005年1月至2006年6月期间,爱尔兰都柏林繁忙的道路上,汽车,公共汽车,骑自行车的人和行人的交通拥堵高峰期间记录了PM2.5和VOC的空气质量样本。总共记录了200个人暴露样本,每个样本包含17个变量,描述了个人暴露浓度,气象条件和交通条件。数据归约技术(主成分分析(PCA))用于创建数据的加权线性组合,随后检查了这些变量之间所记录的许多变量之间的相互关系。 PCA的结果发现,非机动形式的个人暴露浓度受风速的影响较大,而机动形式的个人暴露浓度受交通拥堵的影响较大。调查结果表明,减少通勤的机动化和非机动化方式最有效的个人接触减少机制有所不同。

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