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开发一种用于预测新西兰奥克兰交通繁忙郊区 NO 浓度的微观尺度土地利用回归模型。

Development of a microscale land use regression model for predicting NO concentrations at a heavy trafficked suburban area in Auckland, NZ.

机构信息

School of Chemical Sciences, Faculty of Science, University of Auckland, New Zealand.

School of Environment, Faculty of Science, University of Auckland, Auckland, New Zealand.

出版信息

Sci Total Environ. 2018 Apr 1;619-620:112-119. doi: 10.1016/j.scitotenv.2017.11.028. Epub 2017 Nov 13.

DOI:10.1016/j.scitotenv.2017.11.028
PMID:29145048
Abstract

Land use regression (LUR) analysis has become a key method to explain air pollutant concentrations at unmeasured sites at city or country scales, but little is known about the applicability of LUR at microscales. We present a microscale LUR model developed for a heavy trafficked section of road in Auckland, New Zealand. We also test the within-city transferability of LUR models developed at different spatial scales (local scale and city scale). Nitrogen dioxide (NO) was measured during summer at 40 sites and a LUR model was developed based on standard criteria. The results showed that LUR models are able to capture the microscale variability with the model explaining 66% of the variability in NO concentrations. Predictor variables identified at this scale were street width, distance to major road, presence of awnings and number of bus stops, with the latter three also being important determinants at the local scale. This highlights the importance of street and building configurations for individual exposure at the street level. However, within-city transferability was limited with the number of bus stops being the only significant predictor variable at all spatial scales and locations tested, indicating the strong influence of diesel emissions related to bus traffic. These findings show that air quality monitoring is necessary at a high spatial density within cities in capturing small-scale variability in NO concentrations at the street level and assessing individual exposure to traffic related air pollutants.

摘要

土地利用回归(LUR)分析已成为在城市或国家尺度上解释未测量点处空气污染物浓度的一种重要方法,但对于 LUR 在微观尺度上的适用性知之甚少。我们提出了一种针对新西兰奥克兰一条交通繁忙路段的微观尺度 LUR 模型。我们还测试了在不同空间尺度(局部尺度和城市尺度)开发的 LUR 模型在城市内的可转移性。在夏季,我们在 40 个地点测量了二氧化氮(NO),并根据标准标准开发了 LUR 模型。结果表明,LUR 模型能够捕捉微观尺度的变化,模型解释了 NO 浓度变化的 66%。在这个尺度上确定的预测变量是街道宽度、与主要道路的距离、遮阳篷的存在和公共汽车站的数量,后三个变量也是局部尺度的重要决定因素。这突出了街道和建筑物配置对个体在街道层面暴露的重要性。然而,城市内的可转移性有限,在所有测试的空间尺度和位置,公共汽车站的数量是唯一显著的预测变量,表明与公共汽车交通相关的柴油排放对空气质量的强烈影响。这些发现表明,在城市内以高空间密度进行空气质量监测对于捕捉街道层面 NO 浓度的小尺度变化以及评估与交通相关的空气污染物对个体的暴露是必要的。

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