Effects of the Emissions of Vehicles Ahead on In-Car Exposure to Traffic-Related Air Pollutants: A Multiple Statistical Analysis Approach

IF 4.3 2区 环境科学与生态学 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Indoor air Pub Date : 2024-10-08 DOI:10.1155/2024/6377126
Davide Campagnolo, Andrea Cattaneo, Simona Iodice, Chiara Favero, Simone Lioi, Luca Boniardi, Francesca Borghi, Giacomo Fanti, Marta Keller, Sabrina Rovelli, Carolina Zellino, Giovanni De Vito, Andrea Spinazzè, Silvia Fustinoni, Valentina Bollati, Domenico M. Cavallo
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Abstract

Traffic-related air pollutants inside vehicle cabins are often extremely high compared to background pollution concentrations. The study of the determinants of these concentrations is particularly important for professional drivers and commuters who spend long periods in vehicles. This study is aimed at identifying and quantifying the effect of several exposure determinants on carbon monoxide (CO), equivalent black carbon (eBC), two particulate matter (PM) fractions (PM0.3–1 and PM1–2.5), and ultrafine particle (UFP) concentrations inside a passenger car cabin. The novelty of this work consists in examining the effects of the emissions of the first vehicle ahead (henceforth called “leading vehicle”) on pollutant concentrations inside the cabin of the following vehicle (i.e., the car that was equipped with the air monitoring devices), with particular emphasis on the role of the leading vehicle characteristics (e.g., emission reduction technologies). The real-time instrumentation was placed inside the cabin of a petrol passenger car, which was driven by the same operator two times per day on the same route in real driving conditions. The in-cabin ventilation settings were set as follows: windows closed, air conditioning and recirculation modes off, and the fanned ventilation system on. The measurements were conducted over a total of 10 weekdays during two different seasons (i.e., summer and autumn). A video camera fixed to the windscreen was used to retrieve information about traffic conditions and leading vehicle characteristics through careful video analysis. The associations among pollutant concentrations and their potential determinants were evaluated using generalized estimating equation univariate and multiple models. The results confirmed the significant impact of several well-known determinants such as seasonality, microclimatic parameters, traffic jam situations, and route characteristics. Moreover, the outcomes shed light on the key role of leading vehicle emissions as determinant factors of the pollutant concentrations inside car cabins. Indeed, in the tested cabin ventilation conditions, it was demonstrated that in-cabin pollutant concentrations were significantly higher with leading vehicles ahead (from +14.6% to +67.5%) compared to empty road conditions, even though the introduction of newer technologies with better emissions reduction helped mitigate their effect. Additionally, diesel-fuelled leading vehicles compared to petrol-fuelled leading vehicles were impactful on in-cabin CO (−7.2%) and eBC (+45.3%) concentrations. An important effect (+30.4%) on in-vehicle PM1–2.5 concentrations was found with heavy-duty compared to light-duty leading vehicles. Finally, this research pointed out that road-scale factors are more important determinant factors of in-cabin concentrations than local pollution and meteorological conditions.

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前方车辆的排放对车内接触交通相关空气污染物的影响:多重统计分析方法
与背景污染浓度相比,车厢内与交通相关的空气污染物通常极高。研究这些浓度的决定因素对于长时间待在车内的职业司机和通勤者尤为重要。本研究旨在确定和量化若干暴露决定因素对乘用车舱内一氧化碳(CO)、等效黑碳(eBC)、两种颗粒物(PM)组分(PM0.3-1 和 PM1-2.5)以及超细颗粒物(UFP)浓度的影响。这项工作的新颖之处在于研究了前方第一辆车(以下称为 "前导车")的排放对后方车辆(即安装了空气监测装置的车辆)车厢内污染物浓度的影响,特别强调了前导车特性(如减排技术)的作用。实时仪器被放置在一辆汽油客车的车厢内,由同一操作员每天两次在相同的路线上在真实的驾驶条件下进行驾驶。车内通风设置如下:车窗关闭,空调和再循环模式关闭,通风系统打开。测量在两个不同季节(即夏季和秋季)共进行了 10 个工作日。通过对固定在挡风玻璃上的摄像机进行仔细的视频分析,获取有关交通状况和主要车辆特征的信息。使用广义估计方程单变量和多变量模型评估了污染物浓度与其潜在决定因素之间的关联。结果证实,一些众所周知的决定因素,如季节性、微气候参数、交通堵塞情况和路线特征等,都会产生重大影响。此外,研究结果还揭示了汽车尾气排放作为车厢内污染物浓度决定因素的关键作用。事实上,在测试的车厢通风条件下,结果表明,与空旷路面条件相比,前方有领先车辆时,车厢内污染物浓度明显更高(从+14.6%到+67.5%不等),尽管引入了减排效果更好的新技术有助于减轻其影响。此外,以柴油为燃料的前导车辆与以汽油为燃料的前导车辆相比,对车内一氧化碳(-7.2%)和电子生物量(+45.3%)浓度的影响更大。与轻型主导车辆相比,重型主导车辆对车内 PM1-2.5 浓度有重要影响(+30.4%)。最后,这项研究指出,与本地污染和气象条件相比,道路尺度因素是车内浓度的更重要决定因素。
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来源期刊
Indoor air
Indoor air 环境科学-工程:环境
CiteScore
10.80
自引率
10.30%
发文量
175
审稿时长
3 months
期刊介绍: The quality of the environment within buildings is a topic of major importance for public health. Indoor Air provides a location for reporting original research results in the broad area defined by the indoor environment of non-industrial buildings. An international journal with multidisciplinary content, Indoor Air publishes papers reflecting the broad categories of interest in this field: health effects; thermal comfort; monitoring and modelling; source characterization; ventilation and other environmental control techniques. The research results present the basic information to allow designers, building owners, and operators to provide a healthy and comfortable environment for building occupants, as well as giving medical practitioners information on how to deal with illnesses related to the indoor environment.
期刊最新文献
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