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描述城市交叉口和高速公路站点附近环境空气质量的决定因素。

Characterizing Determinants of Near-Road Ambient Air Quality for an Urban Intersection and a Freeway Site.

机构信息

North Carolina State University.

Desert Research Institute.

出版信息

Res Rep Health Eff Inst. 2022 Sep;2022(207):1-73.

Abstract

INTRODUCTION

Near-road ambient air pollution concentrations that are affected by vehicle emissions are typically characterized by substantial spatial variability with respect to distance from the roadway and temporal variability based on the time of day, day of week, and season. The goal of this work is to identify variables that explain either temporal or spatial variability based on case studies for a freeway site and an urban intersection site. The key hypothesis is that dispersion modeling of near-road pollutant concentrations could be improved by adding estimates or indices for site-specific explanatory variables, particularly related to traffic. Based on case studies for a freeway site and an urban intersection site, the specific aims of this project are to (1) develop and test regression models that explain variability in traffic-related air pollutant (TRAP) ambient concentration at two near-roadway locations; (2) develop and test refined proxies for land use, traffic, emissions and dispersion; and (3) prioritize inputs according to their ability to explain variability in ambient concentrations to help focus efforts for future data collection and model development.

UNLABELLED

The key pollutants that are the key focus of this work include nitrogen oxides (NO), carbon monoxide (CO), black carbon (BC), fine particulate matter (PM; PM ≤ 2.5 μm in aerodynamic diameter), ultrafine particles (UFPs; PM ≤ 0.1 μm in aerodynamic diameter), and ozone (O). NO, CO, and BC are tracers of vehicle emissions and dispersion. PM is influenced by vehicle table emissions and regional sources. UFPs are sensitive to primary vehicle emissions. Secondary particles can form near roadways and on regional scales, influencing both PM and UFP concentrations. O concentrations are influenced by interaction with NO near the roadway. Nitrogen dioxide (NO), CO, PM, and O are regulated under the National Ambient Air Quality Standards (NAAQS) because of demonstrated health effects. BC and UFPs are of concern for their potential health effects. Therefore, these pollutants are the focus of this work.

METHODS

The methodological approach includes case studies for which variables are identified and assesses their ability to explain either temporal or spatial variability in pollutant ambient concentrations. The case studies include one freeway location and one urban intersection. The case studies address (1) temporal variability at a fixed monitor 10 meters from a freeway; (2) downwind concentrations perpendicular to the same location; (3) variability in 24-hour average pollutant concentrations at five sites near an urban intersection; and (4) spatiotemporal variability along a walking path near that same intersection.

UNLABELLED

The study boundary encompasses key factors in the continuum from vehicle emissions to near-road exposure concentrations. These factors include land use, transportation infrastructure and traffic control, vehicle mix, vehicle (traffic) flow, on-road emissions, meteorology, transport and evolution (transformation) of primary emissions, and production of secondary pollutants, and their resulting impact on measured concentrations in the near-road environment. We conducted field measurements of land use, traffic, vehicle emissions, and near-road ambient concentrations in the vicinity of two newly installed fixed-site monitors. One is a monitoring station jointly operated by the U.S. Environmental Protection Agency (U.S. EPA) and the North Carolina Department of Environmental Quality (NC DEQ) on I-40 between Airport Boulevard and I-540 in Wake County, North Carolina. The other is a fixed-site monitor for measuring PM at the North Carolina Central University (NCCU) campus on E. Lawson Street in Durham, North Carolina. We refer to these two locations as the freeway site and the urban site, respectively. We developed statistical models for the freeway and urban sites.

RESULTS

We quantified land use metrics at each site, such as distances to the nearest bus stop. For the freeway site, we quantified lane-by-lane total vehicle count, heavy vehicle (HV) count, and several vehicle-activity indices that account for distance from each lane to the roadside monitor. For the urban site, we quantified vehicle counts for all 12 turning movements through the intersection. At each site, we measured microscale vehicle tailpipe emissions using a portable emission measurement system.

UNLABELLED

At the freeway site, we measured the spatial gradient of NO, BC, UFPs, and PM, quantified particle size distributions at selected distances from the roadway and assessed partitioning of particles as a function of evolving volatility. We also quantified fleet-average emission factors for several pollutants.

UNLABELLED

At the urban site, we measured daily average concentrations of nitric oxide (NO), NO, O, and PM at five sites surrounding the intersection of interest; we also measured high resolution (1-second to 10-second averages) concentrations of O, PM, and UFPs along a pedestrian transect. At both sites, the Research LINE-source (R-LINE) dispersion model was applied to predict concentration gradients based on the physical dispersion of pollution.

UNLABELLED

Statistical models were developed for each site for selected pollutants. With variables for local wind direction, heavy-vehicle index, temperature, and day type, the multiple coefficient of determination (R) was 0.61 for hourly NO concentrations at the freeway site. An interaction effect of the dispersion model and a real-time traffic index contributed only 24% of the response variance for NO at the freeway site. Local wind direction, measured near the road, was typically more important than wind direction measured some distance away, and vehicle-activity metrics directly related to actual real-time traffic were important. At the urban site, variability in pollutant concentrations measured for a pedestrian walk-along route was explained primarily by real-time traffic metrics, meteorology, time of day, season, and real-world vehicle tailpipe emissions, depending on the pollutant. The regression models explained most of the variance in measured concentrations for BC, PM, UFPs, NO, and NO at the freeway site and for UFPs and O at the urban site pedestrian transect.

CONCLUSIONS

Among the set of candidate explanatory variables, typically only a few were needed to explain most of the variability in observed ambient concentrations. At the freeway site, the concentration gradients perpendicular to the road were influenced by dilution, season, time of day, and whether the pollutant underwent chemical or physical transformations. The explanatory variables that were useful in explaining temporal variability in measured ambient concentrations, as well as spatial variability at the urban site, were typically localized real-time traffic-volume indices and local wind direction. However, the specific set of useful explanatory variables was site, context (e.g., next to road, quadrants around an intersection, pedestrian transects), and pollutant specific. Among the most novel of the indicators, variability in real-time measured tailpipe exhaust emissions was found to help explain variability in pedestrian transect UFP concentrations. UFP particle counts were very sensitive to real-time traffic indicators at both the freeway and urban sites. Localized site-specific data on traffic and meteorology contributed to explaining variability in ambient concentrations. HV traffic influenced near-road air quality at the freeway site more so than at the urban site. The statistical models typically explained most of the observed variability but were relatively simple. The results here are site-specific and not generalizable, but they are illustrative that near-road air quality can be highly sensitive to localized real-time indicators of traffic and meteorology.

摘要

介绍

受车辆排放影响的近路环境空气污染浓度具有显著的空间变异性,这种变异性与距道路的距离有关,也具有时间变异性,这种变异性取决于一天中的时间、一周中的天数和季节。这项工作的目标是根据高速公路站点和城市交叉口站点的案例研究,确定能够解释时间或空间变异性的变量。关键假设是,通过添加特定地点的解释性变量(特别是与交通相关的变量)的估计值或指标,可以改进近路污染物浓度的扩散模型。基于高速公路站点和城市交叉口站点的案例研究,本项目的具体目标是:(1)开发和测试用于解释两个近路点的交通相关空气污染物(TRAP)环境浓度变化的回归模型;(2)开发和测试用于土地利用、交通、排放和扩散的改进代理变量;(3)根据其解释环境浓度变化的能力对输入进行优先级排序,以帮助集中精力进行未来的数据收集和模型开发。

无标签

本工作的关键污染物包括氮氧化物(NO)、一氧化碳(CO)、黑碳(BC)、细颗粒物(PM;空气动力学直径≤2.5μm)、超细颗粒(UFPs;空气动力学直径≤0.1μm)和臭氧(O)。NO、CO 和 BC 是车辆排放和扩散的示踪剂。PM 受车辆表排放和区域源的影响。UFPs 对一次车辆排放敏感。二次颗粒可在道路附近和区域范围内形成,影响 PM 和 UFP 浓度。O 浓度受道路附近与 NO 相互作用的影响。二氧化氮(NO)、CO、PM 和 O 受国家环境空气质量标准(NAAQS)的管制,因为这些物质对健康有明显影响。BC 和 UFPs 因其潜在的健康影响而受到关注。因此,这些污染物是本工作的重点。

方法

该方法包括确定案例研究中的变量并评估其解释污染物环境浓度的时间或空间变化的能力。案例研究包括一个高速公路位置和一个城市交叉口。案例研究包括:(1)距高速公路 10 米处固定监测器的固定监测器的时间变化;(2)与同一位置垂直的下风浓度;(3)五个城市交叉口附近的 24 小时平均污染物浓度的变化;(4)同一交叉口附近的步行道的时空变化。

无标签

研究范围涵盖了从车辆排放到近路暴露浓度的连续体中的关键因素。这些因素包括土地利用、交通基础设施和交通管制、车辆组合、车辆(交通)流量、道路排放、气象、一次排放的传输和演变(转化),以及二次污染物的产生,以及它们对近路环境中测量浓度的影响。我们在两个新安装的固定监测器附近进行了土地利用、交通、车辆排放和近路环境浓度的现场测量。一个是美国环保署(EPA)和北卡罗来纳州环境质量部(NC DEQ)在北卡罗来纳州罗利市机场大道和 I-540 之间的 I-40 上联合运营的监测站。另一个是位于北卡罗来纳州中央大学(NCCU)校园的 E. Lawson 街的 PM 固定监测器。我们将这两个地点分别称为高速公路站点和城市站点。我们为高速公路和城市站点开发了统计模型。

结果

我们在每个站点量化了土地利用指标,例如到最近公共汽车站的距离。对于高速公路站点,我们量化了每个车道的总车辆计数、重型车辆(HV)计数,以及几个考虑到与路边监测器距离的车辆活动指数。对于城市站点,我们量化了通过交叉口的所有 12 个转弯运动的车辆计数。在每个站点,我们使用便携式排放测量系统测量微观尺度的车辆排气管排放。

无标签

在高速公路站点,我们量化了 NO、BC、UFPs 和 PM 的空间梯度,在选定的距道路的距离处量化了颗粒尺寸分布,并评估了作为挥发性不断演变函数的颗粒分配。我们还量化了几个污染物的车队平均排放因子。

无标签

在城市站点,我们测量了五个与交叉口相关的感兴趣点周围的环境中一氧化氮(NO)、NO、O 和 PM 的每日平均浓度;我们还测量了沿着行人路径的 O、PM 和 UFPs 的高分辨率(1 秒至 10 秒平均值)浓度。在两个站点,都应用了研究线源(R-LINE)扩散模型,以基于污染的物理扩散来预测浓度梯度。

无标签

为每个站点的选定污染物开发了统计模型。在具有当地风向、重型车辆指数、温度和日类型的变量的情况下,高速公路站点的每小时 NO 浓度的多重决定系数(R)为 0.61。NO 在高速公路站点的扩散模型和实时交通指数的交互效应仅占 NO 响应方差的 24%。通常,靠近道路测量的当地风向比远离道路测量的风向更重要,并且与实际实时交通直接相关的车辆活动指标很重要。在城市站点,沿行人步行路线测量的污染物浓度变化主要由实时交通指标、气象、一天中的时间、季节和实际车辆排气管排放来解释,具体取决于污染物。回归模型解释了高速公路站点的 BC、PM、UFPs、NO 和 NO 以及城市站点行人路径的 UFPs 和 O 测量浓度的大部分方差。

结论

在所选择的候选解释变量集中,通常只需要几个变量就可以解释观察到的环境浓度的大部分变化。在高速公路站点,与道路垂直的浓度梯度受稀释、季节、一天中的时间以及污染物是否经历化学或物理转化的影响。在测量环境浓度的时间变化和解释城市站点空间变化方面有用的解释变量通常是本地化的实时交通量指数和当地风向。然而,有用的解释变量具体取决于站点、上下文(例如,靠近道路、交叉口的象限、行人路径)和污染物。在最新型的指标中,我们发现实时测量的排气管尾气排放的变化有助于解释行人路径 UFPs 浓度的变化。在高速公路和城市站点,UFPs 颗粒计数对实时交通指标非常敏感。本地化的交通和气象站点特定数据有助于解释环境浓度的变化。在高速公路站点,重型车辆交通对空气质量的影响比城市站点更明显。通常,解释环境浓度的统计模型解释了大部分观测到的变异性,但相对简单。这里的结果是站点特定的,不具有普遍性,但它们说明近路空气质量对本地化的实时交通和气象指标非常敏感。

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