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利用移动实验室和无人机测量街道峡谷网络中空气污染物浓度的空间变异性的决定因素。

Determinants of spatial variability of air pollutant concentrations in a street canyon network measured using a mobile laboratory and a drone.

机构信息

Institute for Atmospheric and Earth System Research/Physics, Faculty of Science, University of Helsinki, P.O. Box 64, Helsinki 00014, Finland; Helsinki Institute of Sustainability Science, University of Helsinki, P.O. Box 4, Helsinki 00014, Finland.

Kjeller Vindteknikk, Tekniikantie 14, Espoo 02150, Finland.

出版信息

Sci Total Environ. 2023 Jan 15;856(Pt 1):158974. doi: 10.1016/j.scitotenv.2022.158974. Epub 2022 Sep 27.

Abstract

Urban air pollutant concentrations are highly variable both in space and time. In order to understand these variabilities high-resolution measurements of air pollutants are needed. Here we present results of a mobile laboratory and a drone measurements made within a street-canyon network in Helsinki, Finland, in summer and winter 2017. The mobile laboratory measured the total number concentration (N) and lung-deposited surface area (LDSA) of aerosol particles, and the concentrations of black carbon, nitric oxide (NO) and ozone (O). The drone measured the vertical profile of LDSA. The main aims were to examine the spatial variability of air pollutants in a wide street canyon and its immediate surroundings, and find the controlling environmental variables for the observed variability's. The highest concentrations with the most temporal variability were measured at the main street canyon when the mobile laboratory was moving with the traffic fleet for all air pollutants except O. The street canyon concentration levels were more affected by traffic rates whereas on surrounding areas, meteorological conditions dominated. Both the mean flow and turbulence were important, the latter particularly for smaller aerosol particles through LDSA and N. The formation of concentration hotspots in the street network were mostly controlled by mechanical processes but in winter thermal processes became also important for aerosol particles. LDSA showed large variability in the profile shape, and surface and background concentrations. The expected exponential decay functions worked better in well-mixed conditions in summer compared to winter. We derived equation for the vertical decay which was mostly controlled by the air temperature. Mean wind dominated the profile shape over both thermal and mechanical turbulence. This study is among the first experimental studies to demonstrate the importance of high-resolution measurements in understanding urban pollutant variability in detail.

摘要

城市空气污染物浓度在空间和时间上都具有高度可变性。为了了解这些可变性,需要进行高分辨率的空气污染物测量。在这里,我们展示了 2017 年夏季和冬季在芬兰赫尔辛基的街道峡谷网络中使用移动实验室和无人机进行的测量结果。移动实验室测量了气溶胶粒子的总浓度(N)和肺沉积表面积(LDSA),以及黑碳、一氧化氮(NO)和臭氧(O)的浓度。无人机测量了 LDSA 的垂直分布。主要目的是检查宽街道峡谷及其周围环境中空气污染物的空间变异性,并找到控制观测到的变异性的环境变量。除 O 外,当移动实验室随交通车队移动时,所有空气污染物在主要街道峡谷中均测量到最高浓度和最大时间变异性。街道峡谷的浓度水平受交通流量的影响更大,而在周围地区,气象条件则占主导地位。平均流和湍流都很重要,后者特别是对于较小的气溶胶粒子通过 LDSA 和 N 。在街道网络中形成浓度热点主要受机械过程控制,但在冬季,气溶胶粒子的热过程也变得重要。LDSA 在轮廓形状、表面和背景浓度方面表现出很大的可变性。在夏季,与冬季相比,预期的指数衰减函数在混合良好的条件下效果更好。我们得出了垂直衰减的方程,该方程主要受空气温度控制。平均风在热力和机械湍流中都主导着轮廓形状。这项研究是首批实验研究之一,证明了高分辨率测量在详细了解城市污染物变异性方面的重要性。

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