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首页> 外文期刊>Polish Journal of Environmental Studies >Comparison of Measured and Modelled Traffic-Related Air Pollution in Urban Street Canyons
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Comparison of Measured and Modelled Traffic-Related Air Pollution in Urban Street Canyons

机译:在城市街道峡谷中测量和建模的交通相关空气污染的比较

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The level of hazardous traffic pollutants, such as nitrogen dioxide (NO2), significantly increases in street canyons, which is a relevant determinant of assessing human exposure and health risks and deteriorates quality of urban air. The aim of the present study was to measure air pollution of NO2 by passive samplers in five street canyon sites with different traffic and building characteristics during two-week measurement periods in each season and to compare measured NO2 concentrations with models using the Airviro street canyon model. The data of meteorological parameters, street canyon orientation and urban background air pollution were taken into account. The study results showed that the highest measured and modelled concentrations of NO2 in street canyons were determined during spring and summer, and modelled values were higher than those measured with passive samplers, while during winter and autumn the results were vice versa. The greatest difference between measured and modelled concentrations of NO2 was determined in winter, while the highest degree of agreement was assessed in summer. We found a strong positive correlation between the measurements and modelling results. The research demonstrates the importance of considering the urban micro environments such as street canyons for the effective assessment of human exposure to transport-related emissions.
机译:街道峡谷(No2)等危险交通污染物(如氮氧(No2)的水平显着增加,这是评估人类暴露和健康风险并降低城市空气质量的相关决定因素。本研究的目的是通过在每个季节的两周测量期间,在五个街道峡谷网站中通过不同的交通和建筑特性测量No2的空气污染,并使用Airviro街峡谷模型与模型进行比较测量的No2浓度。考虑了气象参数,街道峡谷方向和城市背景空气污染的数据。研究结果表明,在春季和夏季确定了街道峡谷中的最高测量和模型浓度,而建模值高于被动采样器测量的值,而冬季秋季则结果反之亦然。在冬季确定了测量和建模浓度之间的最大差异,而夏季评估了最高程度的协议。我们发现测量结果和建模结果之间的良好正相关。该研究表明,考虑城市微环境,如街道峡谷,以便有效评估人类接触与运输相关的排放。

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