4.7 Article

Assessment of the NO2 distribution and relationship with traffic load in the Caribbean coastal city

期刊

SCIENCE OF THE TOTAL ENVIRONMENT
卷 720, 期 -, 页码 -

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ELSEVIER
DOI: 10.1016/j.scitotenv.2020.137675

关键词

Spatial distribution of NO2; Diffusive sampling; Spatial variability; Regression model; Application of a neural network

资金

  1. Universidad del Norte

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NO2 ambient concentrations were measured in a coastal Caribbean city. Barranquilla is a Caribbean city located in the North of Colombia that has approximately 1.200.000 inhabitants and possesses a warm, humid climate. In order to obtain the concentration of the contaminant in an adequate resolution, 137 Passive diffusion tubes from Gradko (c) were installed. Tubes prepared with 20% Triethanolamine/De-ionised water were located at the roadside between 1 and 5 m from the kerb edge. The sampling period was two weeks, from 3/16/2019 to 3/30/2019. Samples were analyzed on the UV CARY1 spectrophotometer by Gradko (c). Results showed an average of 19.92 +/- 11.50 mu g/m(3), with a maximum and minimum value of 70.27 and 0.57 mu g/m(3), respectively. NO2 correlation with load traffic load was higher than with maximum traffic. The expected results include the analysis of the areas of the city with high concentrations of this pollutant that exceed the limit values established by the WHO in six (6) points; however, they never exceed the local legal limit for annual exposure, which is significantly less restrictive. Overall, the multiregression analysis is a very effective method to enrich the understanding of NO2 distributions. It can provide scientific evidence for the relationship between NO2 and traffic, beneficial for developing the targeted policies and measures to reduce NO2 pollution levels in hot spots. This research may subsidize knowledge to serve as a tool for environmental and health authorities. (C) 2020 Elsevier B.V. All rights reserved.

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