科研动态

首页 > 科学研究 > 科研动态 > 正文

赵国永博士团队在SCI期刊《Environmental Monitoring and Assessment》发表论文

时间:2021-11-21 15:29:02 来源:科研与研究生管理办公室 作者:闫军辉 阅读:

标题:Pollution characteristics, spatial distribution, and source identification of heavy metals in road dust in a central eastern city in China: a comprehensive survey

作者:Guoyong Zhao, Ronglei Zhang, Yan Han, Jianing Meng, Qiang Qiao, Hetan Li

来源出版物:Environmental Monitoring and Assessment2021年,193

DOI10.1007/s10661-021-09584-z

出版年: 2021

文献类型:Article

语种:英文

摘要:Road dust enriched with heavy metals (HMs) is detrimental to ecosystems and human health in urban environments. In this study, it is to explore the concentrations, spatial distribution, contaminated levels, and source identification of six HMs (lead (Pb), zinc (Zn), copper (Cu), cobalt (Co), chromium (Cr), and nickel (Ni)) based on 130 road dusts in Xinyang urban area. The results indicated that the contents of Pb, Zn, Cu, and Co were higher than the background values in more than 99% of the samples, and their average concentrations were 15.2, 9.2, 8.6, and 6.3 times the background value, respectively. The spatial distribution of high-value areas for Pb, Zn, Cu, Cr, and Ni was more similar, which was associated with traffic density near major roads and population and settlement patterns. Co was relatively different from the five elements, which was distributed in the areas of residence, commerce, and industry. Furthermore, the investigated HMs were clearly polluted, with Pb, Zn, Cu, and Co indicating high levels of contamination, while Cr and Ni were moderately polluted. The comprehensive pollution of the six HMs was mostly moderate to heavy in this study. Moreover, three sources of HMs designated by correlation analysis (CA) and principal component analysis (PCA) were mixed traffic emissions and industrial waste for Cu and Cr; automotive emissions for Pb, Ni, and Zn; and mixed domestic waste and industrial activities for Co, with contributions of 42.3%, 46.4%, and 11.3% via the principal component analysis multiple linear regression (PCA-MLR) model. The multi-factor index for pollution assessment combined with source identification is extremely effective and practical for providing reliable data support and a theoretical reference for pollution monitoring and governance.

关键词:Heavy metalsRoad dustPollution assessmentSource identificationSpatial distribution

影响因子:2.871

论文连接:https://doi.org/10.1007/s10661-021-09584-z

 

编辑:闫军辉