College of Chemical Engineering, Beijing University of Chemical Technology, Beijing 100029, PR China.
College of Resources and Environment, University of Chinese Academy of Sciences, Beijing 100049, PR China.
Ecotoxicol Environ Saf. 2021 Apr 15;213:112046. doi: 10.1016/j.ecoenv.2021.112046. Epub 2021 Feb 16.
Long-term retention and accumulation of heavy metals in rivers pose a great threat to the stability of ecosystems and human health. In this study, Beiyun River was taken as the example to quantitatively identify pollution sources and assess the pollution source-oriented health risk. A total of 8 heavy metals (Mn, Ni, Pb, Zn, As, Cr, Cd, and Cu) in Beiyun River were measured. Ordinary kriging (OK) and inverse distance weight (IDW) methods were used to predict the distribution of heavy metals. The results showed that the OK method is more accurate, and heavy metal pollution in the midstream and downstream is much more serious than that in the upstream. Principal component analysis-multiple linear regressions (PCA-MLR) and positive matrix factorization (PMF) methods were used to quantitatively identify pollution sources. The coefficient of determination (R) of PMF is closer to 1, and the analyzed pollution source is more refined. Furthermore, the result of source identification was imported into the health risk assessment to calculate the hazard index (HI) and carcinogenic risk (CR) of various pollution sources. The results showed that the HI and CR of As and Ni to local residents were serious in the Beiyun River. Industrial activities (23.0%) are considered to be the largest contribution of heavy metals in Beiyun River, followed by traffic source (17%), agricultural source (16%), and atmospheric deposition (16%). The source-oriented risk assessment indicated that the largest contribution of HI and CR is agricultural source in the Beiyun River, followed by industrial activities. This study provides a "target" for the precise control of pollution sources, which is of great significance for improving the fine management of the water environment in the basin.
长期以来,重金属在河流中的积累对生态系统的稳定性和人类健康构成了极大的威胁。本研究以北运河流域为例,对重金属污染进行了源解析和健康风险评价。采集北运河流域表层水样,共测定了 8 种重金属(Mn、Ni、Pb、Zn、As、Cr、Cd 和 Cu),采用普通克里金(OK)和反距离权重(IDW)方法进行重金属空间分布预测,结果表明 OK 方法更精确,中下游重金属污染比上游严重。采用主成分分析-多元线性回归(PCA-MLR)和正定矩阵因子分解(PMF)方法对重金属污染源进行定量解析,PMF 的决定系数(R)更接近 1,解析出的污染源更精细。将源解析结果导入健康风险评价,计算各污染源的危害指数(HI)和致癌风险(CR)。结果表明,As 和 Ni 对北运河流域当地居民的 HI 和 CR 风险较大。工业活动(23.0%)被认为是北运河流域重金属的最大贡献源,其次是交通源(17%)、农业源(16%)和大气沉降(16%)。基于污染源的风险评价表明,北运河流域 HI 和 CR 的最大贡献源是农业源,其次是工业活动。本研究为精准控制污染源提供了“靶向”,对提高流域水环境精细化管理具有重要意义。