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人为和自然因素对中国淮河流域上游地表饮用水水源地重金属污染及空间分布的定量影响

Quantitative Effects of Anthropogenic and Natural Factors on Heavy Metals Pollution and Spatial Distribution in Surface Drinking Water Sources in the Upper Huaihe River Basin in China.

作者信息

Liu Tong, Wang Mingya, Zhang Chunhui, Yang Shili, Zhang Fan, Jia Luhao, Ma Wanqi, Sui Shaobo, Liu Qingwei, Wang Mingshi

机构信息

College of Resource and Environment, Henan Polytechnic University, Jiaozuo 454003, China.

出版信息

Toxics. 2024 Jul 18;12(7):517. doi: 10.3390/toxics12070517.

Abstract

The water quality of sources in the Huaihe River Basin significantly affects the lives and health of approximately 16.7% of China's population. Identifying and quantifying pollution sources and risks is essential for effective water resource management. This study utilized Monte Carlo simulations and Geodetector to assess water quality and eutrophication, as well as to evaluate the sources of heavy metals and the associated health risks for both adults and children. The results showed that eutrophication of water sources in Huaihe River was severe, with an overall EI value of 37.92; 67.8% of the water sources were classified as mesotrophic and 32.2% classified as eutrophic. Water quality and eutrophication levels in the southern mountainous regions were better than those in the densely populated northern areas. Adults were found to have a higher carcinogenic risk than children, whereas children faced a higher noncarcinogenic risk than adults. Cr presented the highest carcinogenic risk, affecting more than 99.8% of both adults and children at levels above 1 × 10 but not exceeding 1 × 10. The noncarcinogenic risk from metals did not surpass a level of 1, except for Pb. As was primarily influenced by agricultural activities and transportation, whereas Cd, Cr, and Pb were mainly affected by industrial activities, particularly in local textile industries such as knitting and clothing manufacturing. The analysis demonstrated that the influence of anthropogenic factors on heavy metal distribution was significantly enhanced by indirect natural factors. For example, the explanatory power of Precipitation and Road Network Density on As was 0.362 and 0.189, respectively, whereas their interaction had an explanatory power as high as 0.673. This study indicates that the geodetector method is effective in elucidating the factors influencing heavy metal distribution in water, thereby providing valuable insights into pollution sources in global drinking water.

摘要

淮河流域水源的水质显著影响着中国约16.7%人口的生活和健康。识别和量化污染源及风险对于有效的水资源管理至关重要。本研究利用蒙特卡洛模拟和地理探测器来评估水质和富营养化情况,同时评估重金属来源以及对成人和儿童的相关健康风险。结果表明,淮河水源的富营养化情况严重,总体EI值为37.92;67.8%的水源被归类为中营养,32.2%被归类为富营养。南部山区的水质和富营养化水平优于人口密集的北部地区。研究发现,成人的致癌风险高于儿童,而儿童面临的非致癌风险高于成人。Cr呈现出最高的致癌风险,在浓度高于1×10但不超过1×10时,对超过99.8%的成人和儿童产生影响。除Pb外,金属的非致癌风险未超过1的水平。As主要受农业活动和交通影响,而Cd、Cr和Pb主要受工业活动影响,特别是当地的纺织行业,如针织和服装制造。分析表明,间接自然因素显著增强了人为因素对重金属分布的影响。例如,降水量和道路网络密度对As的解释力分别为0.362和0.189,而它们的相互作用解释力高达0.673。本研究表明,地理探测器方法在阐明影响水中重金属分布的因素方面是有效的,从而为全球饮用水中的污染源提供了有价值的见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/751a/11280819/ef998d58c67b/toxics-12-00517-g001.jpg

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