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基于空间双变量分析和随机森林模型的农业土壤重金属(类金属)风险热点及影响因素识别

Risk hotspots and influencing factors identification of heavy metal(loid)s in agricultural soils using spatial bivariate analysis and random forest.

机构信息

Key Laboratory of Karst Georesources and Environment, Ministry of Education, College of Resources and Environmental Engineering, Guizhou University, Guiyang 550025, China; State Key Laboratory of Environmental Geochemistry, Institute of Geochemistry, Chinese Academy of Sciences, Guiyang 550081, China.

State Key Laboratory of Environmental Geochemistry, Institute of Geochemistry, Chinese Academy of Sciences, Guiyang 550081, China.

出版信息

Sci Total Environ. 2024 Dec 1;954:176359. doi: 10.1016/j.scitotenv.2024.176359. Epub 2024 Sep 19.

Abstract

Heavy metal(loid)s (HMs) in agricultural soils not only affect soil function and crop security, but also pose health risks to residents. However, previous concerns have typically focused on only one aspect, neglecting the other. This lack of a comprehensive approach challenges the identification of hotspots and the prioritization of factors for effective management. To address this gap, a novel method incorporating spatial bivariate analysis with random forest was proposed to identify high-risk hotspots and the key influencing factors. A large-scale dataset containing 2995 soil samples and soil HMs (As, Cd, Cr, Cu, Mn, Ni, Pb, Sb, and Zn) was obtained from across Henan province, central China. Spatial bivariate analysis of both health risk and ecological risks revealed risk hotspots. Positive matrix factorization model was initially used to investigate potential sources. Twenty-two environmental variables were selected and input into random forest to further identify the key influencing factors impacting soil accumulation. Results of local Moran's I index indicated high-high HM clusters at the western and northern margins of the province. Hotspots of high ecological and health risk were primarily observed in Xuchang and Nanyang due to the widespread township enterprises with outdated pollution control measures. As concentration and exposure frequency dominated the non-carcinogenic and carcinogenic risks. Anthropogenic activities, particularly vehicular traffic (contributing ∼37.8 % of the total heavy metals accumulation), were the dominant sources of HMs in agricultural soils. Random forest modeling indicated that soil type and PM2.5 concentrations were the most influencing natural and anthropogenic variables, respectively. Based on the above findings, control measures on traffic source should be formulated and implemented provincially; in Xuchang and Nanyang, scattered township enterprises with outdated pollution control measures should be integrated and upgraded to avoid further pollution from these sources.

摘要

重金属(loid)在农业土壤中不仅影响土壤功能和作物安全,而且对居民健康构成威胁。然而,以前的关注通常只集中在一个方面,忽略了另一个方面。这种缺乏全面方法的情况挑战了热点的识别和有效管理因素的优先级。为了解决这一差距,提出了一种将空间双变量分析与随机森林相结合的新方法,以识别高风险热点和关键影响因素。从中国中部河南省采集了包含 2995 个土壤样本和土壤重金属(As、Cd、Cr、Cu、Mn、Ni、Pb、Sb 和 Zn)的大型数据集。对健康风险和生态风险进行空间双变量分析,揭示了风险热点。最初使用正矩阵因子分解模型来研究潜在来源。选择了二十二个环境变量并输入到随机森林中,以进一步确定影响土壤积累的关键影响因素。局部 Moran's I 指数的结果表明,该省西部和北部边缘存在高-高 HM 集群。由于乡镇企业污染控制措施落后,许昌和南阳的生态和健康风险热点较高。由于人为活动,特别是车辆交通(占总重金属积累的约 37.8%)是农业土壤中重金属的主要来源。随机森林模型表明,土壤类型和 PM2.5 浓度分别是最具影响力的自然和人为变量。根据上述发现,应制定并在全省范围内实施针对交通源的控制措施;在许昌和南阳,应整合和升级乡镇企业,这些企业污染控制措施落后,以避免这些来源的进一步污染。

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