绿色技术土壤分析:巴西亚马逊东部城市、农业和金矿开采区潜在有毒元素含量比较。

IF 3.2 3区 环境科学与生态学 Q3 ENGINEERING, ENVIRONMENTAL Environmental Geochemistry and Health Pub Date : 2024-09-24 DOI:10.1007/s10653-024-02233-7
Gutierre Pereira Maciel, Paula Godinho Ribeiro, Quésia Sá Pavão, Antonio Rodrigues Fernandes, Markus Gastauer, Cecílio Frois Caldeira, José Tasso Felix Guimarães, Renata Andrade, Sérgio Henrique Godinho Silva, Silvio Junio Ramos
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This study compared total As, Ba, Cr, Cu, Fe, Mn, Ni, Pb, Sr, Ti, V, and Zn obtained from pXRF with their pseudo-total contents obtained through acid digestion (USEPA method 3051A) in areas influenced by artisanal gold mining in the Eastern Amazon, Brazil. pXRF data and machine learning algorithms were used to predict extractable Cu, Fe, Mn, and Zn. Linear regression models were fitted to compare the two methods, and random forest and support vector machine techniques were used to predict extractable contents. The best regression model fits for the pseudo-total PTE contents were those for Cu, Fe, Mn and Pb in agricultural areas (R<sup>2</sup> > 0.80); Fe and Mn in gold mining residue (R<sup>2</sup> > 0.70); and Ba, Cu and Mn in urban areas (R<sup>2</sup> > 0.80). 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引用次数: 0

摘要

个体金矿开采可能导致土壤受到潜在有毒元素 (PTE) 的污染,由于环境和人类健康风险,有必要对土壤质量进行监测。然而,通过酸性消化法测定 PTE 含量既费时,又会产生化学废物,还需要大量资源。作为一种替代方法,便携式 X 射线荧光 (pXRF) 提供了一种更快、更具成本效益和可持续的分析方法。本研究比较了巴西亚马逊东部受手工金矿开采影响地区通过 pXRF 获得的 As、Ba、Cr、Cu、Fe、Mn、Ni、Pb、Sr、Ti、V 和 Zn 总含量与通过酸消化(USEPA 方法 3051A)获得的伪总含量。拟合线性回归模型以比较两种方法,并使用随机森林和支持向量机技术预测可萃取物含量。假总 PTE 含量的最佳回归模型是农业地区的铜、铁、锰和铅(R2 > 0.80);金矿残渣中的铁和锰(R2 > 0.70);以及城市地区的钡、铜和锰(R2 > 0.80)。预测可萃取 PTE 含量的最佳模型是农业地区的铜(R2 = 0.72;RMSE = 2.58 mg dm-3)和锌(R2 = 0.71;RMSE = 1.44 mg dm-3),以及金矿残渣中的锌(R2 = 0.72;RMSE = 0.43 mg dm-3)。结果表明,pXRF 可以表征和预测受采矿影响地区的 PTE 含量,为土壤质量分析提供了一种可持续的方法。
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Green tech soil analysis: a comparison of potentially toxic element contents among urban, agricultural, and gold mining areas in the Eastern Brazilian Amazon.

Artisanal gold mining can lead to soil contamination with potentially toxic elements (PTEs), necessitating soil quality monitoring due to environmental and human health risks. However, determining PTE levels through acid digestion is time-consuming, generates chemical waste, and requires significant resources. As an alternative, portable X-ray fluorescence (pXRF) offers a faster, more cost-effective, and sustainable analysis. This study compared total As, Ba, Cr, Cu, Fe, Mn, Ni, Pb, Sr, Ti, V, and Zn obtained from pXRF with their pseudo-total contents obtained through acid digestion (USEPA method 3051A) in areas influenced by artisanal gold mining in the Eastern Amazon, Brazil. pXRF data and machine learning algorithms were used to predict extractable Cu, Fe, Mn, and Zn. Linear regression models were fitted to compare the two methods, and random forest and support vector machine techniques were used to predict extractable contents. The best regression model fits for the pseudo-total PTE contents were those for Cu, Fe, Mn and Pb in agricultural areas (R2 > 0.80); Fe and Mn in gold mining residue (R2 > 0.70); and Ba, Cu and Mn in urban areas (R2 > 0.80). The best models for predicting the extractable PTE contents were those for Cu (R2 = 0.72; RMSE = 2.58 mg dm-3) and Zn (R2 = 0.71; RMSE = 1.44 mg dm-3) in agricultural areas and for Zn (R2 = 0.72; RMSE = 0.43 mg dm-3) in gold mining residue. The results demonstrated that pXRF can characterize and predict PTE contents in mining-impacted areas, offering a sustainable approach to soil quality analysis.

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来源期刊
Environmental Geochemistry and Health
Environmental Geochemistry and Health 环境科学-工程:环境
CiteScore
8.00
自引率
4.80%
发文量
279
审稿时长
4.2 months
期刊介绍: Environmental Geochemistry and Health publishes original research papers and review papers across the broad field of environmental geochemistry. Environmental geochemistry and health establishes and explains links between the natural or disturbed chemical composition of the earth’s surface and the health of plants, animals and people. Beneficial elements regulate or promote enzymatic and hormonal activity whereas other elements may be toxic. Bedrock geochemistry controls the composition of soil and hence that of water and vegetation. Environmental issues, such as pollution, arising from the extraction and use of mineral resources, are discussed. The effects of contaminants introduced into the earth’s geochemical systems are examined. Geochemical surveys of soil, water and plants show how major and trace elements are distributed geographically. Associated epidemiological studies reveal the possibility of causal links between the natural or disturbed geochemical environment and disease. Experimental research illuminates the nature or consequences of natural or disturbed geochemical processes. The journal particularly welcomes novel research linking environmental geochemistry and health issues on such topics as: heavy metals (including mercury), persistent organic pollutants (POPs), and mixed chemicals emitted through human activities, such as uncontrolled recycling of electronic-waste; waste recycling; surface-atmospheric interaction processes (natural and anthropogenic emissions, vertical transport, deposition, and physical-chemical interaction) of gases and aerosols; phytoremediation/restoration of contaminated sites; food contamination and safety; environmental effects of medicines; effects and toxicity of mixed pollutants; speciation of heavy metals/metalloids; effects of mining; disturbed geochemistry from human behavior, natural or man-made hazards; particle and nanoparticle toxicology; risk and the vulnerability of populations, etc.
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