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首页> 外文期刊>Environmental Monitoring and Assessment >Assessment of iron-rich tailings via portable X-ray fluorescence spectrometry: the Mariana dam disaster, southeast Brazil
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Assessment of iron-rich tailings via portable X-ray fluorescence spectrometry: the Mariana dam disaster, southeast Brazil

机译:通过便携式X射线荧光光谱评估铁富含尾矿:Mariana Dam灾难,巴西东南部

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摘要

On November 5, 2015, the Fundao dam collapsed and released 60 million m(3) of iron-rich mining sediments into the Doce river basin, covering 1000 ha of floodplain soils across similar to 80 km from the rupture. The characterization of alluvial mud covering and/or mixed with native soil is a priority for successful environmental rehabilitation. Portable X-ray fluorescence (pXRF) spectrometry was used to (1) assess the elemental composition of native soils and alluvial mud across impacted riparian areas; and 2) predict fertility properties of the mud and soils that are crucial for environmental rehabilitation and vegetation establishment (e.g., pH, available macro and micronutrients, cation exchange capacity, organic matter). Native soils and alluvial mud were sampled across impacted areas and analyzed via pXRF and conventional laboratory methods. Random forest (RF) regression was used to predict fertility properties using pXRF data for pooled soil and alluvial mud samples. Mud and native surrounding soils were clearly differentiated based on chemical properties determined via pXRF (mainly SiO2, Al2O3, Fe2O3, TiO2, and MnO). The pXRF data and RF models successfully predicted pH for pooled samples (R-2 =0.80). Moderate predictions were obtained for soil organic matter (R-2 =0.53) and cation exchange capacity (R-2 =0.54). Considering the extent of impacted area and efforts required for successful environmental rehabilitation, the pXRF spectrometer showed great potential for screening impacted areas. It can assess total elemental composition, differentiate alluvial mud from native soils, and reasonably predict related fertility properties in pooled heterogeneous substrates (native soil +mud +river sediments).
机译:2015年11月5日,基金大坝崩溃并发布了6000万平方米(3)米(3)铁矿矿床,进入Doce River盆地,覆盖& 1000公顷的洪泛区土壤与破裂相似。冲积泥浆覆盖和/或与天然土壤混合的表征是成功环境康复的优先事项。便携式X射线荧光(PXRF)光谱法用于(1)评估对河岸地区影响的天然土壤和冲积泥的元素组成; 2)预测对环境康复和植被建立至关重要的泥土和土壤的生育性(例如,pH,可用宏观和微量营养,阳离子交换能力,有机物)。在受影响的区域中采样本地土壤和冲积泥浆,并通过PXRF和常规实验室方法进行分析。随机森林(RF)回归用于预测使用PXRF数据的生育性,用于汇集土壤和冲积泥浆样品。基于通过PXRF测定的化学性质(主要是SiO 2,Al 2 O 3,Fe 2 O 3,TiO 2和MNO)清楚地分化泥浆和本地土壤。 PXRF数据和RF模型成功预测了池样的pH值(R-2 = 0.80)。为土壤有机物质(R-2 = 0.53)和阳离子交换能力(R-2 = 0.54)获得中度预测。考虑到受影响面积和成功环境康复所需的努力,PXRF光谱仪显示出筛选受影响区域的巨大潜力。它可以评估总元素组成,区分来自天然土壤的冲积泥浆,以及合理地预测合并的异构基材(天然土壤+泥+河流沉积物中的相关生育率。

著录项

  • 来源
    《Environmental Monitoring and Assessment》 |2021年第4期|203.1-203.19|共19页
  • 作者单位

    Univ Fed Lavras Dept Forest Sci Doutor Sylvio Menicucci Ave BR-37200900 Lavras MG Brazil|Univ Georgia Savannah River Ecol PO Drawer E Aiken SC 29802 USA;

    Univ Fed Lavras Dept Soil Sci Doutor Sylvio Menicucci Ave BR-37200900 Lavras MG Brazil|Texas Tech Univ Dept Plant & Soil Sci Bayer Plant Sci Bldg Room 211A 2911 15th St Lubbock TX 79409 USA;

    Texas Tech Univ Dept Plant & Soil Sci Bayer Plant Sci Bldg Room 211A 2911 15th St Lubbock TX 79409 USA|Cent Michigan Univ Dept Earth & Atmospher Sci Mt Pleasant MI 48859 USA;

    Univ Fed Lavras Dept Forest Sci Doutor Sylvio Menicucci Ave BR-37200900 Lavras MG Brazil;

    Indian Inst Technol Agr & Food Engn Dept Kharagpur 721302 W Bengal India;

    Louisiana State Univ Dept Expt Stat Baton Rouge LA 70802 USA;

    Univ Fed Lavras Dept Soil Sci Doutor Sylvio Menicucci Ave BR-37200900 Lavras MG Brazil;

    Univ Fed Lavras Dept Forest Sci Doutor Sylvio Menicucci Ave BR-37200900 Lavras MG Brazil;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Proximal sensors; PXRF; Mining activities; Samarco dam collapse; Random forest; Environmental monitoring;

    机译:近端传感器;PXRF;采矿活动;萨马科坝崩溃;随机森林;环境监测;

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