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首页> 外文期刊>Environmental Pollution >Spatial distribution prediction of soil As in a large-scale arsenic slag contaminated site based on an integrated model and multi-source environmental data
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Spatial distribution prediction of soil As in a large-scale arsenic slag contaminated site based on an integrated model and multi-source environmental data

机译:基于集成模型和多源环境数据的大型砷渣污染网站中土壤的空间分布预测

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摘要

Different prediction models have important effects on the accuracy of spatial distribution simulations of heavy metals in soil. This study proposes a model (RFOK) combining a random forest (RF) with ordinary kriging (OK), multi-source environmental data such as terrain elements, site environmental elements, and remote sensing data were incorporated to predict the spatial distribution of heavy arsenic (As) in soil of a certain large arsenic slag site. The predictions results of RFOK were compared with those obtained using the RF, OK, inverse distance weighted (IDW), and stepwise regression (STEPREG) models for assessment of prediction accuracy. The results showed that arsenic pollution was widely distributed and the center of the site, including arsenic slag stacking area and production area were seriously polluted. The overall spatial distribution of arsenic pollution simulated by the five models was similar, but the IDW, RF, OK, and STEPREG showed less spatial variation of soil pollution, while RFOK simulation can better express the characteristics of details in change. The cross-validation results showed that RFOK had the lowest root-mean-square error (RMSE), mean absolute error (MAE), and mean relative error (MRE) relative to the other four models, followed by RF, OK, IDW, and STEPREG. The RMSE, MAE and MRE of RFOK decreased by 62.2%, 64.3% and 68.7%, respectively, relative to the RF model with the second highest accuracy. Compared with the traditional spatial distribution prediction model, the RFOK model proposed in this study has excellent spatial distribution prediction ability for soil heavy metal pollution with large spatial variation characteristics, which can fully explain the nonlinear relationship between pollutant content and its environmental impact elements. (c) 2020 Elsevier Ltd. All rights reserved.
机译:不同的预测模型对土壤中重金属的空间分布模拟的准确性具有重要影响。本研究提出了一种与普通克里格汀(OK)的随机森林(RF)组合的模型(RFOK),包括地形元素,站点环境元素和遥感数据等多源环境数据被纳入预测重砷的空间分布(AS)在一定大砷渣部位的土壤中。将RFOK的预测结果与使用RF,OK,逆距离加权(IDW)和逐步回归(STEPREG)模型获得的那些进行比较,用于评估预测精度。结果表明,砷污染广泛分布,包括砷渣堆积面积和生产区的地点的中心受到严重污染。五种模型模拟的砷污染的总空间分布类似,但IDW,RF,OK和STEPREG显示出土壤污染的空间变化较小,而RFOK模拟可以更好地表达变革中细节的特征。交叉验证结果表明,RFOK具有最低的根均方误差(RMSE),平均值误差(MAE),以及相对于其他四个模型的平均相对误差(MRE),其次是RF,OK,IDW,和stepreg。 RFOK的RMSE,MAE和MRE相对于具有第二个最高精度的RF模型,分别分别下降了62.2%,64.3%和68.7%。与传统的空间分布预测模型相比,本研究提出的RFOK模型具有出色的空间分布预测能力,具有大的空间变化特性的土壤重金属污染,这可以充分解释污染物含量与其环境影响元素之间的非线性关系。 (c)2020 elestvier有限公司保留所有权利。

著录项

  • 来源
    《Environmental Pollution》 |2020年第2期|115631.1-115631.10|共10页
  • 作者单位

    Taiyuan Normal Univ Res Ctr Sci Dev Fenhe River Valley Taiyuan 030012 Peoples R China;

    Shandong Inst Geol Sci Jinan 250013 Peoples R China;

    Taiyuan Normal Univ Res Ctr Sci Dev Fenhe River Valley Taiyuan 030012 Peoples R China;

    Taiyuan Normal Univ Dept Biol Taiyuan 030619 Peoples R China;

    Minist Ecol & Environm Tech Ctr Ecol & Environm Soil Agr & Rural Areas Beijing 100012 Peoples R China;

    Chinese Res Inst Environm Sci State Key Lab Environm Criteria & Risk Assessment Beijing 100012 Peoples R China;

    Taiyuan Normal Univ Dept Biol Taiyuan 030619 Peoples R China;

    Taiyuan Normal Univ Res Ctr Sci Dev Fenhe River Valley Taiyuan 030012 Peoples R China;

    Minist Ecol & Environm Tech Ctr Ecol & Environm Soil Agr & Rural Areas Beijing 100012 Peoples R China;

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

    Soil pollution; Spatial distribution; Contaminated site; Random forest;

    机译:土壤污染;空间分布;污染遗址;随机森林;

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