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Trend analysis of global usage of digital soil mapping models in the prediction of potentially toxic elements in soil/sediments: a bibliometric review

机译:土壤/沉积物潜在有毒元素预测中的数字土壤映射模型全球使用趋势分析:讲学综述

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摘要

The rising and continuous pollution of the soil from anthropogenic activities is of great concern. Owing to this concern, the advent of digital soil mapping (DSM) has been a tool that soil scientists use in this era to predict the potentially toxic element (PTE) content in the soil. The purpose of this paper was to conduct a review of articles, summarize and analyse the spatial prediction of potentially toxic elements, determine and compare the models' usage as well as their performance over time. Through Scopus, the Web of Science and Google Scholar, we collected papers between the year 2001 and the first quarter of 2019, which were tailored towards the spatial PTE prediction using DSM approaches. The results indicated that soil pollution emanates from diverse sources. However, it provided reasons why the authors investigate a piece of land or area, highlighting the uncertainties in mapping, number of publications per journal and continental efforts to research as well as published on trending issues regarding DSM. This paper reveals the complementary role machine learning algorithms and the geostatistical models play in DSM. Nevertheless, geostatistical approaches remain the most preferred model compared to machine learning algorithms.
机译:从人为活动的土壤上升和持续污染是非常关注的。由于这种担忧,数字土壤映射(DSM)的出现是土壤科学家在本时代使用的工具,以预测土壤中的潜在有毒元素(PTE)含量。本文的目的是对文章进行审查,总结和分析潜在有毒元素的空间预测,确定和比较模型的使用以及随着时间的推移的性能。通过Scopus,科学网站和谷歌学者,我们在2001年和2019年第一季度之间收集了论文,这些文件是使用DSM方法对空间PTE预测量身定制的。结果表明土壤污染从各种来源发出。然而,它提供了提交人调查一块土地或地区的原因,突出了绘图的不确定性,每张期刊的出版物数量和巨大努力研究以及发表关于DSM的趋势问题。本文揭示了互补的作用机器学习算法和DSM中的地质统计模型。然而,与机器学习算法相比,地统计学方法仍然是最优选的模型。

著录项

  • 来源
    《Environmental Geochemistry and Health》 |2021年第5期|1715-1739|共25页
  • 作者单位

    Czech Univ Life Sci Prague Fac Agrobiol Food & Nat Resources Dept Soil Sci & Soil Protect Kamycka 129 Prague 16500 6 Czech Republic;

    Czech Univ Life Sci Prague Fac Agrobiol Food & Nat Resources Dept Soil Sci & Soil Protect Kamycka 129 Prague 16500 6 Czech Republic;

    Czech Univ Life Sci Prague Fac Agrobiol Food & Nat Resources Dept Soil Sci & Soil Protect Kamycka 129 Prague 16500 6 Czech Republic;

    Czech Univ Life Sci Prague Fac Agrobiol Food & Nat Resources Dept Soil Sci & Soil Protect Kamycka 129 Prague 16500 6 Czech Republic;

    Czech Univ Life Sci Prague Fac Agrobiol Food & Nat Resources Dept Soil Sci & Soil Protect Kamycka 129 Prague 16500 6 Czech Republic;

    Czech Univ Life Sci Prague Fac Agrobiol Food & Nat Resources Dept Soil Sci & Soil Protect Kamycka 129 Prague 16500 6 Czech Republic;

    Czech Univ Life Sci Prague Fac Agrobiol Food & Nat Resources Dept Soil Sci & Soil Protect Kamycka 129 Prague 16500 6 Czech Republic;

  • 收录信息 美国《科学引文索引》(SCI);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

    Digital soil mapping; Spatial prediction; Geostatistics; Machine learning; Algorithms; Potentially toxic elements; Soil pollution;

    机译:数字土壤映射;空间预测;地质学习;机器学习;算法;潜在的有毒元素;土壤污染;
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