Literature DB >> 33094391

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

Prince Chapman Agyeman1, Samuel Kudjo Ahado2, Luboš Borůvka2, James Kobina Mensah Biney2, Vincent Yaw Oppong Sarkodie2, Ndiye M Kebonye2, John Kingsley2.   

Abstract

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.

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

Year:  2020        PMID: 33094391     DOI: 10.1007/s10653-020-00742-9

Source DB:  PubMed          Journal:  Environ Geochem Health        ISSN: 0269-4042            Impact factor:   4.609


  3 in total

1.  Assessment of the Anthropogenic Impact and Distribution of Potentially Toxic and Rare Earth Elements in Lake Sediments from North-Eastern Romania.

Authors:  Laurentiu Valentin Soroaga; Cornelia Amarandei; Alina Giorgiana Negru; Romeo Iulian Olariu; Cecilia Arsene
Journal:  Toxics       Date:  2022-05-10

2.  Accuracy Assessment of Kriging, artificial neural network, and a hybrid approach integrating spatial and terrain data in estimating and mapping of soil organic carbon.

Authors:  Miraç Kılıç; Recep Gündoğan; Hikmet Günal; Bilal Cemek
Journal:  PLoS One       Date:  2022-05-26       Impact factor: 3.752

3.  Prediction of nickel concentration in peri-urban and urban soils using hybridized empirical bayesian kriging and support vector machine regression.

Authors:  Prince Chapman Agyeman; Ndiye Michael Kebonye; Kingsley John; Luboš Borůvka; Radim Vašát; Olufadekemi Fajemisim
Journal:  Sci Rep       Date:  2022-02-22       Impact factor: 4.379

  3 in total

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