49
views
0
recommends
+1 Recommend
1 collections
    1
    shares
      • Record: found
      • Abstract: found
      • Article: found
      Is Open Access

      A novel artificial intelligence approach for regolith geochemical grade prediction using multivariate adaptive regression splines

      research-article

      Read this article at

      ScienceOpenPublisher
          There is no author summary for this article yet. Authors can add summaries to their articles on ScienceOpen to make them more accessible to a non-specialist audience.

          Abstract

          The necessity for applying a potent analytical regolith geochemical grade estimator is driven by the reality of mineral exploration. This is because many exploration geologists rely upon the classical geostatistical method of Kriging which oftentimes do not produce accurate predictions due to the complexity of interactions between geological features and spatial variables. In this study, a novel non-linear data-driven approach known as Multivariate Adaptive Regression Spline (MARS) is proposed as an effective predictive tool to unravel regolith geochemical complexities. The proposed MARS approach was used to predict regolith geochemical grade from a thick regolith cover in the Tarkwaian paleo-placer of the South-Western Ashanti belt in Ghana. Out of the 891 samples, the data was partitioned into 70% training (model development) and 30% testing (model validation). The proposed MARS result was compared with three other artificial intelligence techniques (i.e., radial basis function neural network, backpropagation neural network and generalised regression neural network) and kriging geostatistical technique. Based on the test results, MARS had the highest correlation coefficient ( R = 0.9675) and the least statistical error metrics (RMSE = 0.7791, MAE = 0.6014, and ρ = 0.0472). The implementation of the MARS approach in regolith geochemical grade estimation domain has yielded outstanding and promising results. The MARS superiority was evident in its calibration strength, prediction accuracy, robust interaction of variables and overcoming the black box system of ANN. Thus, the proposed MARS approach could be an excellent tool in regolith geochemical grade estimation workflow when fully integrated with exploration tasks.

          Related collections

          Author and article information

          Journal
          GG
          Geosystems and Geoenvironment
          Elsevier (United Kingdom )
          2772-8838
          01 May 2022
          01 October 2022
          : 1
          : 2
          : e100038
          Affiliations
          [1] aAdamus Resource Limited Box 31, Esiama, W/R, Ghana
          [2] bDepartment of Geomatic Engineering, University of Mines and Technology, Ghana
          [3] cDepartment of Geology, Anglogold Iduapriem Limited, Ghana
          [4] dGeoxpert Limited, Ghana
          [5] eUniversity of South Australia, UniSA STEM, SA, 5000, Australia
          Author notes
          *Corresponding author. E-mail address: isaac.ahenkorah@ 123456mymail.unisa.edu.au (I. Ahenkorah).
          Article
          j.geogeo.2022.100038
          10.1016/j.geogeo.2022.100038
          fe473e6a-5010-4bba-90a9-b9c1061a1122
          © 2022 The Author(s). Published by Elsevier Ltd on behalf of Ocean University of China

          This is an open access article under the CC BY license ( http://creativecommons.org/licenses/by/4.0/)

          History
          : 28 December 2021
          : 31 January 2022
          : 09 February 2022
          Categories
          Research papers

          Earth & Environmental sciences,Databases,Environmental chemistry,General astronomy,Geosciences,Soil
          Ashanti belt,Geochemical grade prediction,Kriging geostatistical technique,Artificial intelligence techniques,Multivariate adaptive regression spline

          Comments

          Comment on this article