Boroh Andre William
6 Papers
Boroh Andre William is an academic researcher. The author has contributed to research in topics: Geostatistics & Geology. The author has co-authored 1 publications.
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Papers
Implication Of Geological Domains Data For Modeling And Estimating Resources From Nkout Iron Deposit (South-Cameroun)
Boroh Andre William,Sore-Gamo Koutou Yvan,Ayiwouo Ngounouno Mohamed,Gbambié Mbowou Isaac Bertrand,Ngounouno Ismaïla +4 more
- 19 Mar 2021
TL;DR: In this paper, geochemical data from 116 drill holes in the Nkout East iron deposit in southern Cameroon were used to determine whether the addition of geological information can improve the resource estimate of mineral resources.
Comparison of geostatistical and machine learning models for predicting geochemical concentration of iron: case of the Nkout iron deposit (south Cameroon)
Boroh Andre William
- 31 Jul 2022
Abstract:
This paper investigated a comparative study between geostatistical methods and machine learning techniques in order to predict geochemical concentration of iron (Fe) in the Nkout iron deposit (South Cameroon).To this end, geostatistical methods and machine learning techniques are used.The geostatistical methods used included statistical analysis, variogram analysis, ordinary kriging (OK) and Turning Bands Simulations (TBS).The machine learning techniques employed included k-Nearest Neighbour (k-NN) and Random Forest (RF).Crossvalidation is applied to determine the best method.The prediction maps of iron content from a drilling campaign carried out in southern Cameroon are then produced using each method.The results obtained show that machine learning methods give better results in predicting content.The Random Forest offers better validation than ordinary kriging, turning bands simulations and k-NN.Ordinary kriging and turning bands simulations maximized the base minimum from 2.18% to 16.37% and 18.33%, respectively.This study identifies the Random Forest as a good first choice algorithm for the prediction of geochemical concentration of Fe.This technique is simple to formulate, efficient from a computational point of view, very stable with regard to the variations of the values of the parameters of the prediction model.