Mineral resource assessment through geostatistical analysis in a phosphate deposit

Q3 Engineering
M Mazari, S Chabou-Mostefai, A Bali, K Kouider, A Benselhoub, S Bellucci
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Abstract

Purpose. The selection of an appropriate variographic model is crucial in geostatistics to obtain accurate estimates of mineral reserves. The aim of this work is to develop a reserve estimation tool using a geostatistical approach. Methodology. The geostatistical approach is based on selecting the most representative variographic models for the studied variables. The model selection is done by applying a cross-validation procedure leave-one-out (LOOCV). LOOCV is a resampling technique used in statistical analysis and machine learning to estimate the generalization error of a model and compare the performance of different models. The studied variables are then estimated using ordinary kriging. Findings. The application of the proposed approach has resulted in satisfactory results in terms of dispersion of grades and thicknesses of mineralized layers in a phosphate deposit. To evaluate the quality of the adjustment models obtained, efficiency factors such as Nash-Sutcliffe, and RMSE (Root Mean Square Error), were employed. These factors provide quantitative measures of the agreement between the observed and predicted values. The NSE (Nash-Sutcliffe efficiency) and RMSE (root mean square error) values of 0.572 and 6.599, respectively, indicate a better fit and greater accuracy of the adjustment models. The accuracy and efficiency criteria of the studied variables have acceptable values, with a mean square error (MSE) of 1.54 · 10-7. Originality. The combination of the least squares and LOOCV methods in the geostatistical analysis leads to improved estimation precision, greater reliability in representing the spatial variability of the parameters, and enhanced confidence in the validity of the adjustment models. Practical value. The development of a computer code for this geostatistical approach provides a practical tool for decision-makers to use in the management and exploitation of mining sites. Overall, this study has contributed to the advancement of geostatistical techniques and their application in the mining industry.
用地质统计学方法评价某磷矿床的矿产资源
目的。在地质统计学中,选择适当的变差模型对于获得准确的矿产储量估计至关重要。这项工作的目的是利用地质统计学方法开发储量估计工具。方法。地质统计学方法的基础是为所研究的变量选择最具代表性的变差模型。模型选择是通过应用交叉验证过程留一个出来(LOOCV)来完成的。LOOCV是一种用于统计分析和机器学习的重采样技术,用于估计模型的泛化误差并比较不同模型的性能。然后用普通克里格法估计所研究的变量。发现。应用该方法对某磷矿床矿化层的品位分布和厚度进行了分析,取得了令人满意的结果。为了评价所获得的调整模型的质量,采用了Nash-Sutcliffe和RMSE(均方根误差)等效率因子。这些因素提供了观测值和预测值之间一致性的定量度量。NSE (Nash-Sutcliffe efficiency)和RMSE(均方根误差)分别为0.572和6.599,表明平差模型的拟合较好,精度较高。研究变量的精度和效率指标均在可接受范围内,均方误差(MSE)为1.54·10-7。创意。将最小二乘与LOOCV相结合用于地统计分析,提高了估算精度,提高了表征参数空间变异性的可靠性,增强了平差模型有效性的置信度。实用价值。为这种地质统计方法编制计算机代码,为决策者在管理和开发采矿场址方面提供了一个实用的工具。总的来说,这项研究促进了地质统计技术的进步及其在采矿业中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.70
自引率
0.00%
发文量
148
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