An approach based on Machine Learning Algorithms, Geostatistical Technique, and GIS analysis to estimate phosphate ore grade at the Abu Tartur Mine, Western Desert, Egypt

IF 2.8 Q2 MINING & MINERAL PROCESSING
A. Embaby, Ashraf Ismael, Faisal A Ali, H. Farag, B. Mousa, S. Gomaa, Mohamed Elwageeh
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引用次数: 0

Abstract

Purpose. This paper aims to estimate phosphate ore grade in the Abu Tartur area, Western Desert, Egypt, using four Machine Learning Algorithms (MLA), Geostatistical Techniques (variogram and kriging models), and GIS-analysis. Methods. Four machine-learning techniques include Optimizable Decision Tree (ODT), Optimizable Support Vector Machine (OSVM), Optimizable Gaussian Process Regression (OGPR), Artificial Neural Network (ANN) are applied in this paper. The constructed variogram and kriging models, as well as GIS-analysis, provide a clear understanding of all the elements distributed in the Abu Tartur phosphate ore and are very useful at the planning and mining stages. Findings. Phosphate content has been estimated with high accuracy based on the results of four machine-learning techniques. The most efficient technique for estimating phosphate content is optimizable (OGPR), which gives correlation coefficients (R) of 0.933 and 0.927 with Mean Absolute Errors (MAE) of 0.983 and 0.933 for the training and validation data, respectively. In addition, geostatistical and GIS methods have shown that percentage of P2O5, thickness, and Fe% are suitable for phosphate mining processes, except for small pockets that require little attention at the mining stage. Originality. This research attempts to develop a quick estimation of phosphate ore grade and to provide a clear understanding about the distribution of different constituents within the ore body using different techniques. Practical implications. Grade estimation is commonly reduced to a function approximation. Artificial intelligence (AI) techniques, and in particular the chosen type of AI techniques, can provide, a valid methodology for estimating grade, and the proposed models can be applied to any other data in the range used in this research.
基于机器学习算法、地质统计学技术和GIS分析的埃及西部沙漠Abu Tartur矿磷矿品位估算方法
目的。本文旨在利用四种机器学习算法(MLA)、地质统计学技术(变异函数和克里格模型)和地理信息系统(gis)分析估算埃及西部沙漠Abu Tartur地区的磷矿品位。方法。本文应用了可优化决策树(ODT)、可优化支持向量机(OSVM)、可优化高斯过程回归(OGPR)和人工神经网络(ANN)四种机器学习技术。所建立的变异函数和克里格模型以及地理信息系统分析可以清楚地了解阿布塔尔图尔磷矿中分布的所有元素,在规划和采矿阶段非常有用。发现。基于四种机器学习技术的结果,磷酸盐含量得到了高精度的估计。最有效的估算方法是优化法(OGPR),训练和验证数据的相关系数(R)分别为0.933和0.927,平均绝对误差(MAE)分别为0.983和0.933。此外,地质统计学和GIS方法表明,除了在开采阶段不需要注意的小袋外,P2O5百分比、厚度和Fe%适合磷矿开采工艺。创意。本研究试图开发一种快速估算磷矿品位的方法,并利用不同的技术对矿体内不同成分的分布提供一个清晰的认识。实际意义。等级估计通常被简化为函数近似。人工智能(AI)技术,特别是所选择的人工智能技术类型,可以为估计等级提供有效的方法,并且所提出的模型可以应用于本研究中使用的范围内的任何其他数据。
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
Mining of Mineral Deposits
Mining of Mineral Deposits MINING & MINERAL PROCESSING-
CiteScore
5.20
自引率
15.80%
发文量
52
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