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Predictive performance of machine learning algorithms for ore reserve estimation in sparse and imprecise data.

机译:稀疏和不精确数据中矿石储量估算的机器学习算法的预测性能。

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摘要

Traditional geostatistical estimation techniques have been used predominantly in the mining industry for the purpose of ore reserve estimation. Determination of mineral reserve has always posed considerable challenge to mining engineers due to geological complexities that are generally associated with the phenomenon of ore body formation. Considerable research over the years has resulted in the development of a number of state-of-the-art methods for the task of predictive spatial mapping such as ore reserve estimation. Recent advances in the use of the machine learning algorithms (MLA) have provided a new approach to solve the age-old problem. Therefore, this thesis is focused on the use of two MLA, viz. the neural network (NN) and support vector machine (SVM), for the purpose of ore reserve estimation. Application of the MLA have been elaborated with two complex drill hole datasets. The first dataset is a placer gold drill hole data characterized by high degree of spatial variability, sparseness and noise while the second dataset is obtained from a continuous lode deposit.; The application and success of the models developed using these MLA for the purpose of ore reserve estimation depends to a large extent on the data subsets on which they are trained and subsequently on the selection of the appropriate model parameters. The model data subsets obtained by random data division are not desirable in sparse data conditions as it usually results in statistically dissimilar subsets, thereby reducing their applicability. Therefore, an ideal technique for data subdivision has been suggested in the thesis. Additionally, issues pertaining to the optimum model development have also been discussed.; To investigate the accuracy and the applicability of the MLA for ore reserve estimation, their generalization ability was compared with the geostatistical ordinary kriging (OK) method. The analysis of Mean Square Error (MSE), Mean Absolute Error (MAE), Mean Error (ME) and the coefficient of determination (R2) as the indices of the model performance indicated that they may significantly improve the predictive ability and thereby reduce the inherent risk in ore reserve estimation.
机译:传统的地统计学估计技术主要用于采矿业,以进行矿石储量估计。由于通常与矿体形成现象有关的地质复杂性,确定矿物储量一直对采矿工程师构成巨大挑战。多年来的大量研究已导致开发出许多用于预测空间映射任务的最新方法,例如矿石储量估算。机器学习算法(MLA)的使用方面的最新进展提供了一种解决古老问题的新方法。因此,本论文着重于两个MLA的使用。神经网络(NN)和支持向量机(SVM),以进行矿石储量估算。 MLA的应用已通过两个复杂的钻孔数据集进行了详细说明。第一个数据集是特征为高度空间变异性,稀疏性和噪声特征的砂金矿床数据,而第二个数据集是从连续的矿床中获取的。使用这些MLA开发的用于矿石储量估算的模型的应用和成功在很大程度上取决于对其进行训练的数据子集,并随后取决于适当模型参数的选择。通过稀疏数据条件获得的模型数据子集在稀疏数据条件下是不可取的,因为它通常会导致统计上不同的子集,从而降低了它们的适用性。因此,本文提出了一种理想的数据细分技术。另外,还讨论了与最佳模型开发有关的问题。为了研究MLA在矿石储量估算中的准确性和适用性,将其泛化能力与地统计学普通克里金法(OK)进行了比较。作为模型性能指标的均方误差(MSE),均值绝对误差(MAE),均值误差(ME)和确定系数(R2)的分析表明,它们可能会大大提高预测能力,从而降低预测能力。矿石储量估算中的固有风险。

著录项

  • 作者

    Dutta, Sridhar.;

  • 作者单位

    University of Alaska Fairbanks.;

  • 授予单位 University of Alaska Fairbanks.;
  • 学科 Engineering Mining.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 189 p.
  • 总页数 189
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 矿业工程;
  • 关键词

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