论文标题

材料类型记录和化学分析的机器学习方法,从自动级别 - 驱动器(MWD)数据

A Machine Learning Approach for Material Type Logging and Chemical Assaying from Autonomous Measure-While-Drilling (MWD) Data

论文作者

Khushaba, Rami N, Melkumyan, Arman, Hill, Andrew J

论文摘要

了解区域的结构和矿物质组成是采矿的重要步骤,无论是在探索之前(采矿之前)还是在采矿过程中。在探索过程中,收集稀疏但高质量的数据以评估整体矿体。在采矿过程中,随着矿山的进行,边界位置和材料特性进行了完善。通过钻孔,材料记录和化学分析来促进这种完善。材料类型的记录遭受了高度的可变性,这是由于矿物质和地质多样性,人类测量的主观性质,即使是专家的主观性质以及人为记录结果的人为错误。虽然基于实验室的化学分析更为精确,但它耗时且昂贵,并且并不总是捕获或关联所有材料类型之间的边界位置。这导致了对该行业的重大挑战和财务影响,因为生产Blasthole记录和分析过程的准确性对于资源评估,计划和执行地雷计划至关重要。为了克服这些挑战,这项工作报告了一项试点研究,以使材料记录和化学分析的过程自动化。已经对从自动钻探系统(ADS)记录的测量 - 钻孔(MWD)数据提取的功能进行了机器学习方法的培训。 MWD数据有助于构建物理钻孔参数的概况,这是孔深度的函数。形成了一个假设,以将这些钻孔参数与潜在的矿物组成联系起来。本文讨论的试验研究结果证明了此过程的可行性,相关系数的化学测定最高为0.92,材料检测的准确性为93%,具体取决于材料或测定类型及其在不同空间区域的概括。

Understanding the structure and mineralogical composition of a region is an essential step in mining, both during exploration (before mining) and in the mining process. During exploration, sparse but high-quality data are gathered to assess the overall orebody. During the mining process, boundary positions and material properties are refined as the mine progresses. This refinement is facilitated through drilling, material logging, and chemical assaying. Material type logging suffers from a high degree of variability due to factors such as the diversity in mineralization and geology, the subjective nature of human measurement even by experts, and human error in manually recording results. While laboratory-based chemical assaying is much more precise, it is time-consuming and costly and does not always capture or correlate boundary positions between all material types. This leads to significant challenges and financial implications for the industry, as the accuracy of production blasthole logging and assaying processes is essential for resource evaluation, planning, and execution of mine plans. To overcome these challenges, this work reports on a pilot study to automate the process of material logging and chemical assaying. A machine learning approach has been trained on features extracted from measurement-while-drilling (MWD) data, logged from autonomous drilling systems (ADS). MWD data facilitate the construction of profiles of physical drilling parameters as a function of hole depth. A hypothesis is formed to link these drilling parameters to the underlying mineral composition. The results of the pilot study discussed in this paper demonstrate the feasibility of this process, with correlation coefficients of up to 0.92 for chemical assays and 93% accuracy for material detection, depending on the material or assay type and their generalization across the different spatial regions.

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