基于DomainMCF的机器学习在大理石采石场资源建模中的应用

I. Kapageridis, C. Albanopoulos, Steve Sullivan, Gary Buchanan, Evangelos Gialamas
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引用次数: 1

摘要

机器学习在采矿业中不断取得进展。基于机器学习的系统利用当今个人、嵌入式和云系统的计算能力,快速构建真实流程的模型,这在几十年前是不可能的,或者是非常耗时的。互联网的广泛使用和廉价而强大的云计算系统的可用性导致了使用机器学习方法自动化资源建模过程或优化矿山调度的工具的开发和接受。本文讨论的领域建模系统DomainMCF是由Maptek公司利用人工神经网络技术开发的。在本文的应用中,DomainMCF用于模拟大理石质量分类参数的空间分布,并将结果结合起来,使用希腊东北部一个运营大理石采石场的钻孔和采石场样品产生最终的大理石质量分类。DomainMCF作为云处理服务,通过早期访问计划提供给有兴趣测试其在各种建模场景和地质环境中的能力和适用性的个人或公司。所得的大理石产品分类与已经建立的基于更传统的估计方法的分类系统所产生的分类进行比较。结果表明,DomainMCF可以有效地应用于大理岩质量空间分布和类似域问题的建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Machine Learning to Resource Modelling of a Marble Quarry with DomainMCF
Machine learning is constantly gaining ground in the mining industry. Machine learning-based systems take advantage of the computing power of personal, embedded and cloud systems of today to rapidly build models of real processes, something that would have been impossible or extremely time-consuming a couple of decades ago. The widespread access to the internet and the availability of cheap and powerful cloud computing systems led to the development and acceptance of tools to automate resource modelling processes or optimise mine scheduling, using machine learning methodologies. The domain modelling system discussed in this paper, called DomainMCF, has been developed by Maptek, using artificial neural network technology. In the application presented in this paper, DomainMCF is used to model the spatial distribution of marble quality categorical parameters, and the results are combined to produce a final marble quality classification using drillhole and quarry face samples from an operational marble quarry in NE Greece. DomainMCF was made available for this study as a cloud processing service through an early access program for individuals or companies interested in testing its capabilities and suitability in various modelling scenarios and geological settings. The resulting marble product classifications are compared with those produced by the already established classification system that is based on a more conventional estimation method. The produced results show that DomainMCF can be effectively applied to the modelling of marble quality spatial distribution and similar domaining problems.
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