Predictive geometrization of grade indices of an iron-ore deposit

IF 2.8 Q2 MINING & MINERAL PROCESSING
A. Peremetchyk, O. Kulikovska, Nataliia Shvaher, Serhii Chukhareva, S. Fedorenko, R. Moraru, V. Panayotov
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引用次数: 5

Abstract

Purposeis development of the methods to predict indices of iron-ore deposits relying upon the improvement of available techniques as well as formulation of new geometrization procedures and identification of the most adequate decision-making way to assess geological data as the basis for geometrization and prediction. Methods are to develop a self-organizing prediction algorithm based upon combination of the available techniques and formulation of new mathematical methods; consider various means to assess them in the context of iron-ore deposit; and select the most efficient one. Use of geostatistical methods makes it possible to evaluate and process output geological information. The methods help assess mineral reserves of a mining enterprise. Findings. Dependencies of magnetite ore content upon geological factors have been derived in the context of an open pit of PIVDGZK JSC. The deposit has been geometrized; predictive mining and geometric model of the deposit site has been deve-loped. Factors have been determined influencing the distribution nature of the indices. Graphs to arrange grade indices of the deposit have been constructed. The graphs have helped predict their placement within the deposit. Originality. A method to predict mining and geological indices of iron-ore deposit has been developed relaying upon a self-organizing algorithm. Correlation between grade indices of minerals and different geological factors has been determined making it possible to describe spatial distribution of grade indices of the deposit. Practical implications. Geometrization methods for iron-ore deposits have been formulated. The methods help schedule mining operations accurately while improving their efficiency. The developed predictive self-organizing algorithm is the flexible tool used for various mining and geological conditions to provide scheduling and assessing of different mining methods. The self-organizing as well as geostatic evaluation techniques is quite a promising research tendency.
铁矿石品位指标的预测几何化
目的是开发预测铁矿石指标的方法,依靠现有技术的改进,制定新的地质处理程序,并确定最合适的决策方法,以评估地质数据,作为地质处理和预测的基础。方法是在现有技术和新数学方法公式的基础上开发一种自组织预测算法;考虑在铁矿石矿床的背景下对其进行评估的各种方法;并选择最有效的一个。地质统计学方法的使用使评估和处理输出的地质信息成为可能。这些方法有助于评估矿业企业的矿产储量。调查结果。在PIVDGZK JSC露天矿的背景下,得出了磁铁矿含量与地质因素的相关性。矿床已被几何化;建立了矿床的预测开采和几何模型。已经确定了影响指数分布性质的因素。构造了矿床品位指标排列图。这些图表有助于预测它们在矿床中的位置。独创性基于自组织算法,提出了一种预测铁矿开采和地质指标的方法。确定了矿床品位指标与不同地质因素之间的相关性,为描述矿床品位指标的空间分布提供了可能。实际意义。制定了铁矿床的几何方法。这些方法有助于准确安排采矿作业,同时提高效率。所开发的预测自组织算法是一种灵活的工具,用于各种采矿和地质条件,以提供不同采矿方法的调度和评估。自组织和地质静力评价技术是一个很有前途的研究方向。
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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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