Clustering mining blocks in presence of geological uncertainty

IF 1.8 Q3 MINING & MINERAL PROCESSING
M. Tabesh, H. Askari-Nasab
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引用次数: 11

Abstract

ABSTRACT A major trend in mine production planning research is incorporating geological uncertainty in the processes of planning. Many mathematical models and heuristic approaches are proposed to deal with the uncertainty. Although there have been advances in exact methods to solve simpler instances of the mine production scheduling problem more complex instances of the model, especially when incorporating uncertainty, remain intractable and aggregation of blocks can help to decrease solution times. In this paper, we present four variations of the agglomerative hierarchical clustering algorithm, one based on deterministic estimates of properties and three based on possible worlds approach which use Geostatistical realizations to form aggregates with regard to the geological properties and the existing uncertainties. We show, through case studies, that uncertainty-based algorithms can result in aggregates that are less susceptible to uncertainties, and at the same time, the proposed algorithm can produce aggregates that are within a controlled size and have minable shapes.
地质不确定性下的矿区聚类
摘要矿山生产规划研究的一个主要趋势是将地质不确定性纳入规划过程。提出了许多数学模型和启发式方法来处理不确定性。尽管在解决矿山生产调度问题的简单实例的精确方法方面取得了进展,但更复杂的模型实例,特别是在包含不确定性的情况下,仍然难以解决,而块的聚集有助于减少求解时间。本文提出了聚类分层聚类算法的四种变体,一种基于属性的确定性估计,三种基于可能世界方法,利用地质统计学实现对地质属性和存在的不确定性形成聚类。我们通过案例研究表明,基于不确定性的算法可以产生不易受不确定性影响的聚合体,同时,所提出的算法可以产生大小可控且具有可挖掘形状的聚合体。
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
CiteScore
2.20
自引率
9.10%
发文量
5
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