Going local – innovating resource estimates to improve investment decisions

IF 0.9 Q3 MINING & MINERAL PROCESSING
J. Coombes, T. Tran, A. Earl
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引用次数: 3

Abstract

ABSTRACT A mineral company’s resource models are a measure of its foundational assets that provide the basis for forward looking statements of corporate value and cash-flow estimates. Accuracy of the estimation process underpins corporate legitimacy. Importantly, local improvements in estimation process can translate into improvements in mine planning, and ultimately better-informed investment decisions. Traditionally, resource models use estimation parameters that are based on statistical patterns and spatial variability within a geologically informed volume constraint (‘the domain’). The variogram, block size analysis and determination of search parameters are assessed from the data within the geologically delineated domain. The set of parameters so determined are then applied to every estimation block within the domain, and the block model is then provided to the mine planner for optimisation. The mine planning optimisation process responds to each block grades. The focus of the mine planning process is to minimise ore loss and mining dilution and so provide the best possible opportunity for the orebody and its value to be realised. However, overly smooth grade models restrict a mine planner’s ability to achieve the best outcome for the project and for the asset owners. Despite the estimation of every block in a resource model being conducted independently of every other block in the model, Resource Geologists continue to generalise parameters across a domain of blocks. This paper challenges the global parameter approach, and instead seeks a more locally contextual set of parameters. This challenge is in keeping with innovations across industries and around the globe that seek real time bespoke responsiveness built on big data, machine learning and artificial intelligence. There are many steps ‘going local’ in estimation. This paper focusses on two aspects: firstly, optimising sample selection or search neighbourhood parameters (Local Kriging Neighbourhood Optimisation), and, secondly, addressing topcuts in response to those samples selected. A case study is presented to illustrate the process and demonstrate the improvements. The paper closes with a call for Resource Geologists to improve local as well as global accuracy of their resource models so that mine planners can respond to the knowledge and information available at a local scale in the grade estimation block model in their planning processes.
本地化-创新资源评估,以改善投资决策
矿产公司的资源模型是对其基础资产的衡量,为公司价值和现金流预估提供前瞻性报表的基础。评估过程的准确性是公司合法性的基础。重要的是,当地估算过程的改进可以转化为矿山规划的改进,最终实现更明智的投资决策。传统上,资源模型使用基于统计模式和地理信息体积约束(“域”)内的空间变异性的估计参数。根据地质圈定区域内的数据,对变异函数、块大小分析和搜索参数的确定进行了评估。然后将这样确定的参数集应用于域中的每个估计块,然后将块模型提供给矿山规划人员进行优化。矿山规划优化过程响应每个区块等级。矿山规划过程的重点是尽量减少矿石损失和采矿稀释,从而为矿体及其价值的实现提供最佳机会。然而,过于平滑的品位模型限制了矿山规划人员为项目和资产所有者实现最佳结果的能力。尽管资源模型中的每个区块的估计都是独立于模型中的其他区块进行的,但资源地质学家仍在继续推广区块范围内的参数。本文挑战了全局参数方法,而是寻求一个更局部上下文的参数集。这一挑战与全球各行各业的创新相一致,这些创新寻求基于大数据、机器学习和人工智能的实时定制响应。在评估中有许多“局部化”的步骤。本文主要关注两个方面:首先,优化样本选择或搜索邻域参数(局部克里格邻域优化),其次,处理响应所选样本的顶切。通过一个案例研究来说明这一过程并演示改进。论文最后呼吁资源地质学家提高其资源模型的局部和全局精度,以便矿山规划人员能够在规划过程中响应品位估算块模型中局部范围内可用的知识和信息。
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
3.50
自引率
0.00%
发文量
6
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