A reinforcement learning approach for selecting infill drilling locations considering long-term production planning in mining complexes with supply uncertainty

Zachary Levinson, R. Dimitrakopoulos
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Abstract

Simultaneous stochastic optimisation frameworks provide a method for optimising long-term production schedules in mining complexes that aim to maximise net present value and manage risk related to supply uncertainty. The uncertainty and local variability related to the quality and quantity of material in the mineral deposits are modelled with a set of stochastic orebody simulations, an input into the simultaneous stochastic optimisation framework. Infill drilling provides opportunities to collect additional information associated with the mineral deposits, which can inform future production scheduling decisions. A framework is developed for optimising infill drilling locations with a criterion that seeks areas that directly affect long-term planning decisions and requires the use of geostatistical simulations. Actor-critic reinforcement learning is applied to identify infill drilling locations in a copper mining complex using this criterion. The case study demonstrates that adapting production scheduling decisions given additional information has the potential to improve the associated production and financial forecasts and identifies a stable area for infill drilling.
考虑到供应不确定性的采矿联合企业的长期生产规划,选择填充钻井位置的强化学习方法
同步随机优化框架为采矿联合企业的长期生产计划优化提供了一种方法,该方法旨在实现净现值最大化并管理与供应不确定性相关的风险。与矿床材料质量和数量相关的不确定性和局部可变性是通过一套随机矿体模拟来模拟的,这是同步随机优化框架的输入。填充钻探为收集与矿床相关的更多信息提供了机会,这些信息可为未来的生产计划决策提供依据。该框架用于优化填充钻探位置,其标准是寻找直接影响长期规划决策的区域,并要求使用地质统计模拟。应用行为批判强化学习,利用这一标准确定铜矿综合体的填充钻探位置。案例研究表明,根据额外信息调整生产调度决策有可能改善相关的生产和财务预测,并为填充钻井确定一个稳定的区域。
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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