A Multiple Objective Genetic Algorithm Approach for Stochastic Open Pit Production Scheduling Optimisation

IF 2.7 3区 工程技术 Q3 ENVIRONMENTAL SCIENCES International Journal of Mining Reclamation and Environment Pub Date : 2023-04-04 DOI:10.1080/17480930.2023.2196918
Shadrach Yaw Amponsah, P. M. Takouda, E. Ben-Awuah
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Abstract

ABSTRACT The conventional approach to mine planning is to use a single estimated orebody model as the basis for production scheduling. This approach, however, does not consider grade uncertainties associated with grade estimation. These uncertainties have a significant impact on the net present value (NPV) and can only be accounted for when modelled as part of the production scheduling optimisation problem. In this research, a set of equally probable simulated orebodies generated through Sequential Gaussian Simulation is used as input to a stochastic optimisation model solved with genetic algorithm (GA). Grade variability is considered as part of the stochastic model. The problem definition and resource constraints are formulated and optimised using a specially designed mining-specific GA. This GA is employed to handle partial block processing through a specialised chromosome encoding technique resulting in near-optimal solutions. Two case studies are presented which compare results from the stochastic model solved with GA (SGA) and a Stochastic Mixed Integer Linear Programming (SMILP) model solved with CPLEX. For the second case study, while the SMILP model was at an optimality gap of 101% after 28 days, the SGA model generated an NPV of $10,045 M at 10.16% optimality gap after 1.5 h.
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露天矿随机生产调度优化的多目标遗传算法
传统的矿山规划方法是使用单一的估计矿体模型作为生产调度的基础。然而,这种方法没有考虑与成绩估计有关的成绩不确定性。这些不确定性对净现值(NPV)有重大影响,只有在作为生产调度优化问题的一部分建模时才能加以考虑。本研究将序贯高斯模拟生成的等概率模拟矿体作为遗传算法求解的随机优化模型的输入。等级变异性被认为是随机模型的一部分。问题定义和资源约束是使用一个专门设计的采矿特定遗传算法来制定和优化的。该遗传算法通过一种特殊的染色体编码技术来处理部分块处理,从而得到接近最优的解。给出了两个实例,比较了用遗传算法求解的随机模型(SGA)和用CPLEX求解的随机混合整数线性规划(SMILP)模型的结果。对于第二个案例研究,虽然SMILP模型在28天后处于101%的最优性差距,但SGA模型在1.5小时后以10.16%的最优性差距产生了10,045亿美元的NPV。
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来源期刊
International Journal of Mining Reclamation and Environment
International Journal of Mining Reclamation and Environment ENVIRONMENTAL SCIENCES-MINING & MINERAL PROCESSING
CiteScore
5.70
自引率
8.30%
发文量
30
审稿时长
>12 weeks
期刊介绍: The International Journal of Mining, Reclamation and Environment published research on mining and environmental technology engineering relating to metalliferous deposits, coal, oil sands, and industrial minerals. We welcome environmental mining research papers that explore: -Mining environmental impact assessment and permitting- Mining and processing technologies- Mining waste management and waste minimization practices in mining- Mine site closure- Mining decommissioning and reclamation- Acid mine drainage. The International Journal of Mining, Reclamation and Environment welcomes mining research papers that explore: -Design of surface and underground mines (economics, geotechnical, production scheduling, ventilation)- Mine planning and optimization- Mining geostatics- Mine drilling and blasting technologies- Mining material handling systems- Mine equipment
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