Optimizing transition: investigating the influence of operational parameters on production scheduling optimization for mines transitioning from open pit to block caving methods.

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Název: Optimizing transition: investigating the influence of operational parameters on production scheduling optimization for mines transitioning from open pit to block caving methods.
Autoři: Flores, Ignacio Ortiz, Anani, Angelina, Li, Haitao, Jalilzadeh, Afrooz
Zdroj: Optimization & Engineering; Jun2025, Vol. 26 Issue 2, p1041-1068, 28p
Abstrakt: Current technologies have made the transition from surface to underground mining methods for mineral extraction feasible and economically viable. Determining the point of transition from one method to the other for deposits that are suitable to be exploited with both methods is challenging. The existing research integrates production scheduling optimization with determining the transition depth that maximizes net present value (NPV), potentially making the problem computationally intractable. Additionally, these studies do not consider some realistic operational constraints in the problem setting. This research proposes an integrated mixed-integer linear programming (MILP) model to investigate the extent to which operational constraints and parameters of transition mines affect the optimal production schedule and NPV of an operation. The authors have developed a computational experiment that evaluates development cost and rate, fleet size, stockpile, production footprint, dilution factor, and crown pillar placement on the model output. A case study is used to test and validate the model, with a comparative sensitivity analysis to obtain operational insights. Our work shows that the sensitivity of the NPV and computational time for each experimental factor varies significantly. There is no significant difference in NPV (0.15%) when the development cost is incorporated. However, for the fleet size, stockpile, and production footprint, an increase of 4.8%, 10.5%, and 4.8% respectively in the NPV can be achieved. The authors have concluded that the extent to which operational parameters and constraints of transition mines are accounted for, has a significant impact on the optimal production schedule and NPV obtained. [ABSTRACT FROM AUTHOR]
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Databáze: Complementary Index
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Abstrakt:Current technologies have made the transition from surface to underground mining methods for mineral extraction feasible and economically viable. Determining the point of transition from one method to the other for deposits that are suitable to be exploited with both methods is challenging. The existing research integrates production scheduling optimization with determining the transition depth that maximizes net present value (NPV), potentially making the problem computationally intractable. Additionally, these studies do not consider some realistic operational constraints in the problem setting. This research proposes an integrated mixed-integer linear programming (MILP) model to investigate the extent to which operational constraints and parameters of transition mines affect the optimal production schedule and NPV of an operation. The authors have developed a computational experiment that evaluates development cost and rate, fleet size, stockpile, production footprint, dilution factor, and crown pillar placement on the model output. A case study is used to test and validate the model, with a comparative sensitivity analysis to obtain operational insights. Our work shows that the sensitivity of the NPV and computational time for each experimental factor varies significantly. There is no significant difference in NPV (0.15%) when the development cost is incorporated. However, for the fleet size, stockpile, and production footprint, an increase of 4.8%, 10.5%, and 4.8% respectively in the NPV can be achieved. The authors have concluded that the extent to which operational parameters and constraints of transition mines are accounted for, has a significant impact on the optimal production schedule and NPV obtained. [ABSTRACT FROM AUTHOR]
ISSN:13894420
DOI:10.1007/s11081-024-09927-y