On the Use of Evolutionary Optimization for the Dynamic Chance Constrained Open-Pit Mine Scheduling Problem
Ishara Hewa Pathiranage, Aneta Neumann
TLDR
This paper uses evolutionary optimization with a diversity-based change response to solve dynamic chance-constrained open-pit mine scheduling.
Key contributions
- Addresses dynamic chance-constrained open-pit mine scheduling with stochastic values and varying capacities.
- Proposes a bi-objective evolutionary formulation to maximize expected profit and minimize its standard deviation.
- Introduces a diversity-based change response mechanism for adapting to dynamic changes in real-time.
Why it matters
This paper tackles a complex real-world problem by combining uncertainty and dynamic changes, often studied in isolation. The proposed evolutionary approach offers a robust solution for optimizing mine scheduling under highly variable conditions, leading to more stable and profitable operations.
Original Abstract
Open-pit mine scheduling is a complex real world optimization problem that involves uncertain economic values and dynamically changing resource capacities. Evolutionary algorithms are particularly effective in these scenarios, as they can easily adapt to uncertain and changing environments. However, uncertainty and dynamic changes are often studied in isolation in real-world problems. In this paper, we study a dynamic chance-constrained open-pit mine scheduling problem in which block economic values are stochastic and mining and processing capacities vary over time. We adopt a bi-objective evolutionary formulation that simultaneously maximizes expected discounted profit and minimizes its standard deviation. To address dynamic changes, we propose a diversity-based change response mechanism that repairs a subset of infeasible solutions and introduces additional feasible solutions whenever a change is detected. We evaluate the effectiveness of this mechanism across four multi-objective evolutionary algorithms and compare it with a baseline re-evaluation-based change-response strategy. Experimental results on six mining instances demonstrate that the proposed approach consistently outperforms the baseline methods across different uncertainty levels and change frequencies.
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