Learning to Schedule Heuristics for the Simultaneous Stochastic Optimization of Mining Complexes
Yassine Yaakoubi, Roussos Dimitrakopoulos

TL;DR
This paper introduces a data-driven, reinforcement learning-based hyper-heuristic for the stochastic optimization of mining complexes, significantly improving solution efficiency and robustness over traditional methods.
Contribution
It proposes a novel learn-to-perturb hyper-heuristic that adaptively selects heuristics for stochastic mining optimization using reinforcement learning.
Findings
Reduced iterations by 30-50%
Decreased computational time by 30-45%
Improved solution quality and robustness
Abstract
The simultaneous stochastic optimization of mining complexes (SSOMC) is a large-scale stochastic combinatorial optimization problem that simultaneously manages the extraction of materials from multiple mines and their processing using interconnected facilities to generate a set of final products, while taking into account material supply (geological) uncertainty to manage the associated risk. Although simulated annealing has been shown to outperform comparing methods for solving the SSOMC, early performance might dominate recent performance in that a combination of the heuristics' performance is used to determine which perturbations to apply. This work proposes a data-driven framework for heuristic scheduling in a fully self-managed hyper-heuristic to solve the SSOMC. The proposed learn-to-perturb (L2P) hyper-heuristic is a multi-neighborhood simulated annealing algorithm. The L2P…
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Taxonomy
TopicsMining Techniques and Economics
