Automatic search strategy for ROM stockpile recovery optimisation

- Organization:
- The Australasian Institute of Mining and Metallurgy
- Pages:
- 9
- File Size:
- 724 KB
- Publication Date:
- Nov 10, 2020
Abstract
Run-of-Mine (ROM) stockpiles are the inventory of valuable materials extracted from the mine.
Depending on the customer requests, a selective addition of ore from stockyards should be selected
at the required tonnage. In the stockyard, stackers and reclaimers are the machines which load and
unload ore, respectively. Currently, humans determine the reclaiming/stacking planning sequence
in the stockyard by rules of thumb. However, this is a complex task subject to multiple operational
constraints, such as where undesirable mineral properties should not exceed certain limits in a
request. Human planning can lead to limited decision support and lower ability to consider the
upcoming blends and requests. This kind of decision making can cause perturbations in the assumed
profit and unexpected loss in practice. Therefore, an intelligent decision-maker and sequence
planner would be highly valuable to automate stacking and reclaiming operations in practice. The
benefits are reducing variability in decision-making and operation costs. This paper considers a
stockyard with available mineral information in the stockpiles using load and dump locations from
GPS data feeds. We present an optimisation problem to find a solution which results in reclaiming
more ore in a shorter time. To solve the problem, we develop an automatic search strategy based
on the greedy search algorithm independent of the type of machine used in reclaiming. The proposed
method plans a sequence for stockyard recovery blend optimisation to meet multiple customer
demands in a timeframe. Blend optimisation is subject to various constraints such as the elemental
composition of the valuable materials and penalty elements. We present three case studies using
EKA’s simulator, to fulfil two to four requests from four stockpiles. We compare the obtained results
with a pilgrim step reclaiming heuristic and we show how our proposed search strategy outperforms
the current strategy used in practice.
Citation
APA:
(2020) Automatic search strategy for ROM stockpile recovery optimisationMLA: Automatic search strategy for ROM stockpile recovery optimisation. The Australasian Institute of Mining and Metallurgy, 2020.