Journal
JOURNAL OF THE OPERATIONAL RESEARCH SOCIETY
Volume 72, Issue 12, Pages 2690-2703Publisher
TAYLOR & FRANCIS LTD
DOI: 10.1080/01605682.2020.1811167
Keywords
Stochastic programming; chance constraints; mining optimisation; coal blending
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Coking coal is crucial for steel production, with its quality affecting the quality of the produced steel. Blending and processing the coal in a certain order can improve the product quality.
Coking coal is essential for the production of steel, and the quality of this coal significantly contributes to the quality of the produced steel. High quality coking coal has low ash content and a range of properties including volatile matter content and predicted coke strength. The coal is improved by processing after it has been mined. This processing varies and coal from multiple sources is blended. This paper introduces an original mixed integer programming model to maximise the profit of coal blending and processing. The model is computationally efficient and can be implemented at any coal mining and processing operation. The multi-period blending model incorporates stockpiling of raw material, and explicitly captures the geological variability of coal using chance constraints. A case study is evaluated and demonstrates that explicitly modelling geological variability can reduce the risk of breaching product specifications without any revenue loss. The improvement is achievable, without additional cost, by selecting the order that coal is fed into a processing plant.
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