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Smart ore blending methodology for ferromanganese production process

机译:智能矿石混合方法,用于铁摩丹尼生产过程

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摘要

This study is carried out to develop a smart ore blending methodology for high carbon ferromanganese production units. Geometallurgical characterisation of the ores collected from 10 different mines has been carried out to estimate variation in their aptness for the alloy production process. An evolutionary algorithm-based methodology has been adopted for ore blending to maximise the total manganese content of the ore blend under applied physicochemical constraints. Analysis provides various blends of the same chemical composition but of different geometallurgical ranks. An artificial neural network model has been developed to predict the operational parameters such as slag and metal composition. This method allows the operator to visualise the impact of combinations of different ore blends on slag-metal composition as well as on electric power and coke required for smelting reduction of ores in the submerged arc furnace. It was observed that best blends could reduce power and coke consumption by 100 kWh ton(-1) and 30 kg ton(-1), respectively, but optimum values can be established in long run considering conservation of natural resources.
机译:本研究开发了高碳铁锰种生产单元的智能矿石混合方法。已经进行了从10种不同地雷收集的矿石的几何冶金表征,以估算其适用于合金生产过程的变化。已经采用了一种基于进化算法的方法,用于矿石混合,以最大限度地提高应用物理化学约束下的矿石共混物的总锰含量。分析提供相同的化学组成的各种共混物,而是不同的几何冶金等级。已经开发了一种人工神经网络模型来预测炉渣和金属组合物的操作参数。该方法允许操作者可视化不同矿体混合物组合对渣 - 金属组合物的影响以及浸没式电弧炉中冶炼矿石所需的电力和焦炭。观察到,最佳共混物可以分别将功率和焦炭消耗降低100千瓦时(-1)和30kg(-1),但考虑到保护自然资源,可以长期建立最佳值。

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