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A data-driven surrogate-assisted evolutionary algorithm applied to a many-objective blast furnace optimization problem

机译:一种数据驱动的代理辅助进化算法应用于许多客观高炉优化问题

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摘要

A new data-driven reference vector-guided evolutionary algorithm has been successfully implemented to construct surrogate models for various objectives pertinent to an industrial blast furnace. A total of eight objectives have been modeled using the operational data of the furnace using 12 process variables identified through a principal component analysis and optimized simultaneously. The capability of this algorithm to handle a large number of objectives, which has been lacking earlier, results in a more efficient setting of the operational parameters of the furnace, leading to a precisely optimized hot metal production process.
机译:已经成功实施了一种新的数据驱动的参考矢量引导的进化算法,以构建与工业高炉相关的各种目标的代理模型。 使用炉子的操作数据使用通过主成分分析和同时优化的12个过程变量使用炉的操作数据进行建模共有八个目标。 这种算法处理大量目标的能力,这一直缺乏缺乏,导致炉子的操作参数更有效地设置,导致精确优化的热金属生产过程。

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