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Multi-objective Optimization of Integrated Iron Ore Sintering Process Using Machine Learning and Evolutionary Algorithms

机译:采用机器学习和进化算法的多目标优化综合铁矿石烧结工艺

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In the iron ore sintering process, it is desirable to maximize the productivity and quality of sinter while minimizing the fuel consumption for any given raw material (iron ore, flux and solid fuel) quality. However, given the complexity of the sintering process and the large number of manipulated variables, it is not practical for operators to identify appropriate set points for the manipulated variables to achieve these conflicting objectives. While significant amount of research is devoted to optimization of the on-strand sintering process, optimization of the integrated sintering process, viz. granulation and on-strand sintering together, has not received much attention. This is, however, necessary as the granulation process dictates the moisture content, mean size and voidage of the green mix bed, which in turn have a very strong influence on the sintering process and sinter quality. In this work, we have formulated and solved a multi-objective optimization problem to maximize both sinter productivity and quality for the integrated iron ore sintering process. Predictive models for productivity and quality parameters such as tumbler index (TI) and reduction degradation index (RDI) are built using machine learning algorithms. The optimization problem is solved using an evolutionary algorithm called non-dominated sorting genetic algorithm II (NSGA-II) to obtain a set of Pareto-optimal solutions. Optimal settings for key manipulated variables such as moisture content of green mix, fuel content, bed height and strand speed are obtained for the Pareto solutions. The optimization results are useful for identifying the operational range of the sintering process and can be used by operators for running the sinter plant optimally for a given set of raw materials.
机译:在铁矿石烧结过程中,希望最大化烧结的生产率和质量,同时最小化任何给定原料(铁矿石,助熔剂和固体燃料)质量的燃料消耗。然而,鉴于烧结过程的复杂性和大量的操纵变量,操作员对操作变量识别适当的设定点来实现这些冲突目标是不切实际的。虽然大量的研究致力于优化束缚烧结过程,优化集成烧结过程,Ziz。造粒和串行烧结在一起,没有受到很多关注。然而,这是必要的,因为造粒过程决定了绿色混合床的水分含量,平均尺寸和空隙,这反过来对烧结过程和烧结品质具有非常强烈的影响。在这项工作中,我们制定并解决了多目标优化问题,以最大限度地提高综合铁矿石烧结过程的烧结生产力和质量。使用机器学习算法建立了生产率和高质量参数的预测模型,如翻滚指数(TI)和减少降低指数(RDI)。使用称为非主导排序遗传算法II(NSGA-II)的进化算法来解决优化问题,以获得一组Pareto最佳解决方案。为Pareto溶液获得了诸如绿色混合物,燃料含量,床高度和股线速度的水分含量的关键操纵变量的最佳设置。优化结果对于识别烧结过程的操作范围是有用的,并且可以由操作员使用,用于针对给定的一组原料进行最佳地运行烧结厂。

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