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Multi-model based PSO method for burden distribution matrix optimization with expected burden distribution output behaviors

机译:基于多模型的PSO方法用于预期负荷分配输出行为的负荷分配矩阵优化

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摘要

Burden distribution is one of the most important operations, and also an important upper regulation in blast furnace (BF) iron-making process. Burden distribution output behaviors (BDOB) at the throat of BF is a 3-dimensional spatial distribution produced by burden distribution matrix (BDM), including burden surface output shape (BSOS) and material layer initial thickness distribution (MLITD). Due to the lack of effective model to describe the complex input-output relations, BDM optimization and adjustment is carried out by experienced foremen. Focusing on this practical challenge, this work studies complex burden distribution input-output relations, and gives a description of expected MLITD under specific integral constraint on the basis of engineering practice. Furthermore, according to the decision variables in different number fields, this work studies optimization of BDM with expected MLITD, and proposes a multi-mode based particle swarm optimization (PSO) procedure for optimization of decision variables. Finally, experiments using industrial data show that the proposed model is effective, and optimized BDM calculated by this multi-model based PSO method can be used for expected distribution tracking.
机译:负荷分布是高炉炼铁过程中最重要的操作之一,也是重要的上部调节。高炉喉咙的负荷分布输出行为(BDOB)是由负荷分布矩阵(BDM)产生的三维空间分布,包括负荷表面输出形状(BSOS)和材料层初始厚度分布(MLITD)。由于缺乏有效的模型来描述复杂的投入产出关系,因此由经验丰富的工头来进行BDM优化和调整。针对这一实际挑战,这项工作研究了复杂的负担分配投入产出关系,并在工程实践的基础上给出了在特定积分约束下预期的MLITD的描述。此外,根据不同数量域中的决策变量,这项工作研究了具有预期MLITD的BDM优化,并提出了一种基于多模式的粒子群优化(PSO)程序来优化决策变量。最后,利用工业数据进行的实验表明,该模型是有效的,并且基于这种基于多模型的PSO方法计算出的优化BDM可用于预期分布跟踪。

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