基于NSGA-II-DE的ESP轧制工艺规程设计。

Wen Peng, Chenguang Wei, Jiahui Yang, Xiaorui Chen, Baizhi Qi, Xudong Li, Jie Sun, Dianhua Zhang
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引用次数: 0

摘要

无极带钢连轧过程中,多个工序紧密相连,单工序多目标建模难以得到全局最优解,且待优化参数相互耦合。为了得到最优解,提出了综合考虑能耗、产品质量和负载平衡的ESP轧制规程设计多目标优化模型。以轧制过程中厚度和加热温度同时作为温度与载荷耦合的决策变量,采用基于差分进化的非支配排序遗传算法(NSGA-II- de)求解Pareto解。为了选择最优解,设计了满足函数,并充分利用了Pareto解。为了验证该方法的精度和效率,将在线进度与NSGA-II方法进行了比较。结果表明,最终选择的方案比其他两种方案具有更好的质量和更均衡的加载力,可为实际生产过程提供指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rolling schedule design for the ESP rolling process based on NSGA-II-DE.

Multiple processes connected closely during the endless strip production (ESP) rolling, it is difficult to obtain the global optimal solution by multi-objective modelling of a single process, and the parameters to be optimized coupled with each other. To obtain the optimal solution, a multi-objective optimization model combining the power consumption, product quality, and loading balance was proposed for the design of an ESP rolling schedule. The thickness and heating temperature were simultaneously taken as the decision variables for coupling the temperature and loading in the rolling process, and the non-dominated sorting genetic algorithm-II (NSGA-II) based on differential evolution (NSGA-II-DE) was applied to obtain the Pareto solutions. To select an optimal solution, a satisfaction function was designed and applied to fully utilize the Pareto solutions. Furthermore, to prove the precision and efficiency of the method, the online schedule and that obtained by the NSGA-II method were compared. The results proved that the final selected solution had better quality and a more balanced loading force than the other two types, which could provide guidance for the actual production process.

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