Rolling Force Prediction in Heavy Plate Rolling Based on Uniform Differential Neural Network

IF 1 Q4 AUTOMATION & CONTROL SYSTEMS Journal of Control Science and Engineering Pub Date : 2016-06-01 DOI:10.1155/2016/6473137
Fei Zhang, Yuntao Zhao, J. Shao
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引用次数: 5

Abstract

Accurate prediction of the rolling force is critical to assuring the quality of the final product in steel manufacturing. Exit thickness of plate for each pass is calculated from roll gap, mill spring, and predicted roll force. Ideal pass scheduling is dependent on a precise prediction of the roll force in each pass. This paper will introduce a concept that allows obtaining the material model parameters directly from the rolling process on an industrial scale by the uniform differential neural network. On the basis of the characteristics that the uniform distribution can fully characterize the solution space and enhance the diversity of the population, uniformity research on differential evolution operator is made to get improved crossover with uniform distribution. When its original function is transferred with a transfer function, the uniform differential evolution algorithms can quickly solve complex optimization problems. Neural network structure and weights threshold are optimized by uniform differential evolution algorithm, and a uniform differential neural network is formed to improve rolling force prediction accuracy in process control system.
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基于均匀微分神经网络的厚板轧制力预测
在钢铁生产中,准确预测轧制力是保证最终产品质量的关键。根据轧制间隙、轧机弹簧和预测轧制力计算出每道板的出口厚度。理想的孔型调度依赖于对每道次轧制力的精确预测。本文将介绍一种利用均匀微分神经网络直接从工业规模的轧制过程中获得材料模型参数的概念。基于均匀分布能充分表征解空间和增强种群多样性的特点,对差分进化算子进行均匀性研究,以获得均匀分布下的改进交叉。当用传递函数传递其原始函数时,一致差分进化算法可以快速求解复杂的优化问题。采用均匀微分进化算法对神经网络结构和权值进行优化,形成均匀微分神经网络,提高过程控制系统轧制力预测精度。
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来源期刊
Journal of Control Science and Engineering
Journal of Control Science and Engineering AUTOMATION & CONTROL SYSTEMS-
CiteScore
4.70
自引率
0.00%
发文量
54
审稿时长
19 weeks
期刊介绍: Journal of Control Science and Engineering is a peer-reviewed, open access journal that publishes original research articles as well as review articles in all areas of control science and engineering.
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