• CN: 11-2187/TH
  • ISSN: 0577-6686

Journal of Mechanical Engineering ›› 2025, Vol. 62 ›› Issue (6): 142-153.doi: 10.3901/JME.260181

Previous Articles    

Deep Learning-based Dynamic Modeling of Hot Rolled Gague-looper System

LEI Jiawei1, WANG Shuting1, YUE Chongxiang2, LIN Ping3, PENG Wen1, SUN Jie1, ZHANG Dianhua1   

  1. 1. State Key Laboratory of Rolling and Automation, Northeastern University, Shenyang 110819;
    2. Institute of Research of Iron and Steel, Jiangsu Shagang, Zhangjiagang 215600;
    3. WISDRI Engineering&Research Incorporation Limited, Wuhan 430223
  • Received:2025-05-08 Revised:2025-09-30 Published:2026-05-12

Abstract: In the control process of hot strip rolling, the gague control and the looper control are interdependent and influence each other, which significantly impacts the overall performance of the gague control system. Traditional modeling methods struggle to accurately represent the intricate characteristics of multivariable coupling and nonlinearity present in the strip rolling process. To address the challenges in modelling nonlinear systems, focusing on a 2160 mm hot rolling line gague control process. A convolution-attention mechanism-long and short-term memory prediction model(CNN-ATT-LSTM) is established based on actual production data, and the hyper-parameters are optimized using the Gray Wolf algorithm. The prediction performance of this model is then compared with that of the long-short term memory network model(LSTM), the deep neural network model (DNN), and the convolutional network-long-short term memory network model(CNN-LSTM). The results indicate that the R2 of the proposed prediction model reaches 93%, demonstrating a higher prediction accuracy for the dynamic changes within the gague-looper system. The generalization performance of the proposed model has been verified using three different strip sizes, demonstrating that the model is capable of providing guidance for high-precision control of gague.

Key words: hot rolling, gague, looper, deep learning

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