4.5 Article

Optimal design of hot rolling process for C-Mn steel by combining industrial data-driven model and multi-objective optimization algorithm

Journal

JOURNAL OF IRON AND STEEL RESEARCH INTERNATIONAL
Volume 25, Issue 7, Pages 700-705

Publisher

SPRINGER
DOI: 10.1007/s42243-018-0101-8

Keywords

Industrial data; Data processing; Mechanical property; Optimal design; Hot rolling process; C-Mn steel

Funding

  1. National Natural Science Foundation of China [U1460204]
  2. Baosteel [U1460204]
  3. Natural Science Foundation of Liaoning Province [2015020180]

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A successful mechanical property data-driven prediction model is the core of the optimal design of hot rolling process for hot-rolled strips. However, the original industrial data, usually unbalanced, are inevitably mixed with fluctuant and abnormal values. Models established on the basis of the data without data processing can cause misleading results, which cannot be used for the optimal design of hot rolling process. Thus, a method of industrial data processing of C-Mn steel was proposed based on the data analysis. The Bayesian neural network was employed to establish the reliable mechanical property prediction models for the optimal design of hot rolling process. By using the multi-objective optimization algorithm and considering the individual requirements of costumers and the constraints of the equipment, the optimal design of hot rolling process was successfully applied to the rolling process design for Q345B steel with 0.017% Nb and 0.046% Ti content removed. The optimal process design results were in good agreement with the industrial trials results, which verify the effectiveness of the optimal design of hot rolling process.

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