热轧带钢轧制力模型自学习算法优化

Self-learning algorithm optimization for the rolling force model of hot strips

  • 摘要: 根据轧制数量、测量数据质量和轧制力预报误差的影响,建立了轧制力自学习速度因子优化模型.在长期自学习的判定条件中综合考虑了规格分档的变化以及厚度、宽度的改变量,减少了换规格的次数.长期自学习系数计算时利用了从前一块钢数据中分离出的设备状态信息,从而改善了模型自学习的连续性.离线仿真分析结果表明,轧制力计算精度相对于自学习算法优化前有较大的提高.

     

    Abstract: The influences of the number of rolled strips,the quality of measured data and the tolerance of rolling force prediction were taken into account for building a self-learning speed optimization model of rolling force.The grades and values of thickness and width were considered in the determinant condition of long-term self-learning to reduce the frequency of size change.The information of equipment states which was separated from the data of the last strip was used into the calculation of long-term self-learning factor to improve the continuity of the self-learning model.Offline simulation results show that the accuracy of the rolling force model is improved after the self-learning algorithm is optimized.

     

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