Online adaptation model for accelerated cooling process in plate mill

C. K. Jung, C. S. Lee
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Abstract

Two online adaptation models tuning the flowrate of cooling water in plate mill are developed based on the feedback and feedforward control algorithm. In the feedback control based model, a multiplication factor is adopted which is composed of three adaptation coefficients. The calculations of the three coefficients are designed taking process variations into account. After tested on an offline simulator, the adaptation model is installed on the online process resulting in 10% increase of the accuracy rate of the final cooling temperature. And a neural network model is developed to factor in the variations of the prior processes. It uses 24 process variables as inputs and predicts the final cooling temperature. Comparing with the measured data, the predicted temperatures show an accuracy of ±15 °C.
板轧机加速冷却过程在线自适应模型
基于反馈和前馈控制算法,建立了两种在线调节中板冷却水流量的自适应模型。在基于反馈控制的模型中,采用了由三个自适应系数组成的乘法因子。这三个系数的计算在设计时考虑了工艺变化。在离线模拟器上测试后,将自适应模型安装在在线过程中,最终冷却温度的准确率提高了10%。并建立了一个神经网络模型来考虑先验过程的变化。它使用24个过程变量作为输入,并预测最终冷却温度。与实测数据比较,预测温度精度为±15°C。
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