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Artificial Neural Network Modeling for Prediction of Roll Force During Plate Rolling Process

机译:板轧制过程中轧制力预测的人工神经网络建模

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Accurate prediction of roll force during hot rolling process is very important for model based automation (Level-2) of plate mills. Exit thickness of plate for each pass is calculated from roll gap, mill spring, and predicted roll force. The response of gauge control hardware is highly dependant on the accuracy of prediction of roll force. Traditionally, mathematical models based on plane homogeneous plastic deformation theory are used for prediction of roll force. This method is based on many simplified assumptions which are not valid for actual industrial application. An artificial neural network (ANN)-based data driven model has been developed for prediction of roll force during plate rolling process. A very accurate data acquisition system has been installed in Plate Mill of Bhilai Steel Plant through which input and output parameters have been recorded. For a particular grade of steel, inputs to the ANN model are roll gap of previous pass, roll gap of current pass, rolling temperature, rolling speed, plate width, and pass number (6 inputs). The model output is roll force (1 output). In this article, the methodologies of development, training, and validation of ANN model has been discussed. Feed forward network has been chosen as ANN structure. Back propagation algorithm with variable learning rate and conjugate gradient optimization of cost function has been chosen as network training methodology. The model was found to be highly accurate with γ-square value about 0.94.
机译:热轧过程中轧制力的准确预测对于板轧机基于模型的自动化(级别2)非常重要。从轧辊间隙,轧机弹簧和预计轧辊力计算出每道次的板材出口厚度。仪表控制硬件的响应高度依赖于轧制力预测的准确性。传统上,基于平面均质塑性变形理论的数学模型用于预测侧倾力。该方法基于许多简化的假设,这些假设对于实际的工业应用无效。已经开发了基于人工神经网络(ANN)的数据驱动模型来预测板轧制过程中的轧制力。在Bhilai钢厂的Plate Mill中安装了一个非常准确的数据采集系统,通过该系统可以记录输入和输出参数。对于特定等级的钢,ANN模型的输入是前一道次的轧制间隙,当前道次的轧制间隙,轧制温度,轧制速度,板宽和通过次数(6个输入)。模型输出为侧倾力(1个输出)。在本文中,讨论了ANN模型的开发,训练和验证的方法。前馈网络已被选作ANN结构。选择具有可变学习率的反向传播算法和成本函数的共轭梯度优化作为网络训练方法。发现该模型非常准确,其γ平方值约为0.94。

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