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Neural Network Modelling to Characterize Steel Continuous Casting Process Parameters and Prediction of Casting Defects

机译:神经网络建模以表征钢连续铸造工艺参数及铸造缺陷预测

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摘要

The current work outlines application of a data-driven multilayer perceptron-based artificial neural network (ANN) model to characterize the influence of melt compositions, tundish temperature, tundish superheat, casting speed and mould oscillation frequency on the important processing parameters such as mould powder consumption rate, oscillation mark depth and metallurgical length during continuous casting process. A two-layer feedforward back-propagation neural network model has been developed for predicting the probability of occurrence of defect in the cast product. The network training architecture has been optimized using a gradient-based algorithm, namely the back-propagation algorithm. The neural network predictions are found to be in good agreement with regard to oscillation mark depth, mould powder consumption rate, metallurgical length and probability of occurrence of defect using data obtained from an operating Indian steel plant (Rashtriya Ispat Nigam Limited, Visakhapatnam). The ANN model prediction has been validated successfully with multiple linear regression analysis carried out on each data set.
机译:目前的工作概述了基于数据驱动的多层感知者的人工神经网络(ANN)模型,以表征熔体组合物,中包温度,超热,铸造速度和模具振荡频率对模具粉等重要加工参数的影响消耗率,振荡标记深度和冶金长度在连续铸造过程中。已经开发了一种双层前馈回传播神经网络模型,用于预测铸造产品中缺陷的发生概率。已经使用基于梯度的算法优化了网络训练架构,即反向传播算法。发现神经网络预测对于振荡标记深度,模具粉末消耗率,冶金长度和使用从操作印度钢铁厂获得的数据(拉什蒂亚Ispat Nigam Limited,Visakhapatnam)的数据进行了良好的思路。 ANN模型预测已成功验证,在每个数据集上执行的多个线性回归分析。

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