Prediction of carbon content in the metal of final blow period in BOF using neural network

M. K. Shakirov, E. Protopopov, A. V. Zimin, E. B. Turchaninov
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Abstract

Prediction and control of the carbon content after the end of oxygen blow in BOF converter are key points of steel production efficiency. One of the most accurate methods is the dynamic predicting method based on the use of intermediate sublance measurement (TSC probe) when about 85 – 90 % of total oxygen is consumed and on the final period model. Models of the final period are traditionally based on exponential or cubic functions, currently there are developments based on neural network technologies. We investigated the possibility of using a neural network to predict the final carbon content using the results of intermediate sublance measurement (TSO probe) when about 95 % of total oxygen is consumed. As a model of the final period, a two-layer neural network with one hidden layer and an activation function of the Softplus type for all neurons was implemented in software. The input vectors contain initial carbon content and oxygen consumption for the second blow values. The output vector contains the predicted final carbon content, the output training vector - actual final carbon content values. The network was trained on 700 heats data of the training set. The model trained in this way was tested on 232 heats data of the testing set. The prediction errors distribution and values of the mean absolute error and root mean square error for the training and testing sets are correspondingly close. They are also comparable with similar indicators of the heats, the final period of which was carried out without oxygen blow (only flux additions and/or nitrogen blow), and this indicates a high accuracy of the prediction.
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利用神经网络预测转炉最终吹炼阶段金属中的碳含量
预测和控制转炉吹氧结束后的含碳量是提高钢铁生产效率的关键。最精确的方法之一是动态预测法,该方法基于在总氧气消耗约 85 - 90 % 时使用中间副枪测量(TSC 探头)和末期模型。末期模型传统上以指数函数或立方函数为基础,目前正在发展以神经网络技术为基础的模型。我们研究了使用神经网络来预测最终碳含量的可能性,即在总氧气消耗约 95% 时,使用中间亚光程测量(TSO 探头)的结果来预测最终碳含量。作为最终阶段的模型,我们在软件中实现了一个双层神经网络,该网络有一个隐藏层,所有神经元的激活函数均为软加类型。输入向量包含第二次打击的初始碳含量和耗氧量。输出向量包含预测的最终碳含量,输出训练向量 - 实际最终碳含量值。该网络是在训练集的 700 个加热数据上进行训练的。以这种方式训练的模型在测试集的 232 个加热数据上进行了测试。训练集和测试集的预测误差分布、平均绝对误差和均方根误差值都非常接近。它们还可与加热炉的类似指标进行比较,加热炉的最后一段时间没有吹氧(只有通量添加和/或吹氮气),这表明预测的准确性很高。
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