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Spatial and Sequential Deep Learning Approach for Predicting Temperature Distribution in a Steel-Making Continuous Casting Process

机译:用于预测钢制连续铸造工艺温度分布的空间和顺序深度学习方法

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摘要

Continuous casting is the procedure of the successive casting for solidification of the steel, which contains several cooling processes along the caster to coagulate the molten steel. It is such a rule of thumb that strand surface quality and casting productivity is highly dependent on temperature control. A finite-difference method is one of estimating temperature distribution, yet it hinders the process control efficiently. Song, et al. suggest a multimodal deep learning approach for prediction of the temperature. However, sequential and transient phenomena of solidifying steel are not considered, which makes it difficult to estimate the sequential heat-transfer characteristics in the whole process of the steel concretion. Herein, a deep learning model is proposed to predict the temperature distribution by taking into account both transient and steady-state characteristics. The proposed model addresses both spatial and sequential information by incorporating a convolutional neural network (CNN) and a recurrent neural network (RNN). Our quantitative and qualitative results show considerable predictive performance improvement against baseline models. Furthermore, the proposed model is applicable in a real-world steel-making industry by providing real-time temperature prediction, whilst retaining a lower computational cost.
机译:连续铸造是连续铸造钢凝固的过程,其含有沿脚轮的几种冷却过程以凝结钢水。这是一种拇指规则,钢绞线表面质量和铸造生产率高度依赖于温度控制。有限差分方法是估计温度分布之一,但它能够有效地阻碍过程控制。歌曲,等。建议一种用于预测温度的多模式深度学习方法。然而,不考虑稳定钢的顺序和瞬态现象,这使得难以估计钢结构的整个过程中的连续传热特性。这里,提出了一种深度学习模型来通过考虑瞬态和稳态特性来预测温度分布。所提出的模型通过结合卷积神经网络(CNN)和经常性神经网络(RNN)来解决空间和顺序信息。我们的定量和定性结果表明了对基线模型的相当大的预测性能改善。此外,通过提供实时温度预测,拟议的模型适用于真实的炼钢行业,同时保留较低的计算成本。

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