Development of AI based analysis tools for online monitoring of steel-making process

R. Miorelli, A. Skarlatos, C. Reboud, Marco Vanucci, C. Mocci, V. Colla, Haibing Yang, D. Fintelman, Bernard P. Ennis, F. van den Berg
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Abstract

Mechanical properties of steel are closely monitored during the manufacturing process through various non-destructive techniques. The IMPOC device implements one of them and is used by steel manufacturers at several locations of the production line. It provides a fast electromagnetic measurement that is strongly correlated with the microstructural state of the steel, hence its use to check online the uniformity of the semi-final or final product. Tata Steel, CEA LIST and SSSA have worked together to analyse IMPOC datasets corresponding to various situations in terms of steel coils and process conditions. A data driven model has been built from field measurements using a specific neural network architecture. This model proves useful to investigate the complex relations between numerous process parameters and the IMPOC value. This communication presents the approach followed to build the data driven model using neural networks and to check its relevance. The relationship between the measurement on one side and the process parameters and material composition on the other side are then investigated by means of several sensitivity analysis and feature importance techniques.
基于人工智能的炼钢过程在线监测分析工具的开发
在制造过程中,通过各种非破坏性技术密切监测钢的机械性能。IMPOC装置实现了其中的一种,并被钢铁制造商在生产线的几个位置使用。它提供了一种与钢的显微组织状态密切相关的快速电磁测量,因此它用于在线检查半成品或最终产品的均匀性。塔塔钢铁公司、CEA LIST和SSSA共同分析了IMPOC数据集,对应于钢卷和工艺条件方面的各种情况。利用特定的神经网络架构,从现场测量中建立了数据驱动模型。该模型可用于研究众多工艺参数与IMPOC值之间的复杂关系。本文介绍了使用神经网络构建数据驱动模型并检查其相关性的方法。然后通过几种灵敏度分析和特征重要性技术研究了一边的测量与另一边的工艺参数和材料成分之间的关系。
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