Current trends on deep learning techniques applied in iron and steel making field: A review

IF 1.6 4区 材料科学 Q2 METALLURGY & METALLURGICAL ENGINEERING Isij International Pub Date : 2024-07-19 DOI:10.2355/isijinternational.isijint-2024-098
Kazumasa Tsutsui, Tokinaga Namba, Kengo Kihara, Junichi Hirata, Shohei Matsuo, Kazuma Ito
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Abstract

Recently, remarkable advances have been made in statistical analyses based on deep-learning techniques. Applied studies of deep learning have been reported in various industrial fields, including the iron and steel-making industries. The production of iron and steel requires a variety of processes, such as the processing of ingredients, iron-making, casting, and rolling. Consequently, the data acquired from them are diverse, and various tasks exist that can be assisted by deep-learning algorithms. Hence, providing a summary of the application is helpful for researchers specializing in information science to grasp the current trend of applied studies on deep learning techniques and for researchers specializing in each field of the iron and steel-making industry to understand what types of deep learning techniques are being utilized in other specialized fields. Therefore, in this study, we summarize the current studies on the application of deep learning in the iron- and steel-making fields by organizing them into several categories of processes and analytical methodologies. Furthermore, based on the results, we discuss future perspectives on the development of deep-learning techniques in this field.

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钢铁制造领域应用深度学习技术的当前趋势:综述
最近,基于深度学习技术的统计分析取得了显著进展。深度学习在各个工业领域的应用研究都有报道,其中包括钢铁行业。钢铁生产需要多种工序,如原料加工、炼铁、铸造和轧制。因此,从中获取的数据多种多样,深度学习算法可以帮助完成各种任务。因此,对应用情况进行总结有助于信息科学专业的研究人员掌握当前深度学习技术应用研究的趋势,也有助于钢铁行业各领域的专业研究人员了解其他专业领域正在使用哪些类型的深度学习技术。因此,在本研究中,我们将深度学习在炼铁和炼钢领域的应用研究归纳为几类流程和分析方法。此外,基于研究结果,我们还讨论了深度学习技术在该领域的未来发展前景。
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来源期刊
Isij International
Isij International 工程技术-冶金工程
CiteScore
3.40
自引率
16.70%
发文量
268
审稿时长
2.6 months
期刊介绍: The journal provides an international medium for the publication of fundamental and technological aspects of the properties, structure, characterization and modeling, processing, fabrication, and environmental issues of iron and steel, along with related engineering materials.
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