Machine learning in continuous casting of steel: a state-of-the-art survey

被引:0
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作者
David Cemernek
Sandra Cemernek
Heimo Gursch
Ashwini Pandeshwar
Thomas Leitner
Matthias Berger
Gerald Klösch
Roman Kern
机构
[1] Know-Center GmbH - Research Center for Data-Driven Business & Big Data Analytics,
[2] Technical University Graz - CAMPUSonline,undefined
[3] voestalpine Stahl Donawitz GmbH,undefined
来源
关键词
Continuous casting; Machine learning; Intelligent manufacturing; Process industry; Quality prediction; Steel manufacturing; Steel quality control;
D O I
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中图分类号
学科分类号
摘要
Continuous casting is the most important route for the production of steel today. Due to the physical, mechanical, and chemical components involved in the production, continuous casting is a very complex process, pushing conventional methods of monitoring and control to their limits. In recent years, this complexity and the increasing global competition created a demand for new methods to monitor and control the continuous casting process. Due to the success and associated rise of machine learning techniques in recent years, machine learning nowadays plays an essential role in monitoring and controlling complex processes. This publication presents a scientific survey of machine learning techniques for the analysis of the continuous casting process. We provide an introduction to both the involved fields: an overview of machine learning, and an overview of the continuous casting process. Therefore, we first analyze the existing work concerning machine learning in continuous casting of steel and then synthesize the common concepts into categories, supporting the identification of common use cases and approaches. This analysis is concluded with the elaboration of challenges, potential solutions, and a future outlook of further research directions.
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页码:1561 / 1579
页数:18
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