Applications of iron and steel industry with deep learning technologies
LI Jiang-yun1,2, YANG Zhi-fang1,2, ZHENG Jun-feng1,2, ZHAO Yi-kai1,2
1. School of Automation and Electrical Engineering, University of Science and Technology Beijing, Beijing 100083,China; 2. Key Laboratory of Knowledge Automation for Industrial Processes, Ministry of Education, Beijing 100083, China
Abstract:Since artificial intelligence was proposed at the Dartmouth Conference in 1956,it has brought the greatest impact and change to human society in the third wave. The deep learning technology,as one of the main driving forces in this period,is helpful to use in Intelligent steel manufacturing. In order to explore the application prospects of deep learning technologies in the iron and steel industry,several key technologies using deep learning method were explored. Along with the related work by the authors,the research goals and advantages of deep learning based technologies applying to steel intelligent manufacturing were illustrated,which provides reference for the advantages of artificial intelligence technology to empower the development of steel manufacturing manufacturing.
李江昀, 杨志方, 郑俊锋, 赵义凯. 深度学习技术在钢铁工业中的应用[J]. 钢铁, 2021, 56(9): 43-49.
LI Jiang-yun, YANG Zhi-fang, ZHENG Jun-feng, ZHAO Yi-kai. Applications of iron and steel industry with deep learning technologies[J]. Iron and Steel, 2021, 56(9): 43-49.
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