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Tubemaking
Название Determination of piercing mill settings using digital technology
Автор D. Yu. Zvonarev, V. L. Neroznikov, A. V. Vydrin
Информация об авторе

All-Russian Scientific and Research Institute of Tube Industry - RosNITI (Chelyabinsk, Russia):

D. Yu. Zvonarev, Cand. Eng., Senior Researcher, e-mail: zvonarev@rosniti.ru
A. V. Vydrin, Dr. Eng., Prof., Deputy General Director on Scientific Work, e-mail: vydrinav@rosniti.ru

 

Taganrog Metallurgical Plant – Tagmet (Taganrog, Russia)
V. L. Neroznikov, Head of tube Laboratory

Реферат

In existing practice, analytical dependencies that are general in nature and do not take into account the characteristics of a particular piercing mill are used to determine the settings for piercing mills. Therefore, it is possible to set the required setting both at the first attempt and by clarifying the calculated setting by piercing several tuning billets. The latter leads to the increased consumption of metal. It is possible to exclude metal losses during the piercing mill setting using modern digital technologies, including BigData and artificial intelligence technologies. Technologies are based on a systematic and continuous analysis of data from production units in order to obtain the basis for decision-making. An artificial neural network can be used as the basis of artificial intelligence.

Ключевые слова Piercing mill, tuning parameters, guide disks, big data analysis, machine learning, artificial neural network
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Language of full-text русский
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