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He et al., 2023 - Google Patents

Whole process prediction model of silicon steel strip on transverse thickness difference based on Takagi-Sugeno fuzzy network

He et al., 2023

Document ID
788702914867274581
Author
He H
Dai Z
Wang X
Yang Q
Shao J
Li J
Zhang Z
Zhang L
Publication year
Publication venue
Journal of Iron and Steel Research International

External Links

Snippet

The hot rolling and cold rolling control models of silicon steel strip were examined. Shape control of silicon steel strip of hot rolling was a theoretical analysis model, and the shape control of cold rolling was a data-based prediction model. The mathematical model of the hot …
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