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Li et al., 2022 - Google Patents

Modeling and validation of bending force for 6-high tandem cold rolling mill based on machine learning models

Li et al., 2022

Document ID
4959875565377904625
Author
Li J
Wang X
Yang Q
Zhao J
Wu Z
Wang Z
Publication year
Publication venue
The International Journal of Advanced Manufacturing Technology

External Links

Snippet

When producing high-end grades of cold-rolled strips such as precision thin strips and high- strength automobile steel plates, it is difficult to control the flatness due to their small thicknesses or high strengths, and it is easy to produce high-order flatness defects. To …
Continue reading at link.springer.com (other versions)

Classifications

    • BPERFORMING OPERATIONS; TRANSPORTING
    • B21MECHANICAL METAL-WORKING WITHOUT ESSENTIALLY REMOVING MATERIAL; PUNCHING METAL
    • B21BROLLING OF METAL
    • B21B37/00Control devices or methods specially adapted for metal-rolling mills or the work produced thereby
    • B21B37/28Control of flatness or profile during rolling of strip, sheets or plates

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