Automated weldment grade selection

Lazarson, E. V.
November 2013
Automation & Remote Control;Nov2013, Vol. 74 Issue 11, p1898
Academic Journal
Key issues of automated weldment grade selection are considered. Specific features of the selection problem and solution approaches are outlined. The proposed methods are exemplified.


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