TITLE

Automated weldment grade selection

AUTHOR(S)
Lazarson, E. V.
PUB. DATE
November 2013
SOURCE
Automation & Remote Control;Nov2013, Vol. 74 Issue 11, p1898
SOURCE TYPE
Academic Journal
DOC. TYPE
Article
ABSTRACT
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.
ACCESSION #
91907555

 

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