Using geometric shape variations to create an inverse model for a sheet metal process

Abstract The output of the sheet metal forming process is subject to much variation. This paper develops a method to measure shape variation in channel forming and relate this back to the corresponding process parameter levels of the manufacturing set-up to create an inverse model. The shape variati...

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Bibliographic Details
Published inProceedings of the Institution of Mechanical Engineers. Part B, Journal of engineering manufacture Vol. 217; no. 12; pp. 1665 - 1675
Main Authors Rolfe, B F, Cardew-Hall, M J, Abdallah, S M, West, G A W
Format Journal Article
LanguageEnglish
Published London, England SAGE Publications 01.01.2003
Mechanical Engineering Publications
SAGE PUBLICATIONS, INC
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ISSN0954-4054
2041-2975
DOI10.1243/095440503772680596

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Summary:Abstract The output of the sheet metal forming process is subject to much variation. This paper develops a method to measure shape variation in channel forming and relate this back to the corresponding process parameter levels of the manufacturing set-up to create an inverse model. The shape variation in the channels is measured using a modified form of the point distribution model (also known as the active shape model). This means that channels can be represented by a weighting vector of minimal linear dimension that contains all the shape variation information from the average formed channel. The inverse models were created using classifiers that related the weighting vectors to the process parameter levels for the blank holder force (BHF), die radii (DR) and tool gap (TG) of the parameters. Several classifiers were tested: linear, quadratic Gaussian and artificial neural networks. The quadratic Gaussian classifiers were the most accurate and the most consistent type of classifier over all the parameters.
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ISSN:0954-4054
2041-2975
DOI:10.1243/095440503772680596