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Published in: International Journal of Material Forming 4/2011

01-12-2011 | Original Research

Modelling the correlation between the geometrical features and the forming limit strains of perforated Al 8011 sheets using artificial neural network

Authors: K. Elangovan, C. Sathiya Narayanan, R. Narayanasamy

Published in: International Journal of Material Forming | Issue 4/2011

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Abstract

In the recent years, sheet metals are produced with perforations in various shapes and patterns to improve the appearance of sheet and to save weight of components. As in conventional metal sheets, it is important to form the perforated sheet metals also within their safe strain regions to avoid the forming failures like necking, fracture and wrinkling. The Forming Limit Diagram (FLD) is an appropriate tool to determine the forming limit strains. The limiting strains of perforated sheet metals mainly depend on the geometry of the perforations and forming variables. This leads to large increase in number of test to be conducted with various geometry and forming variables for determining the forming limit strain for perforated sheets. Aiming to reduce the number of experiments needed, in this work, an Artificial Neural Network (ANN) model has been developed for forming limit diagram of perforated Al 8011 sheets based on experimental results and correlated with the geometrical features of the perforated sheets. This model is a feed forward back propagation neural network (BPNN) with a set of geometrical variables as its inputs and the safe true strains as its output. This ANN model can be applied for prediction of FLD of perforated sheet having any geometry.

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Metadata
Title
Modelling the correlation between the geometrical features and the forming limit strains of perforated Al 8011 sheets using artificial neural network
Authors
K. Elangovan
C. Sathiya Narayanan
R. Narayanasamy
Publication date
01-12-2011
Publisher
Springer-Verlag
Published in
International Journal of Material Forming / Issue 4/2011
Print ISSN: 1960-6206
Electronic ISSN: 1960-6214
DOI
https://doi.org/10.1007/s12289-010-1003-x

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