Studies on the prediction of springback in air vee bending of metallic sheets using an artificial neural network

Citation
Mv. Inamdar et al., Studies on the prediction of springback in air vee bending of metallic sheets using an artificial neural network, J MATER PR, 108(1), 2000, pp. 45-54
Citations number
23
Categorie Soggetti
Material Science & Engineering
Journal title
JOURNAL OF MATERIALS PROCESSING TECHNOLOGY
ISSN journal
09240136 → ACNP
Volume
108
Issue
1
Year of publication
2000
Pages
45 - 54
Database
ISI
SICI code
0924-0136(200012)108:1<45:SOTPOS>2.0.ZU;2-6
Abstract
Springback in air vee bending process is large in the absence of bottoming. Inconsistency in springback might arise due to inconsistent sheet thicknes s and material properties. Among the various intelligent methods for contro lling springback, an artificial neural network (ANN) may be used for real t ime control by virtue of their robustness and speed. The present work descr ibes the development of an ANN based on backpropagation (BP) of error. The architecture, established using an analytical model for training consisted of 5 input, 10 hidden and two output nodes (punch displacement and springba ck angle). The five inputs were angle of bend, punch radius/thickness ratio , die gap, die entry radius, yield strength to Young's modulus ratio and th e strain hardening exponent, n. The effect of network parameters on the mea n square error (MSE) of prediction was studied. The ANN was subsequently tr ained with experimental data generated from over 400 plane strain bending e xperiments using combinations of two punch radii, three die radii and three die gaps arid five different materials. Updating of the learning rate and the momentum term was found to be beneficial. Testing of the ANN was carrie d out using experimental data not used during training. It was found that a ccuracy of predictions depended more on the number of training patterns use d than on the ANN architecture. A comparison between batch and pattern mode s of training showed that the pattern mode of learning was slower but more accurate. (C) 2000 Published by Elsevier Science B.V.