Neural Network Model and Finite Element Simulation of Spring back in Plane-Strain Metallic Beam Bending

Bending has significant importance in the sheet metal product industry. Moreover, the spring back of sheet metal should be taken into consideration in order to produce bent sheet metal parts within acceptable tolerance limits and to solve geometrical variation for the control of manufacturing pro...

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Main Author: Abu Khadra, Fayiz Y. M.
Format: Thesis
Language:English
English
Published: 2006
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Online Access:http://psasir.upm.edu.my/id/eprint/6111/1/FK_2006_21.pdf
http://psasir.upm.edu.my/id/eprint/6111/
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spelling my.upm.eprints.61112023-10-09T03:29:17Z http://psasir.upm.edu.my/id/eprint/6111/ Neural Network Model and Finite Element Simulation of Spring back in Plane-Strain Metallic Beam Bending Abu Khadra, Fayiz Y. M. Bending has significant importance in the sheet metal product industry. Moreover, the spring back of sheet metal should be taken into consideration in order to produce bent sheet metal parts within acceptable tolerance limits and to solve geometrical variation for the control of manufacturing process. Nowadays, the importance of this problem increases because of the use of sheet-metal parts with high mechanical characteristics. This research proposes a novel approach to predict springback in the air bending process. In this approach the finite element method is combined with metamodeling techniques to accurately predict the springback. Two metamodeling techniques namely the neural network and the response surface methodology are used and compared to approximate two multidimensional functions. The first function predicts the springback amount for a given material, geometrical parameters, and the bend angle before springback. The second function predicts the punch displacement for a given material, geometrical parameters, and the bend angle after springback. The training data required to train the two-metamodeling techniques were generated using a verified nonlinear finite element algorithm developed in the current research. The algorithm is based on the updated Lagrangian formulation, which takes into consideration geometrical, material nonlinearity, and contact. To validate the finite element model physical experiments were conducted. A neural network algorithm based on the backpropagation algorithm has been developed. This research utilizes computer generated D-optimal designs to select training examples for both metamodeling techniques so that a comparison between the two techniques can be considered as fair. Results from this research showed that finite element prediction of springback is in good agreement with the experimental results. The standard deviation is 1.213 degree. It has been found that the neural network metamodels give more accurate results than the response surface metamodels. The standard deviation between the finite element method and the neural network metamodels for the two functions are 0.635 degree and 0.985 mm respectively. The standard deviation between the finite element method and the response surface methodology are 1.758 degree and 1.878 mm for both functions, respectively. 2006-02 Thesis NonPeerReviewed text en http://psasir.upm.edu.my/id/eprint/6111/1/FK_2006_21.pdf Abu Khadra, Fayiz Y. M. (2006) Neural Network Model and Finite Element Simulation of Spring back in Plane-Strain Metallic Beam Bending. Doctoral thesis, Universiti Putra Malaysia. Neural networks (Computer science) - Sheet-metal - Bending - Case studies English
institution Universiti Putra Malaysia
building UPM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Putra Malaysia
content_source UPM Institutional Repository
url_provider http://psasir.upm.edu.my/
language English
English
topic Neural networks (Computer science) - Sheet-metal - Bending - Case studies
spellingShingle Neural networks (Computer science) - Sheet-metal - Bending - Case studies
Abu Khadra, Fayiz Y. M.
Neural Network Model and Finite Element Simulation of Spring back in Plane-Strain Metallic Beam Bending
description Bending has significant importance in the sheet metal product industry. Moreover, the spring back of sheet metal should be taken into consideration in order to produce bent sheet metal parts within acceptable tolerance limits and to solve geometrical variation for the control of manufacturing process. Nowadays, the importance of this problem increases because of the use of sheet-metal parts with high mechanical characteristics. This research proposes a novel approach to predict springback in the air bending process. In this approach the finite element method is combined with metamodeling techniques to accurately predict the springback. Two metamodeling techniques namely the neural network and the response surface methodology are used and compared to approximate two multidimensional functions. The first function predicts the springback amount for a given material, geometrical parameters, and the bend angle before springback. The second function predicts the punch displacement for a given material, geometrical parameters, and the bend angle after springback. The training data required to train the two-metamodeling techniques were generated using a verified nonlinear finite element algorithm developed in the current research. The algorithm is based on the updated Lagrangian formulation, which takes into consideration geometrical, material nonlinearity, and contact. To validate the finite element model physical experiments were conducted. A neural network algorithm based on the backpropagation algorithm has been developed. This research utilizes computer generated D-optimal designs to select training examples for both metamodeling techniques so that a comparison between the two techniques can be considered as fair. Results from this research showed that finite element prediction of springback is in good agreement with the experimental results. The standard deviation is 1.213 degree. It has been found that the neural network metamodels give more accurate results than the response surface metamodels. The standard deviation between the finite element method and the neural network metamodels for the two functions are 0.635 degree and 0.985 mm respectively. The standard deviation between the finite element method and the response surface methodology are 1.758 degree and 1.878 mm for both functions, respectively.
format Thesis
author Abu Khadra, Fayiz Y. M.
author_facet Abu Khadra, Fayiz Y. M.
author_sort Abu Khadra, Fayiz Y. M.
title Neural Network Model and Finite Element Simulation of Spring back in Plane-Strain Metallic Beam Bending
title_short Neural Network Model and Finite Element Simulation of Spring back in Plane-Strain Metallic Beam Bending
title_full Neural Network Model and Finite Element Simulation of Spring back in Plane-Strain Metallic Beam Bending
title_fullStr Neural Network Model and Finite Element Simulation of Spring back in Plane-Strain Metallic Beam Bending
title_full_unstemmed Neural Network Model and Finite Element Simulation of Spring back in Plane-Strain Metallic Beam Bending
title_sort neural network model and finite element simulation of spring back in plane-strain metallic beam bending
publishDate 2006
url http://psasir.upm.edu.my/id/eprint/6111/1/FK_2006_21.pdf
http://psasir.upm.edu.my/id/eprint/6111/
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score 13.211869