The accuracy of a finite element model for design and analysis of a metal forging operation is limited by the incorporated material model’s ability to predict deformation behavior over a wide range of operating conditions. Current rheological models prove deficient in several respects due to the difficulty in establishing complicated relations between many parameters. More recently, artificial neural networks (ANN) have been suggested as an effective means to overcome these difficulties. To this end, a robust ANN with the ability to determine flow stresses based on strain, strain rate, and temperature is developed and linked with finite element code. Comparisons of this novel method with conventional means are carried out to demonstrate the advantages of this approach.
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ASME 2005 Pressure Vessels and Piping Conference
July 17–21, 2005
Denver, Colorado, USA
Conference Sponsors:
- Pressure Vessels and Piping Division
ISBN:
0-7918-4187-1
PROCEEDINGS PAPER
Incorporating Neural Network Material Models Within Finite Element Analysis for Rheological Behavior Prediction Available to Purchase
B. Scott Kessler,
B. Scott Kessler
University of Missouri at Columbia, Columbia, MO
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A. Sherif El-Gizawy,
A. Sherif El-Gizawy
University of Missouri at Columbia, Columbia, MO
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Douglas E. Smith
Douglas E. Smith
University of Missouri at Columbia, Columbia, MO
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B. Scott Kessler
University of Missouri at Columbia, Columbia, MO
A. Sherif El-Gizawy
University of Missouri at Columbia, Columbia, MO
Douglas E. Smith
University of Missouri at Columbia, Columbia, MO
Paper No:
PVP2005-71679, pp. 325-334; 10 pages
Published Online:
July 29, 2008
Citation
Kessler, BS, El-Gizawy, AS, & Smith, DE. "Incorporating Neural Network Material Models Within Finite Element Analysis for Rheological Behavior Prediction." Proceedings of the ASME 2005 Pressure Vessels and Piping Conference. Volume 2: Computer Technology. Denver, Colorado, USA. July 17–21, 2005. pp. 325-334. ASME. https://doi.org/10.1115/PVP2005-71679
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