Metamodeling of a deep drawing process using conditional Generative Adversarial Networks
Research output: Contribution to journal › Research article › Contributed › peer-review
Contributors
Abstract
Optimization tasks as well as quality predictions for process control require fast responding process metamodels. A common strategy for sheet metal forming is building fast data driven metamodels based on results of Finite Element (FE) process simulations. However, FE simulations with complex material models and large parts with many elements consume extensive computational time. Hence, one major challenge in developing metamodels is to achieve a good prediction precision with limited data, while these predictions still need to be robust against varying input parameters. Therefore, the aim of this study was to evaluate if conditional Generative Adversarial Networks (cGAN) are applicable for predicting results of FE deep drawing simulations, since cGANs could achieve high performance in similar tasks in previous work. This involves investigations of the influence of data required to achieve a defined precision and to predict e.g. wrinkling phenomena. Results show that the cGAN used in this study was able to predict forming results with an averaged absolute deviation of sheet thickness of 0.025 mm, even when using a comparable small amount of data.
Details
Original language | Undefined |
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Article number | 012064 |
Number of pages | 9 |
Journal | IOP Conference Series: Materials Science and Engineering |
Volume | 1238 |
Issue number | 1 |
Publication status | Published - 1 May 2022 |
Peer-reviewed | Yes |
External IDs
Mendeley | fc225448-8eff-3aee-897f-8d1ba979dd87 |
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unpaywall | 10.1088/1757-899x/1238/1/012064 |
WOS | 000894042400064 |
Keywords
Research priority areas of TU Dresden
DFG Classification of Subject Areas according to Review Boards
Subject groups, research areas, subject areas according to Destatis
Sustainable Development Goals
ASJC Scopus subject areas
Keywords
- Neural-networks, Optimization, Prediction