Synthetic data generation for deep learning models

Petroll C, Denk M, Holtmannspötter J, Paetzold K, Höfer P (2021)


Publication Language: English

Publication Type: Conference contribution, Conference Contribution

Publication year: 2021

Publisher: The Design Society

Conference Proceedings Title: Proceedings of the 32nd Symposium Design for X, DFX 2021

Event location: Online

DOI: 10.35199/dfx2021.11

Abstract

The design freedom and functional integration of additive manufacturing is increasingly being implemented in existing products. One of the biggest challenges are competing optimization goals and functions. This leads to multidisciplinary optimization problems which needs to be solved in parallel. To solve this problem, the authors require a synthetic data set to train a deep learning metamodel. The research presented shows how to create a data set with the right quality and quantity. It is discussed what are the requirements for solving an MDO problem with a metamodel taking into account functional and production-specific boundary conditions. A data set of generic designs is then generated and validated. The generation of the generic design proposals is accompanied by a specific product development example of a drone combustion engine.

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How to cite

APA:

Petroll, C., Denk, M., Holtmannspötter, J., Paetzold, K., & Höfer, P. (2021). Synthetic data generation for deep learning models. In Dieter Krause, Kristin Paetzold, Sandro Wartzack (Eds.), Proceedings of the 32nd Symposium Design for X, DFX 2021. Online: The Design Society.

MLA:

Petroll, Christoph, et al. "Synthetic data generation for deep learning models." Proceedings of the 32nd Symposium Design for X, DFX 2021, Online Ed. Dieter Krause, Kristin Paetzold, Sandro Wartzack, The Design Society, 2021.

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