UCSM: Dataset of U-Shaped Parametric CAD Geometries and Real-World Sheet Metal Meshes for Deep Drawing

19 Pages Posted: 28 May 2025

See all articles by Tobias Lehrer

Tobias Lehrer

Technische Universität München (TUM)

Philipp Stocker

Regensburg University of Applied Sciences

Fabian Duddeck

affiliation not provided to SSRN

Marcus Wagner

Regensburg University of Applied Sciences

Date Written: May 21, 2025

Abstract

The development of machine learning (ML) applications in deep drawing is hindered by limited data availability and the absence of open-access benchmarks for validating novel approaches, including domain generalization over distinct geometries. This paper addresses these challenges by introducing a comprehensive U-shaped dataset tailored to this manufacturing process. Our U-Channel sheet metal (UCSM) dataset combines 90 real-world meshes with an infinite number of synthetic geometry samples generated from four parametric Computer-Aided Design (CAD) models, ensuring extensive geometry variety and data quantity. Additionally, a ready-to-use dataset for drawability assessment and segmentation is provided. Leveraging CAD and mesh data sources bridges the gap between sparse data availability and ML requirements. Our analysis demonstrates that the proposed parametric models are geometrically valid, and real-world and synthetic data complement each other effectively, providing robust support for ML model development. While the dataset is confined to U-shaped, thin-walled, deep drawing scenarios, it considerably aids in overcoming data scarcity. Thereby, it facilitates the validation and comparison of new geometry-generalizing ML methodologies in this domain. By providing this benchmark dataset, we enhance the comparability and validation of emerging methods for ML advancements in sheet metal forming.

Keywords: Benchmark dataset, Computer-Aided Design, Parametric CAD models, U-channel, Machine Learning, Domain Generalization

Suggested Citation

Lehrer, Tobias and Stocker, Philipp and Duddeck, Fabian and Wagner, Marcus, UCSM: Dataset of U-Shaped Parametric CAD Geometries and Real-World Sheet Metal Meshes for Deep Drawing (May 21, 2025). Available at SSRN: https://ssrn.com/abstract=5268323 or http://dx.doi.org/10.2139/ssrn.5268323

Tobias Lehrer (Contact Author)

Technische Universität München (TUM) ( email )

Arcisstrasse 21
Munich, DE 80333
Germany

Philipp Stocker

Regensburg University of Applied Sciences ( email )

Fabian Duddeck

affiliation not provided to SSRN ( email )

Marcus Wagner

Regensburg University of Applied Sciences ( email )

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