Virtual Sensor-Based Geometry Prediction of Complex Sheet Metal Parts Formed by Robotic Rollforming

Author:

Abdolmohammadi Tina1ORCID,Richter-Trummer Valentin1ORCID,Ahrens Antje1ORCID,Richter Karsten1ORCID,Alibrahim Alaa1ORCID,Werner Markus1ORCID

Affiliation:

1. Fraunhofer Institute for Machine Tools and Forming Technology IWU, Reichenhainer Str. 88, 09126 Chemnitz, Germany

Abstract

Sheet metal parts can often replace milled components, strongly improving the buy-to-fly ratio in the aeronautical sector. However, the sheet metal forming of complex parts traditionally requires expensive tooling, which is usually prohibitive for low manufacturing rates. To achieve precise parts, non-productive and cost-intensive geometry straightening processes are additionally often required after forming. Rollforming is a possible technology for producing profiles at large rates. For low manufacturing rates, robotic rollforming can be an interesting option, significantly reducing investment at the cost of higher manufacturing times while keeping a high process flexibility. Forming is performed incrementally by a single roller set moved by the robot along predefined bending curves. The present work’s contribution to the overall solution is the development of an intelligent algorithm to calculate geometry after a robotic rollforming process based on process reaction forces. This information is required for in-process geometric distortion correction. Reaction forces and torques are acquired during the process, and geometry is calculated based on artificial intelligence (AI) applied to that information. The present paper describes the AI development for this virtual geometry sensing system.

Funder

German Federal Ministry for Economic Affairs and Climate Action

Publisher

MDPI AG

Subject

Artificial Intelligence,Control and Optimization,Mechanical Engineering

Reference31 articles.

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5. Sedlmaier, A., and Dietl, T. (June, January 31). Recent Advances in the Industrial Application of Flexible (3D) Roll Forming for Automotive Parts by the Use of Modern CAE Tools. Proceedings of the 34th International Deep Drawing Research Group, Shanghai, China.

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