Approach for the Reliable and Virtual Design of Mechanical Joints in an Uncertain Environment

DS 133: Proceedings of the 35th Symposium Design for X (DFX2024)

Year: 2024
Editor: Dieter Krause; Kristin Paetzold-Byhain; Sandro Wartzack
Author: Jonathan-Markus Einwag; Stefan Goetz; Sandro Wartzack
Series: DfX
Institution: Engineering Design (KTmfk), Friedrich-Alexander-Universitat Erlangen-Nurnberg (FAU), Germany
Page(s): 222-230
DOI number: 10.35199/dfx2024.23

Abstract

The demand for lightweight assemblies necessitates appropiate joining processes, such as cold forming processes enabling multi-material joints. The absence of universally applicable approaches for the design of mechanical joints makes their initial design iterative and time-consuming. Machine learning based approaches already partly solve this problem, but the impact of uncertainties, is usually neglected. Thus, this contribution proposes the concept of a novel computer-aided approach, supporting the initial design of clinch joints, taking into account uncertainties and varying conditions utilizing numerical simulations, data-driven methods and ontologies. This aims for a high-quality joint design demonstrated using an application scenario where a hat profile and a sheet are joined.

Keywords: Mechanical Joining, Clinching, Machine Learning, Finite Element Method, Uncertainties

Download

Please sign in to your account

This site uses cookies and other tracking technologies to assist with navigation and your ability to provide feedback, analyse your use of our products and services, assist with our promotional and marketing efforts, and provide content from third parties. Privacy Policy.