Zirngibl C, Schleich B, Wartzack S (2022)
Publication Type: Journal article
Publication year: 2022
Original Authors: Christoph Zirngibl, Benjamin Schleich, Sandro Wartzack
Book Volume: 3
Pages Range: 990-1006
Issue: 4
DOI: 10.3390/ai3040059
Given strict emission targets and legal requirements, especially in the automotive industry, environmentally friendly and simultaneously versatile applicable production technologies are gaining importance. In this regard, the use of mechanical joining processes, such as clinching, enable assembly sheet metals to achieve strength properties similar to those of established thermal joining technologies. However, to guarantee a high reliability of the generated joint connection, the selection of a best-fitting joining technology as well as the meaningful description of individual joint properties is essential. In the context of clinching, few contributions have to date investigated the metamodel-based estimation and optimization of joint characteristics, such as neck or interlock thickness, by applying machine learning and genetic algorithms. Therefore, several regression models have been trained on varying databases and amounts of input parameters. However, if product engineers can only provide limited data for a new joining task, such as incomplete information on applied joining tool dimensions, previously trained metamodels often reach their limits. This often results in a significant loss of prediction quality and leads to increasing uncertainties and inaccuracies within the metamodel-based design of a clinch joint connection. Motivated by this, the presented contribution investigates different machine learning algorithms regarding their ability to achieve a satisfying estimation accuracy on limited input data applying a statistically based feature selection method. Through this, it is possible to identify which regression models are suitable to predict clinch joint characteristics considering only a minimum set of required input features. Thus, in addition to the opportunity to decrease the training effort as well as the model complexity, the subsequent formulation of design equations can pave the way to a more versatile application and reuse of pretrained metamodels on varying tool configurations for a given clinch joining task.
APA:
Zirngibl, C., Schleich, B., & Wartzack, S. (2022). Estimation of Clinch Joint Characteristics Based on Limited Input Data Using Pre-Trained Metamodels. AI, 3, 990-1006. https://doi.org/10.3390/ai3040059
MLA:
Zirngibl, Christoph, Benjamin Schleich, and Sandro Wartzack. "Estimation of Clinch Joint Characteristics Based on Limited Input Data Using Pre-Trained Metamodels." AI 3 (2022): 990-1006.
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