Institute of Production Engineering and Machine Tools Research Publications
User-Specifc Parameterization of Process Monitoring Systems

User-Specifc Parameterization of Process Monitoring Systems

Categories Zeitschriften/Aufsätze (reviewed)
Year 2022
Authors Denkena, B., Klemme, H., Becker, J., Blech, H.:
Published in Production Engineering (2022), published online 16. April 2022, 8 Seiten.
Description

Errors in milling processes such as tool breakage or material inhomogeneities are a major risk to the quality of machined workpieces. Errors like a broken tool may also lead to damages to the machine tool. Process monitoring systems allow for autonomous detection of errors, therefore, promoting autonomous production. The parameterization of these systems is a trade-of between high robustness (low false alarm rate) and high sensitivity. Even though several monitoring systems have been introduced for single-item and series production, a universal parameterization technique that weighs of sensitivity and robustness does not exist. In this paper, a novel, model-independent and adjustable parameterization technique for monitoring systems is introduced. The basis for the parameterization is the material removal rate that indicates the temporal and quantitative impact of process errors (ground truth). The ground truth allows calculation of the established Fβ-score, which is used to evaluate the monitoring system. An adjustment of the β-parameter infuences the weighting of sensitivity and robustness. Accordingly, the β-parameter allows to easily control the sensitivity-robustness trade-of so that the monitoring system is economic for the company’s specifc situation. In this paper, a look-up table for hyper-parameters of the state-of-the-art tolerance range monitoring model is provided using the introduced parameterization approach. With this table companies and researchers can set the hyper-parameters of their monitoring models for 5-axis-milled single items user-specifcally. To demonstrate, that introduced parameterization approach works for diferent kinds of monitoring models, a one-class support vector machine (SVM) is parameterized also.  

DOI https://doi.org/10.1007/s11740-022-01130-1