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DTSTART;TZID=Europe/Berlin:20200918T110000
DTEND;TZID=Europe/Berlin:20200918T120000
DTSTAMP:20260507T090403
CREATED:20200901T191758Z
LAST-MODIFIED:20200913T093648Z
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SUMMARY:Pan: Machine learning classification of bond quality in Ultrasonic Metal Welding based on structure-borne and airborne sound measurements
DESCRIPTION:Ultrasonic metal welding (USMW) has received significant attention in recent years. It is particularly suitable for connecting electrotechnical components and has been widely used in various industrial applications. However\, the bond quality in USMW fluctuates due to a large number of influencing variables which may affect the joint strength. The welding process should thus be analysed in more detail by measuring the tool vibrations that occur during welding with laser vibrometers and recording the emitted airborne noise with a microphone.\nThis thesis aims to develop a classification algorithm in machine learning\, which can classify the bond quality into three strength categories labelled as “Underweld”\, “Basicweld” and “Overweld” based on the measured signals. The normalised wavelet packet energy (NWPE) features of these signals are extracted based on the wavelet packet transform (WPT) method. Backpropagation neural network (BPNN)\, support vector machine (SVM) and linear discriminant analysis (LDA) models are developed and optimised for pattern recognition.\nThe classification results of all three models in this study present an acceptable recognition performance. The use of NWPE features has thus the potential to be implemented into process control for welding systems. Such a new approach provides insights into the monitoring of joint quality during USMW process. \nMelden Sie sich Hier an um die Einladung zu dem Vortrag per E-Mail zu erhalten.\nRegister here to receive the invitation to this talk via E-Mail. \nZoom-Meeting-ID: 917 0358 9106\nPasswort: 058632
URL:https://blog.rwth-aachen.de/akustik/event/pan-machine-learning-classification-of-bond-quality-in-ultrasonic-metal-welding-based-on-structure-borne-and-airborne-sound-measurements/
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