Machine learning-based shear force quality prediction of ultrasonic wire bonds: utilizing process data and machine data without additional sensors
Christoph Buchner,
Christian T. Seidler,
Marco F. Huber
et al.
Abstract:Ultrasonic wire bonding is a highly automated production process that is used billions of times a year in the electronics and electromobility industries. Due to the complexity of the process and the large number of influencing parameters, there are currently no automated methods that can be used without additional sensors to evaluate the shear force bond quality quantitatively and non-destructively with sufficiently high precision. For this reason, this paper presents a new methodology that uses machine learni… Show more
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