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2021
Conference Paper
Title
Deep Learning assisted quantitative Assessment of the Porosity in Ag-Sinter joints based on non-destructive acoustic inspection
Abstract
In power electronics reliable die attach technologies with high electrical and high thermal performance as provided by Ag sintering are of major relevance. The current study continues a previously proposed approach for non-destructively assessing the relative porosity in Ag-sinter joints using ultrasonic signals obtained by acoustic microscopy. In this paper the approach is extended by sophisticated signal analysis employing methods of deep learning. For quantitative porosity estimation a 1D-convolutional neural network in combination with aregressor was trained and evaluated on two separate sample sets. In both cases a high prediction accuracy corresponding to a root-mean-square error (RMSE) of 0.5% was achieved.
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