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  4. Performance Assessment of different Machine Learning Algorithm for Life-Time Prediction of Solder Joints based on Synthetic Data
 
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2022
Conference Paper
Title

Performance Assessment of different Machine Learning Algorithm for Life-Time Prediction of Solder Joints based on Synthetic Data

Abstract
This paper proposes a computationally efficient methodology to predict the damage progression in solder contacts of electronic components using temperature-time curves. For this purpose, two machine learning algorithms, a Multilayer Perceptron and a Long Short-Term Memory network, are trained and compared with respect to their prediction accuracy and the required amount of training data. The training is performed using synthetic, normally distributed data that is realistic for automotive applications. A finite element model of a simple bipolar chip resistor in surface mount technology configuration is used to numerically compute the synthetic data. As a result, both machine learning algorithms show a relevant accuracy for the prediction of accumulated creep strains. With a training data length of 350 hours (12.5 % of the available training data), both models show a constantly good fitting performance of R2 of 0.72 for the Multilayer Perceptron and R2 of 0.87 for the Long Short-Term Memory network. The prediction errors of the accumulated creep strains are less than 10 % with an amount of 350 hours training data and decreases to less than 5 % when using further data. Therefore, both approaches are promising for the lifetime prediction directly on the electronic device.
Author(s)
Münch, Stefan  
Fraunhofer-Institut für Keramische Technologien und Systeme IKTS  
Bhat, Darshankumar  orcid-logo
Fraunhofer-Institut für Keramische Technologien und Systeme IKTS  
Heindel, Leonhard
TU Dresden  
Hantschke, Peter
TU Dresden  
Röllig, Mike  
Fraunhofer-Institut für Keramische Technologien und Systeme IKTS  
Kästner, Markus
TU Dresden  
Mainwork
23rd International Conference on Thermal, Mechanical and Multi-Physics Simulation and Experiments in Microelectronics and Microsystems (EuroSimE 2022)  
Conference
International Conference on Thermal, Mechanical and Multi-Physics Simulation and Experiments in Microelectronics and Microsystems 2022  
DOI
10.1109/EuroSimE54907.2022.9758919
Language
English
Fraunhofer-Institut für Keramische Technologien und Systeme IKTS  
Keyword(s)
  • Training

  • Resistors

  • Temperature distribution

  • Machine learning algorithms

  • Creep

  • Training data

  • Data models

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