Solder joints are critical components in electronic assemblies, influencing the overall reliability, performance, and safety of devices across industries such as consumer electronics, automotive, and medical systems. These joints are exposed to various stresses, including thermal cycling, mechanical vibrations, and humidity, which necessitate a comprehensive understanding of their behavior under these conditions. This study addresses the challenges of calculating plastic strain values in solder joints, particularly lifetime relevant characteristic plastic strains per load cycle, using Finite Element Modeling. Finite Element simulations were conducted by varying loading and design parameters such as temperature, vibration amplitude, printed circuit board thickness, chip thickness, and solder volume to generate a dataset for machine learning models. Recurrent neural networks with different architectures were trained and optimized through hyperparameter tuning to predict characteristic plastic strain values. The models were evaluated using statistical metrics, including mean squared error which was prioritized for evaluation, and root mean squared error. The best-performing model demonstrated high predictive accuracy and generalization potential with a mean square error of 2.276 -9 and a root mean square error of 4.770 -5, offering a robust approach predicting solder joint stress behavior in diverse operational conditions while minimizing the calculation time.

Machine Learning Modelling for Electronic Reliability Analysis in Solder Joints / Alfonso C.G.; Meier K.; Albrecht O.; Qi Y.; Patrizi G.; Ciani L.; Grasso F.; Bock K.. - ELETTRONICO. - (2025), pp. 1-6. ( 2025 International Spring Seminar on Electronics Technology, ISSE 2025 Budapest (Hungary) 14 May 2025 - 18 May 2025) [10.1109/ISSE65583.2025.11121026].

Machine Learning Modelling for Electronic Reliability Analysis in Solder Joints

Patrizi G.;Ciani L.;Grasso F.;
2025

Abstract

Solder joints are critical components in electronic assemblies, influencing the overall reliability, performance, and safety of devices across industries such as consumer electronics, automotive, and medical systems. These joints are exposed to various stresses, including thermal cycling, mechanical vibrations, and humidity, which necessitate a comprehensive understanding of their behavior under these conditions. This study addresses the challenges of calculating plastic strain values in solder joints, particularly lifetime relevant characteristic plastic strains per load cycle, using Finite Element Modeling. Finite Element simulations were conducted by varying loading and design parameters such as temperature, vibration amplitude, printed circuit board thickness, chip thickness, and solder volume to generate a dataset for machine learning models. Recurrent neural networks with different architectures were trained and optimized through hyperparameter tuning to predict characteristic plastic strain values. The models were evaluated using statistical metrics, including mean squared error which was prioritized for evaluation, and root mean squared error. The best-performing model demonstrated high predictive accuracy and generalization potential with a mean square error of 2.276 -9 and a root mean square error of 4.770 -5, offering a robust approach predicting solder joint stress behavior in diverse operational conditions while minimizing the calculation time.
2025
Proceedings of the International Spring Seminar on Electronics Technology
2025 International Spring Seminar on Electronics Technology, ISSE 2025
Budapest (Hungary)
14 May 2025 - 18 May 2025
Goal 9: Industry, Innovation, and Infrastructure
Alfonso C.G.; Meier K.; Albrecht O.; Qi Y.; Patrizi G.; Ciani L.; Grasso F.; Bock K.
File in questo prodotto:
Non ci sono file associati a questo prodotto.

I documenti in FLORE sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1437363
Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus 0
  • ???jsp.display-item.citation.isi??? ND
social impact