Correlation-driven machine learning for accelerated reliability assessment of solder joints in electronics
TL;DR: A correlation-driven neural network model is proposed that predicts the useful lifetime of solder joints in electronic systems based on the materials properties, device configuration, and thermal cycling variations and indicates a high accuracy of the prediction model in the shortest possible time.
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Abstract: The quantity and variety of parameters involved in the failure evolutions in solder joints under a thermo-mechanical process directs the reliability assessment of electronic devices to be frustratingly slow and expensive. To tackle this challenge, we develop a novel machine learning framework for reliability assessment of solder joints in electronic systems; we propose a correlation-driven neural network model that predicts the useful lifetime based on the materials properties, device configuration, and thermal cycling variations. The results indicate a high accuracy of the prediction model in the shortest possible time. A case study will evaluate the role of solder material and the joint thickness on the reliability of electronic devices; we will illustrate that the thermal cycling variations strongly determine the type of damage evolution, i.e., the creep or fatigue, during the operation. We will also demonstrate how an optimal selection of the solder thickness balances the damage types and considerably improves the useful lifetime. The established framework will set the stage for further exploration of electronic materials processing and offer a potential roadmap for new developments of such materials.
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Machine learning framework for predicting the low cycle fatigue life of lead-free solders
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References
Deep learning in neural networks
TL;DR: This historical survey compactly summarizes relevant work, much of it from the previous millennium, review deep supervised learning, unsupervised learning, reinforcement learning & evolutionary computation, and indirect search for short programs encoding deep and large networks.
18.7K
•Proceedings Article
Rectified Linear Units Improve Restricted Boltzmann Machines
Vinod Nair,Geoffrey E. Hinton +1 more
- 21 Jun 2010
TL;DR: Restricted Boltzmann machines were developed using binary stochastic hidden units that learn features that are better for object recognition on the NORB dataset and face verification on the Labeled Faces in the Wild dataset.
Grammar Engineering for CCG using Ant and XSLT
Scott Martin,Rajakrishnan Rajkumar,Michael White +2 more
- 05 Jun 2009
TL;DR: The successful implementation of an approach to corpus conversion and grammar extraction that facilitates the improvement of grammar engineering as an evolving process is reported.
•Book
Engineering Damage Mechanics: Ductile, Creep, Fatigue and Brittle Failures
Jean Lemaitre,Rodrigue Desmorat +1 more
- 11 Feb 2005
TL;DR: In this article, a detailed analysis of continuoustime damage mechanics is presented, including failure of brittle and quasi-brittle materials, low cycle fatigue, and high cycle fatigue.
1.2K
Model for Power Cycling lifetime of IGBT Modules - various factors influencing lifetime
Reinhold Bayerer,Tobias Herrmann,Thomas Dr. Licht,Josef Lutz,Marco Feller +4 more
- 11 Mar 2008
TL;DR: In this article, a large number of power cycling data from different IGBT module generations and test conditions have been evaluated and multiple regression with respect to the variables temperature swing DeltaTJ, TJ, power-on-time (ton), chip thickness, bonding technology, diameter (D) of bonding wire, current per wire bond (I) and package type was performed.
605