Project description
- Predicting solder joint reliability with machine learning approaches
- Improved training of AI models through material science and physics insights, specifically Physically Informed Neural Networks
- Inclusion of a large aging data set with TTA, SAM, in-situ stress measurements for understanding aging and training of the models
- Material science investigation of the solders and the solder joints by shear creep tests and nanoindentation at different agings
Project information
Tasks THI | Creation of the dataset (aging+measurements), Development of AI models, FE-Simulation |
Project partner | Conti Temic Microelectronics GmbH, XITASO GmbH IT & Software Solutions, mts Consulting & Engineering GmbH, Technische Hochschule Ingolstadt |
Project sponsor | Bayerisches Verbundforschungsprogramm Förderlinie "Digitalisierung", Bayerisches Staatsministerium für Wirtschaft |
Project term | 09/01/2021 bis 08/31/2024 |
Contact
Head of Fraunhofer Application Center "Connected Mobility and Infrastructure"; Research Professor Assembly and Connection Technology
Prof. Dr. Gordon Elger
Phone: +49 841 9348-2840
Room: A114
E-Mail: Gordon.Elger@thi.de
Prof. Dr. Gordon Elger
Phone: +49 841 9348-2840
Room: A114
E-Mail: Gordon.Elger@thi.de
Open positions
If you are interested in vacancies for student work within the research group, please send an email with CV to assistenz-iimo-elger.de.