Project Details
Machine learning for defect phases (A07*)
Subject Area
Computer-Aided Design of Materials and Simulation of Materials Behaviour from Atomic to Microscopic Scale
Term
since 2024
Project identifier
Deutsche Forschungsgemeinschaft (DFG) - Project number 409476157
The aim of the project, together with C02 as its experimental partner, is to make EBSD usable on the size scale between high-resolution and property measurement specifically for research on defect phases. The project will build a library of simulated EBSD patterns for training networks and identifying patterns associated with experimental samples. The project will also explore how machine learning can significantly improve EBSD analysis methods and integrate the TimePix chip’s measurements of electron energy into EBSD pattern analysis.
DFG Programme
Collaborative Research Centres
Subproject of
SFB 1394:
Structural and Chemical Atomic Complexity: From Defect Phase Diagrams to Material Properties
Applicant Institution
Rheinisch-Westfälische Technische Hochschule Aachen
Project Head
Professor Dr. Ulrich Kerzel