Engineering and Technologynpj Computational Materials
Extracting local nucleation fields in permanent magnets using machine learning
M. Gusenbauer, H. Oezelt, et al.
This research, conducted by Markus Gusenbauer and colleagues, investigates the prediction of simulated nucleation fields in permanent magnets using machine learning. By analyzing microstructure imaging, the study identifies potential weaknesses and trends in nucleation field distribution through efficient decision tree models.
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