Abstract
Obtaining microscopic structure-property relationships for grain boundaries are challenging because of the complex atomic structures that underlie their behavior. This has led to recent efforts to obtain these relationships with machine learning, but representing a grain boundary structure in a manner suitable for machine learning is not a trivial task. There are three key steps common to property prediction in grain boundaries and other variable-sized atom clustered structures. These are: (1) describe the atomic structure as a feature matrix, (2) transform the variable-sized feature matrices of different structures to a fixed length common to all structures, and (3) apply machine learning to predict properties from the transformed feature matrices. We examine these feature engineering steps to understand how they impact the accuracy of grain boundary energy predictions. A database of over 7000 grain boundaries serves to evaluate the different feature engineering combinations. We also examine how these combination of engineered features provide interpretability, or the ability to extract insightful physics from the obtained structure-property relationships.
Degree
MS
College and Department
Computational, Mathematical, and Physical Sciences; Computer Science
Rights
https://lib.byu.edu/about/copyright/
BYU ScholarsArchive Citation
Owens, C. Braxton, "Feature Engineering for Grain Boundaries and Other Variable-Sized Atom Clusters" (2024). Theses and Dissertations. 11024.
https://scholarsarchive.byu.edu/etd/11024
Date Submitted
2024-08-15
Document Type
Thesis
Permanent Link
https://apps.lib.byu.edu/arks/ark:/34234/q2b30a0708
Keywords
grain boundaries, atomic structure, structure descriptor, machine learning, feature engineering, structure-property relationships
Language
english