Exploring Supervised Machine Learning for Multi-Phase Identification and
Quantification from Powder X-Ray Diffraction Spectra
- URL: http://arxiv.org/abs/2211.08591v1
- Date: Wed, 16 Nov 2022 00:36:13 GMT
- Title: Exploring Supervised Machine Learning for Multi-Phase Identification and
Quantification from Powder X-Ray Diffraction Spectra
- Authors: Jaimie Greasley and Patrick Hosein
- Abstract summary: Powder X-ray diffraction analysis is a critical component of materials characterization methodologies.
Deep learning has become a prime focus for predicting crystallographic parameters and features from X-ray spectra.
Here, we are interested in conventional supervised learning algorithms in lieu of deep learning for multi-label crystalline phase identification.
- Score: 1.0660480034605242
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Powder X-ray diffraction analysis is a critical component of materials
characterization methodologies. Discerning characteristic Bragg intensity peaks
and assigning them to known crystalline phases is the first qualitative step of
evaluating diffraction spectra. Subsequent to phase identification, Rietveld
refinement may be employed to extract the abundance of quantitative,
material-specific parameters hidden within powder data. These characterization
procedures are yet time-consuming and inhibit efficiency in materials science
workflows. The ever-increasing popularity and propulsion of data science
techniques has provided an obvious solution on the course towards materials
analysis automation. Deep learning has become a prime focus for predicting
crystallographic parameters and features from X-ray spectra. However, the
infeasibility of curating large, well-labelled experimental datasets means that
one must resort to a large number of theoretic simulations for powder data
augmentation to effectively train deep models. Herein, we are interested in
conventional supervised learning algorithms in lieu of deep learning for
multi-label crystalline phase identification and quantitative phase analysis
for a biomedical application. First, models were trained using very limited
experimental data. Further, we incorporated simulated XRD data to assess model
generalizability as well as the efficacy of simulation-based training for
predictive analysis in a real-world X-ray diffraction application.
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