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Robust design of semi-automated clustering models for 4D-STEM datasets

Alexandra Bruefach, Colin Ophus, Mary Scott

2023APL Machine Learning12 citationsDOIOpen Access PDF

Abstract

Materials discovery and design require characterizing material structures at the nanometer and sub-nanometer scale. Four-Dimensional Scanning Transmission Electron Microscopy (4D-STEM) resolves the crystal structure of materials, but many 4D-STEM data analysis pipelines are not suited for the identification of anomalous and unexpected structures. This work introduces improvements to the iterative Non-Negative Matrix Factorization (NMF) method by implementing consensus clustering for ensemble learning. We evaluate the performance of models during parameter tuning and find that consensus clustering improves performance in all cases and is able to recover specific grains missed by the best performing model in the ensemble. The methods introduced in this work can be applied broadly to materials characterization datasets to aid in the design of new materials.

Topics & Concepts

Cluster analysisComputer scienceModular designNon-negative matrix factorizationIdentification (biology)Data miningClustering high-dimensional dataNanometreMatrix decompositionArtificial intelligenceMaterials sciencePhysicsQuantum mechanicsComposite materialBiologyBotanyOperating systemEigenvalues and eigenvectorsMachine Learning in Materials ScienceAdvanced Electron Microscopy Techniques and ApplicationsNeural Networks and Applications
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