Notice

This is not the latest version of this item. The latest version can be found at:https://dspace.mit.edu/handle/1721.1/136192.2

Show simple item record

dc.contributor.authorOviedo, Felipe
dc.contributor.authorRen, Zekun
dc.contributor.authorSun, Shijing
dc.contributor.authorSettens, Charles
dc.contributor.authorLiu, Zhe
dc.contributor.authorHartono, Noor Titan Putri
dc.contributor.authorRamasamy, Savitha
dc.contributor.authorDeCost, Brian L
dc.contributor.authorTian, Siyu IP
dc.contributor.authorRomano, Giuseppe
dc.contributor.authorGilad Kusne, Aaron
dc.contributor.authorBuonassisi, Tonio
dc.date.accessioned2021-10-27T20:34:12Z
dc.date.available2021-10-27T20:34:12Z
dc.date.issued2019
dc.identifier.urihttps://hdl.handle.net/1721.1/136192
dc.description.abstract© 2019, The Author(s). X-ray diffraction (XRD) data acquisition and analysis is among the most time-consuming steps in the development cycle of novel thin-film materials. We propose a machine learning-enabled approach to predict crystallographic dimensionality and space group from a limited number of thin-film XRD patterns. We overcome the scarce data problem intrinsic to novel materials development by coupling a supervised machine learning approach with a model-agnostic, physics-informed data augmentation strategy using simulated data from the Inorganic Crystal Structure Database (ICSD) and experimental data. As a test case, 115 thin-film metal-halides spanning three dimensionalities and seven space groups are synthesized and classified. After testing various algorithms, we develop and implement an all convolutional neural network, with cross-validated accuracies for dimensionality and space group classification of 93 and 89%, respectively. We propose average class activation maps, computed from a global average pooling layer, to allow high model interpretability by human experimentalists, elucidating the root causes of misclassification. Finally, we systematically evaluate the maximum XRD pattern step size (data acquisition rate) before loss of predictive accuracy occurs, and determine it to be 0.16° 2θ, which enables an XRD pattern to be obtained and classified in 5.5 min or less.
dc.language.isoen
dc.publisherSpringer Science and Business Media LLC
dc.relation.isversionof10.1038/S41524-019-0196-X
dc.rightsCreative Commons Attribution 4.0 International license
dc.rights.urihttps://creativecommons.org/licenses/by/4.0/
dc.sourceNature
dc.titleFast and interpretable classification of small X-ray diffraction datasets using data augmentation and deep neural networks
dc.typeArticle
dc.relation.journalnpj Computational Materials
dc.eprint.versionFinal published version
dc.type.urihttp://purl.org/eprint/type/JournalArticle
eprint.statushttp://purl.org/eprint/status/PeerReviewed
dc.date.updated2020-06-24T19:22:08Z
dspace.orderedauthorsOviedo, F; Ren, Z; Sun, S; Settens, C; Liu, Z; Hartono, NTP; Ramasamy, S; DeCost, BL; Tian, SIP; Romano, G; Gilad Kusne, A; Buonassisi, T
dspace.date.submission2020-06-24T19:22:10Z
mit.journal.volume5
mit.journal.issue1
mit.licensePUBLISHER_CC
mit.metadata.statusAuthority Work and Publication Information Needed


Files in this item

Thumbnail

This item appears in the following Collection(s)

Show simple item record

VersionItemDateSummary

*Selected version