Literature DB >> 28064478

Automated Phase Mapping with AgileFD and its Application to Light Absorber Discovery in the V-Mn-Nb Oxide System.

Santosh K Suram1, Yexiang Xue2, Junwen Bai3, Ronan Le Bras2, Brendan Rappazzo2, Richard Bernstein2, Johan Bjorck2, Lan Zhou1, R Bruce van Dover4, Carla P Gomes2, John M Gregoire1.   

Abstract

Rapid construction of phase diagrams is a central tenet of combinatorial materials science with accelerated materials discovery efforts often hampered by challenges in interpreting combinatorial X-ray diffraction data sets, which we address by developing AgileFD, an artificial intelligence algorithm that enables rapid phase mapping from a combinatorial library of X-ray diffraction patterns. AgileFD models alloying-based peak shifting through a novel expansion of convolutional nonnegative matrix factorization, which not only improves the identification of constituent phases but also maps their concentration and lattice parameter as a function of composition. By incorporating Gibbs' phase rule into the algorithm, physically meaningful phase maps are obtained with unsupervised operation, and more refined solutions are attained by injecting expert knowledge of the system. The algorithm is demonstrated through investigation of the V-Mn-Nb oxide system where decomposition of eight oxide phases, including two with substantial alloying, provides the first phase map for this pseudoternary system. This phase map enables interpretation of high-throughput band gap data, leading to the discovery of new solar light absorbers and the alloying-based tuning of the direct-allowed band gap energy of MnV2O6. The open-source family of AgileFD algorithms can be implemented into a broad range of high throughput workflows to accelerate materials discovery.

Keywords:  X-ray diffraction; band gap tuning; combinatorial science; high-throughput screening; machine learning

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Year:  2016        PMID: 28064478     DOI: 10.1021/acscombsci.6b00153

Source DB:  PubMed          Journal:  ACS Comb Sci        ISSN: 2156-8944            Impact factor:   3.784


  3 in total

1.  Materials Science in the AI age: high-throughput library generation, machine learning and a pathway from correlations to the underpinning physics.

Authors:  Rama K Vasudevan; Kamal Choudhary; Apurva Mehta; Ryan Smith; Gilad Kusne; Francesca Tavazza; Lukas Vlcek; Maxim Ziatdinov; Sergei V Kalinin; Jason Hattrick-Simpers
Journal:  MRS Commun       Date:  2019       Impact factor: 2.566

2.  Symmetry prediction and knowledge discovery from X-ray diffraction patterns using an interpretable machine learning approach.

Authors:  Yuta Suzuki; Hideitsu Hino; Takafumi Hawai; Kotaro Saito; Masato Kotsugi; Kanta Ono
Journal:  Sci Rep       Date:  2020-12-11       Impact factor: 4.379

3.  A deep-learning technique for phase identification in multiphase inorganic compounds using synthetic XRD powder patterns.

Authors:  Jin-Woong Lee; Woon Bae Park; Jin Hee Lee; Satendra Pal Singh; Kee-Sun Sohn
Journal:  Nat Commun       Date:  2020-01-03       Impact factor: 14.919

  3 in total

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