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Generalized machine learning technique for automatic phase attribution in time variant high-throughput experimental studies

Published online by Cambridge University Press:  16 April 2015

Jonathan Kenneth Bunn
Affiliation:
Department of Chemical Engineering, University of South Carolina Columbia, South Carolina 29208, USA; and SmartState Center for the Strategic Approaches to the Generation of Electricity, University of South Carolina Columbia, South Carolina 29208, USA
Shizhong Han
Affiliation:
Department of Computer Science and Engineering, University of South Carolina, Columbia, South Carolina 29208, USA
Yan Zhang
Affiliation:
Department of Computer Science and Engineering, University of South Carolina, Columbia, South Carolina 29208, USA
Yan Tong
Affiliation:
Department of Computer Science and Engineering, University of South Carolina, Columbia, South Carolina 29208, USA
Jianjun Hu
Affiliation:
Department of Computer Science and Engineering, University of South Carolina, Columbia, South Carolina 29208, USA
Jason R. Hattrick-Simpers*
Affiliation:
Department of Chemical Engineering, University of South Carolina Columbia, South Carolina 29208, USA; and SmartState Center for the Strategic Approaches to the Generation of Electricity, University of South Carolina Columbia, South Carolina 29208, USA
*
a)Address all correspondence to this author. e-mail: [email protected]
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Abstract

Phase identification is an arduous task during high-throughput processing experiments, which can be exacerbated by the need to reconcile results from multiple measurement techniques to form a holistic understanding of phase dynamics. Here, we demonstrate AutoPhase, a machine learning algorithm, which can identify the presence of the different phases in spectral and diffraction data. The algorithm uses training data to determine the characteristic features of each phase present and then uses these features to evaluate new spectral and diffraction data. AutoPhase was used to identify oxide phase growth during a high-throughput oxidation study of NiAl bond coats that used x-ray diffraction, Raman, and fluorescence spectroscopic techniques. The algorithm had a minimum overall accuracy of 88.9% for unprocessed data and 98.4% for postprocessed data. Although the features selected by AutoPhase for phase attribution were distinct from those of topical experts, these results show that AutoPhase can substantially increase the throughput high-throughput data analysis.

Type
Invited Feature Paper
Copyright
Copyright © Materials Research Society 2015 

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References

REFERENCES

Green, M.L., Hattrick-Simpers, J.R., Takeuchi, I., Barron, S.C., Joshi, A.M., Chiang, T., Davydov, A., and Mehta, A.: Fulfilling the Promise of the Materials Genome Initiative via High-Throughput Experimentation, 2014.Google Scholar
Draft for Public Comment: Materials Genome Initiative National Science and Technology Council Committee on Technology Subcommittee on the Materials Genome Initiative (2014).Google Scholar
Kalil, T. and Wadia, C., Materials Genome Initiative for Global Competitiveness (2011).Google Scholar
Hattrick-Simpers, J.R., Wen, C., and Lauterbach, J.: The materials super highway: Integrating high-throughput experimentation into mapping the catalysis materials genome. Catal. Lett. 145, 290298 (2015).CrossRefGoogle Scholar
Green, M.L., Takeuchi, I., and Hattrick-Simpers, J.R.: Applications of high throughput (combinatorial) methodologies to electronic, magnetic, optical, and energy-related materials. J. Appl. Phys. 113, 231101 (2013).CrossRefGoogle Scholar
Maier, W.F., Stowe, K., and Sieg, S.: Combinatorial and high-throughput materials science. Angew. Chem., Int. Ed. Engl. 46, 60166017 (2007).CrossRefGoogle ScholarPubMed
Hattrick-Simpers, J.R., Hunter, D., Craciunescu, C.M., Jang, K.S., Murakami, M., Cullen, J., Wuttig, M., Takeuchi, I., Lofland, S.E., Bendersky, L., Woo, N., Van Dover, R.B., Takahashi, T., and Furuya, Y.: Combinatorial investigation of magnetostriction in Fe-Ga and Fe-Ga-Al. Appl. Phys. Lett. 93, 102507 (2008).CrossRefGoogle Scholar
Xiang, X.D., Sun, X., Briceno, G., Lou, Y., Wang, K.A., Chang, H., Wallace-Freedman, W.G., Chen, S.W., and Schultz, P.G.: A combinatorial approach to materials discovery. Science 268, 17381740 (1995).CrossRefGoogle ScholarPubMed
Arriola, D.J., Carnahan, E.M., Hustad, P.D., Kuhlman, R.L., and Wenzel, T.T.: Catalytic production of olefin block copolymers via chain shuttling polymerization. Science 312, 714719 (2006).CrossRefGoogle ScholarPubMed
Lauterbach, J., Sasmaz, E., Bedenbaugh, J., Kim, S., and Hattrick-Simpers, J.R.: Discovery and optimization of coking and sulfur resistant bi-metallic catalyst for cracking JP-8: From thin film libraries to single powders. Mod. Appl. HT Exp. Heterog. Catal. (2013).Google Scholar
Kusne, A.G., Gao, T., Mehta, A., Ke, L., and Nguyen, M.C., Nguyen, C., Ho, K.M., Antropov, V., Wang, C.Z., Kramer, M.J., Long, C.J., and Takeuchi, I.: On-the-fly machine-learning for high-throughput experiments: Search for rare-earth-free permanent magnets. Sci. Rep. 4, 6367 (2014).CrossRefGoogle ScholarPubMed
Shinde, A., Guevarra, D., Haber, J.A., Jin, J., and Gregoire, J.M.: Identification of optimal solar fuel electrocatalysts via high throughput in situ optical measurements. J. Mater. Res. 30, 442450 (2015).CrossRefGoogle Scholar
Holzwarth, A., Schmidt, H., and Maier, W.F.: Detection of catalytic activity in combinatorial libraries of heterogeneous catalysts by IR thermography. Angew. Chem., Int. Ed. Engl. 37, 26442647 (1998).3.0.CO;2-#>CrossRefGoogle ScholarPubMed
Famodu, O.O., Hattrick-Simpers, J., Aronova, M., Chang, K.S., Murakami, M., Wuttig, M., Okazaki, T., Furuya, Y., Knauss, L.A., Bendersky, L.A., Biancaniello, F.S., and Takeuchi, I.: Combinatorial investigation of ferromagnetic shape-memory alloys in the Ni-Mn-Al ternary system using a composition spread technique. Mater. Trans. 45, 173177 (2004).CrossRefGoogle Scholar
Kan, D., Long, C.J., Steinmetz, C., Lofland, S.E., and Takeuchi, I.: Combinatorial search of structural transitions: Systematic investigation of morphotropic phase boundaries in chemically substituted BiFeO3. J. Mater. Res. 27, 2691 (2012).CrossRefGoogle Scholar
Takeuchi, I., Long, C.J., Famodu, O.O., Murakami, M., Hattrick-Simpers, J., Rubloff, G.W., Stukowski, M., and Rajan, K.: Data management and visualization of x-ray diffraction spectra from thin film ternary composition spreads. Rev. Sci. Instrum. 76, 062223 (2005).CrossRefGoogle Scholar
Long, C.J., Hattrick-Simpers, J., Murakami, M., Srivastava, R.C., Takeuchi, I., Karen, V.L., and Li, X.: Rapid structural mapping of ternary metallic alloy systems using the combinatorial approach and cluster analysis. Rev. Sci. Instrum. 78, 072217 (2007).CrossRefGoogle ScholarPubMed
Le Bras, R., Bernstein, R., Gomes, C.P., Selman, B., and Van Dover, R.B.: Crowdsourcing backdoor identification for combinatorial optimization. Proceedings of the Twenty-third International Joint Conference on Artificial Intelligence, 2840 (2012).Google Scholar
Long, C.J., Bunker, D., Li, X., Karen, V.L., and Takeuchi, I.: Rapid identification of structural phases in combinatorial thin-film libraries using x-ray diffraction and non-negative matrix factorization. Rev. Sci. Instrum. 80, 103902 (2009).CrossRefGoogle ScholarPubMed
Le Bras, R., Damoulas, T., Gregoire, J.M., Sabharwal, A., Gomes, C.P., and Van Dover, R.B.: Constraint reasoning and kernel clustering for pattern decomposition with scaling. Lecture Notes in Computer Science 6878, 508522 (2011).CrossRefGoogle Scholar
Baumes, L.A., Moliner, M., and Corma, A.: Design of a full-profile-matching solution for high-throughput analysis of multiphase samples through powder x-ray diffraction. Chem. - Eur. J. 15, 42584269 (2009).CrossRefGoogle ScholarPubMed
Barr, G., Dong, W., and Gilmore, C.J.: PolySNAP3: A computer program for analysing and visualizing high-throughput data from diffraction and spectroscopic sources. J. Appl. Crystallogr. 37, 874882 (2004).CrossRefGoogle Scholar
Metting, C., Bunn, J.K., Underwood, E., Smoak, S., and Hattrick-Simpers, J.R.: Combinatorial approach to turbine bond coat discovery. ACS Comb. Sci. 15, 419424 (2013).CrossRefGoogle ScholarPubMed
Corma, A., Diaz-Cabanas, M.J., Moliner, M., and Martinez, C.: Discovery of a new catalytically active and selective zeolite (ITQ-30) by high-throughput synthesis techniques. J. Catal. 241, 312318 (2006).CrossRefGoogle Scholar
Gilmore, C.J., Barr, G., and Paisley, J.: High-throughput powder diffraction. I. A new approach to qualitative and quantitative powder diffraction pattern analysis using full pattern profiles. J. Appl. Crystallogr. 37, 231242 (2004).CrossRefGoogle Scholar
Clarke, D.R., Oechsner, M., and Padture, N.P.: Thermal-barrier coatings for more efficient gas-turbine engines. MRS Bull. 37, 891898 (2012).CrossRefGoogle Scholar
Clarke, D.R. and Levi, C.G.: Materials design for the next generation thermal barrier coatings. Annu. Rev. Mater. Res. 33, 383417 (2003).CrossRefGoogle Scholar
Besmann, T.M.: Interface science of thermal barrier coatings. J. Mater. Sci. 44, 16611663 (2009).CrossRefGoogle Scholar
Goward, G.W.: Progress in coatings for gas turbine airfoils. Surf. Coat. Technol. 108109, 7379 (1998).CrossRefGoogle Scholar
Perepezko, J.H.: Materials science. The hotter the engine, the better. Science 326, 10681069 (2009).CrossRefGoogle ScholarPubMed
Lehnert, G. and Meinhardt, H.W.: A new protective coating for nickel alloys. Electrodeposition Surf. Treat. 1, 189197 (1973).CrossRefGoogle Scholar
Felten, E.J. and Pettit, F.S.: Development, growth, and adhesion of Al2O3 on platinum-aluminum alloys. Oxid. Met. 10, 189223 (1976).CrossRefGoogle Scholar
Gleeson, B., Mu, N., and Hayashi, S.: Compositional factors affecting the establishment and maintenance of Al2O3 scales on Ni-Al-Pt systems. J. Mater. Sci. 44, 17041710 (2009).CrossRefGoogle Scholar
Monceau, D., Oquab, D., Estournes, C., Boidot, M., Selezneff, S., Thebault, Y., and Cadoret, Y.: Pt-modified Ni aluminides, MCrAlY-base multilayer coatings and TBC systems fabricated by spark plasma sintering for the protection of Ni-base superalloys. Surf. Coat. Technol. 204, 771778 (2009).CrossRefGoogle Scholar
Zhang, Y., Pint, B.A., Haynes, J.A., and Wright, I.G.: A platinum-enriched γ+γ’ two-phase bond coat on Ni-based superalloys. Surf. Coat. Technol. 200, 12591263 (2005).CrossRefGoogle Scholar
Jiang, C., Sordelet, D.J., and Gleeson, B.: Site preference of ternary alloying elements in Ni3Al: A first-principles study. Acta Mater. 54, 11471154 (2006).CrossRefGoogle Scholar
Sivakumar, R. and Mordike, B.L.: High temperature coatings for Gas turbine blades: A review. Surf. Coat. Technol. 37, 139160 (1989).CrossRefGoogle Scholar
Sundman, B., Ford, S., Lu, X.G., Narita, T., and Monceau, D.: Experimental and simulation study of uphill diffusion of Al in a Pt-coated γ-Ni-Al model alloy. J. Phase Equilib. Diffus. 30, 602607 (2009).CrossRefGoogle Scholar
Ochial, S., Oya, Y., and Suzuki, T.: Alloying behaviour of Ni3Al, Ni3Ga, Ni3Si and Ni3Ge. Acta Metall. 32, 289298 (1984).CrossRefGoogle Scholar
Lai, G.Y.: High-temperature Corrosion and Materials Applications (ASM International, Materials Park, 2007).CrossRefGoogle Scholar
Dryepondt, S., Rouaix-Vande Put, A., and Pint, B.A.: Effect of H2O and CO2 on the oxidation behaviour and durability at high temperature of ODS-FeCrAl. Oxid. Met. 79, 627638 (2013).CrossRefGoogle Scholar
Hattrick-Simpers, J.R., Jun, C., Murakami, M., Orozco, A., Knauss, L., Booth, R.J., Greve, E.W., Lofland, S.E., Wuttig, M., and Takeuchi, I.: High-throughput screening of magnetic properties of quenched metallic-alloy thin-film composition spreads. Appl. Surf. Sci. 254, 734737 (2007).CrossRefGoogle Scholar
Yeh, J.W., Chen, S.K., Lin, S.J., Gan, J.Y., Chin, T.S., Shun, T.T., Tsau, C.H., and Chang, S.Y.: Nanostructured high-entropy alloys with multiple principal elements: Novel alloy design concepts and outcomes. Adv. Eng. Mater. 6, 299303 (2004).CrossRefGoogle Scholar
Freund, Yoav and Robert, E.: Schapire: A decision-theoretic generalization of on-line learning and an application to boosting. J. Comput. Syst. Sci. 55, 119139 (1997).CrossRefGoogle Scholar
Jain, A., Ong, S.P., Hautier, G., Chen, W., Richards, W.D., Dacek, S., Cholia, S., Gunter, D., Skinner, D., Ceder, G., and Persson, K.A.: Commentary: The materials project: A materials genome approach to accelerating materials innovation. Appl. Phys. Lett. Mat. 1, 011002 (2013).Google Scholar
Inorganic Crystal Structure Database, https://icsd.fiz-karlsruhe.de.Google Scholar
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