Materials Prediction Using High-Throughput and Machine Learning Techniques

Predicting new materials through virtually screening a large number of hypothetical materials using supercomputers has enabled materials discovery at an accelerated pace. However, the innumerable number of possible hypothetical materials necessitates the development of faster computational methods f...

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Main Author: Nyshadham, Chandramouli
Format: Others
Published: BYU ScholarsArchive 2019
Subjects:
Online Access:https://scholarsarchive.byu.edu/etd/7735
https://scholarsarchive.byu.edu/cgi/viewcontent.cgi?article=8735&context=etd
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spelling ndltd-BGMYU2-oai-scholarsarchive.byu.edu-etd-87352020-07-15T07:09:31Z Materials Prediction Using High-Throughput and Machine Learning Techniques Nyshadham, Chandramouli Predicting new materials through virtually screening a large number of hypothetical materials using supercomputers has enabled materials discovery at an accelerated pace. However, the innumerable number of possible hypothetical materials necessitates the development of faster computational methods for speedier screening of materials reducing the time of discovery. In this thesis, I aim to understand and apply two computational methods for materials prediction. The first method deals with a computational high-throughput study of superalloys. Superalloys are materials which exhibit high-temperature strength. A combinatorial high-throughput search across 2224 ternary alloy systems revealed 102 potential superalloys of which 37 are brand new, all of which we patented. The second computational method deals with a machine-learning (ML) approach and aims at understanding the consistency among five different state-of-the-art machine-learning models in predicting the formation enthalpy of 10 different binary alloys. The study revealed that although the five different ML models approach the problem uniquely, their predictions are consistent with each other and that they are all capable of predicting multiple materials simultaneously.My contribution to both the projects included conceiving the idea, performing calculations, interpreting the results, and writing significant portions of the two journal articles published related to each project. A follow-up work of both computational approaches, their impact, and future outlook of materials prediction are also presented. 2019-12-01T08:00:00Z text application/pdf https://scholarsarchive.byu.edu/etd/7735 https://scholarsarchive.byu.edu/cgi/viewcontent.cgi?article=8735&context=etd http://lib.byu.edu/about/copyright/ Theses and Dissertations BYU ScholarsArchive materials prediction superalloys high-throughput machine learning computational materials science density functional theory formation enthalpy Physical Sciences and Mathematics
collection NDLTD
format Others
sources NDLTD
topic materials prediction
superalloys
high-throughput
machine learning
computational materials science
density functional theory
formation enthalpy
Physical Sciences and Mathematics
spellingShingle materials prediction
superalloys
high-throughput
machine learning
computational materials science
density functional theory
formation enthalpy
Physical Sciences and Mathematics
Nyshadham, Chandramouli
Materials Prediction Using High-Throughput and Machine Learning Techniques
description Predicting new materials through virtually screening a large number of hypothetical materials using supercomputers has enabled materials discovery at an accelerated pace. However, the innumerable number of possible hypothetical materials necessitates the development of faster computational methods for speedier screening of materials reducing the time of discovery. In this thesis, I aim to understand and apply two computational methods for materials prediction. The first method deals with a computational high-throughput study of superalloys. Superalloys are materials which exhibit high-temperature strength. A combinatorial high-throughput search across 2224 ternary alloy systems revealed 102 potential superalloys of which 37 are brand new, all of which we patented. The second computational method deals with a machine-learning (ML) approach and aims at understanding the consistency among five different state-of-the-art machine-learning models in predicting the formation enthalpy of 10 different binary alloys. The study revealed that although the five different ML models approach the problem uniquely, their predictions are consistent with each other and that they are all capable of predicting multiple materials simultaneously.My contribution to both the projects included conceiving the idea, performing calculations, interpreting the results, and writing significant portions of the two journal articles published related to each project. A follow-up work of both computational approaches, their impact, and future outlook of materials prediction are also presented.
author Nyshadham, Chandramouli
author_facet Nyshadham, Chandramouli
author_sort Nyshadham, Chandramouli
title Materials Prediction Using High-Throughput and Machine Learning Techniques
title_short Materials Prediction Using High-Throughput and Machine Learning Techniques
title_full Materials Prediction Using High-Throughput and Machine Learning Techniques
title_fullStr Materials Prediction Using High-Throughput and Machine Learning Techniques
title_full_unstemmed Materials Prediction Using High-Throughput and Machine Learning Techniques
title_sort materials prediction using high-throughput and machine learning techniques
publisher BYU ScholarsArchive
publishDate 2019
url https://scholarsarchive.byu.edu/etd/7735
https://scholarsarchive.byu.edu/cgi/viewcontent.cgi?article=8735&context=etd
work_keys_str_mv AT nyshadhamchandramouli materialspredictionusinghighthroughputandmachinelearningtechniques
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