Cargando…

High-throughput materials screening algorithm based on first-principles density functional theory and artificial neural network for high-entropy alloys

This work introduced the high-throughput phase prediction of PtPd-based high-entropy alloys via the algorithm based on a combined Korringa-Kohn-Rostoker coherent potential approximation (KKR-CPA) and artificial neural network (ANN) technique. As the first step, the KKR-CPA was employed to generate 2...

Descripción completa

Detalles Bibliográficos
Autores principales: Rittiruam, Meena, Noppakhun, Jakapob, Setasuban, Sorawee, Aumnongpho, Nuttanon, Sriwattana, Attachai, Boonchuay, Suphawich, Saelee, Tinnakorn, Wangphon, Chanthip, Ektarawong, Annop, Chammingkwan, Patchanee, Taniike, Toshiaki, Praserthdam, Supareak, Praserthdam, Piyasan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9534987/
https://www.ncbi.nlm.nih.gov/pubmed/36198732
http://dx.doi.org/10.1038/s41598-022-21209-0
_version_ 1784802673747296256
author Rittiruam, Meena
Noppakhun, Jakapob
Setasuban, Sorawee
Aumnongpho, Nuttanon
Sriwattana, Attachai
Boonchuay, Suphawich
Saelee, Tinnakorn
Wangphon, Chanthip
Ektarawong, Annop
Chammingkwan, Patchanee
Taniike, Toshiaki
Praserthdam, Supareak
Praserthdam, Piyasan
author_facet Rittiruam, Meena
Noppakhun, Jakapob
Setasuban, Sorawee
Aumnongpho, Nuttanon
Sriwattana, Attachai
Boonchuay, Suphawich
Saelee, Tinnakorn
Wangphon, Chanthip
Ektarawong, Annop
Chammingkwan, Patchanee
Taniike, Toshiaki
Praserthdam, Supareak
Praserthdam, Piyasan
author_sort Rittiruam, Meena
collection PubMed
description This work introduced the high-throughput phase prediction of PtPd-based high-entropy alloys via the algorithm based on a combined Korringa-Kohn-Rostoker coherent potential approximation (KKR-CPA) and artificial neural network (ANN) technique. As the first step, the KKR-CPA was employed to generate 2,720 data of formation energy and lattice parameters in the framework of the first-principles density functional theory. Following the data generation, 15 features were selected and verified for all HEA systems in each phase (FCC and BCC) via ANN. The algorithm exhibited high accuracy for all four prediction models on 36,556 data from 9139 HEA systems with 137,085 features, verified by R(2) closed to unity and the mean relative error (MRE) within 5%. From this dataset comprising 5002 and 4137 systems of FCC and BCC phases, it can be realized based on the highest tendency of HEA phase formation that (1) Sc, Co, Cu, Zn, Y, Ru, Cd, Os, Ir, Hg, Al, Si, P, As, and Tl favor FCC phase, (2) Hf, Ga, In, Sn, Pb, and Bi favor BCC phase, and (3) Ti, V, Cr, Mn, Fe, Ni, Zr, Nb, Mo, Tc, Rh, Ag, Ta, W, Re, Au, Ge, and Sb can be found in both FCC and BCC phases with comparable tendency, where all predictions are in good agreement with the data from the literature. Thus, the combination of KKR-CPA and ANN can reduce the computational cost for the screening of PtPd-based HEA and accurately predict the structure, i.e., FCC, BCC, etc.
format Online
Article
Text
id pubmed-9534987
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Nature Publishing Group UK
record_format MEDLINE/PubMed
spelling pubmed-95349872022-10-07 High-throughput materials screening algorithm based on first-principles density functional theory and artificial neural network for high-entropy alloys Rittiruam, Meena Noppakhun, Jakapob Setasuban, Sorawee Aumnongpho, Nuttanon Sriwattana, Attachai Boonchuay, Suphawich Saelee, Tinnakorn Wangphon, Chanthip Ektarawong, Annop Chammingkwan, Patchanee Taniike, Toshiaki Praserthdam, Supareak Praserthdam, Piyasan Sci Rep Article This work introduced the high-throughput phase prediction of PtPd-based high-entropy alloys via the algorithm based on a combined Korringa-Kohn-Rostoker coherent potential approximation (KKR-CPA) and artificial neural network (ANN) technique. As the first step, the KKR-CPA was employed to generate 2,720 data of formation energy and lattice parameters in the framework of the first-principles density functional theory. Following the data generation, 15 features were selected and verified for all HEA systems in each phase (FCC and BCC) via ANN. The algorithm exhibited high accuracy for all four prediction models on 36,556 data from 9139 HEA systems with 137,085 features, verified by R(2) closed to unity and the mean relative error (MRE) within 5%. From this dataset comprising 5002 and 4137 systems of FCC and BCC phases, it can be realized based on the highest tendency of HEA phase formation that (1) Sc, Co, Cu, Zn, Y, Ru, Cd, Os, Ir, Hg, Al, Si, P, As, and Tl favor FCC phase, (2) Hf, Ga, In, Sn, Pb, and Bi favor BCC phase, and (3) Ti, V, Cr, Mn, Fe, Ni, Zr, Nb, Mo, Tc, Rh, Ag, Ta, W, Re, Au, Ge, and Sb can be found in both FCC and BCC phases with comparable tendency, where all predictions are in good agreement with the data from the literature. Thus, the combination of KKR-CPA and ANN can reduce the computational cost for the screening of PtPd-based HEA and accurately predict the structure, i.e., FCC, BCC, etc. Nature Publishing Group UK 2022-10-05 /pmc/articles/PMC9534987/ /pubmed/36198732 http://dx.doi.org/10.1038/s41598-022-21209-0 Text en © The Author(s) 2022 https://creativecommons.org/licenses/by/4.0/Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Article
Rittiruam, Meena
Noppakhun, Jakapob
Setasuban, Sorawee
Aumnongpho, Nuttanon
Sriwattana, Attachai
Boonchuay, Suphawich
Saelee, Tinnakorn
Wangphon, Chanthip
Ektarawong, Annop
Chammingkwan, Patchanee
Taniike, Toshiaki
Praserthdam, Supareak
Praserthdam, Piyasan
High-throughput materials screening algorithm based on first-principles density functional theory and artificial neural network for high-entropy alloys
title High-throughput materials screening algorithm based on first-principles density functional theory and artificial neural network for high-entropy alloys
title_full High-throughput materials screening algorithm based on first-principles density functional theory and artificial neural network for high-entropy alloys
title_fullStr High-throughput materials screening algorithm based on first-principles density functional theory and artificial neural network for high-entropy alloys
title_full_unstemmed High-throughput materials screening algorithm based on first-principles density functional theory and artificial neural network for high-entropy alloys
title_short High-throughput materials screening algorithm based on first-principles density functional theory and artificial neural network for high-entropy alloys
title_sort high-throughput materials screening algorithm based on first-principles density functional theory and artificial neural network for high-entropy alloys
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9534987/
https://www.ncbi.nlm.nih.gov/pubmed/36198732
http://dx.doi.org/10.1038/s41598-022-21209-0
work_keys_str_mv AT rittiruammeena highthroughputmaterialsscreeningalgorithmbasedonfirstprinciplesdensityfunctionaltheoryandartificialneuralnetworkforhighentropyalloys
AT noppakhunjakapob highthroughputmaterialsscreeningalgorithmbasedonfirstprinciplesdensityfunctionaltheoryandartificialneuralnetworkforhighentropyalloys
AT setasubansorawee highthroughputmaterialsscreeningalgorithmbasedonfirstprinciplesdensityfunctionaltheoryandartificialneuralnetworkforhighentropyalloys
AT aumnongphonuttanon highthroughputmaterialsscreeningalgorithmbasedonfirstprinciplesdensityfunctionaltheoryandartificialneuralnetworkforhighentropyalloys
AT sriwattanaattachai highthroughputmaterialsscreeningalgorithmbasedonfirstprinciplesdensityfunctionaltheoryandartificialneuralnetworkforhighentropyalloys
AT boonchuaysuphawich highthroughputmaterialsscreeningalgorithmbasedonfirstprinciplesdensityfunctionaltheoryandartificialneuralnetworkforhighentropyalloys
AT saeleetinnakorn highthroughputmaterialsscreeningalgorithmbasedonfirstprinciplesdensityfunctionaltheoryandartificialneuralnetworkforhighentropyalloys
AT wangphonchanthip highthroughputmaterialsscreeningalgorithmbasedonfirstprinciplesdensityfunctionaltheoryandartificialneuralnetworkforhighentropyalloys
AT ektarawongannop highthroughputmaterialsscreeningalgorithmbasedonfirstprinciplesdensityfunctionaltheoryandartificialneuralnetworkforhighentropyalloys
AT chammingkwanpatchanee highthroughputmaterialsscreeningalgorithmbasedonfirstprinciplesdensityfunctionaltheoryandartificialneuralnetworkforhighentropyalloys
AT taniiketoshiaki highthroughputmaterialsscreeningalgorithmbasedonfirstprinciplesdensityfunctionaltheoryandartificialneuralnetworkforhighentropyalloys
AT praserthdamsupareak highthroughputmaterialsscreeningalgorithmbasedonfirstprinciplesdensityfunctionaltheoryandartificialneuralnetworkforhighentropyalloys
AT praserthdampiyasan highthroughputmaterialsscreeningalgorithmbasedonfirstprinciplesdensityfunctionaltheoryandartificialneuralnetworkforhighentropyalloys