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Database of ternary amorphous alloys based on machine learning |
Xuhe Gong(巩旭菏)1,2, Ran Li(李然)1,†, Ruijuan Xiao(肖睿娟)2,‡, Tao Zhang(张涛)1, and Hong Li(李泓)2 |
1 School of Materials Science and Engineering, Key Laboratory of Aerospace Materials and Performance (Ministry of Education), Beihang University, Beijing 100191, China; 2 Institute of Physics, Chinese Academy of Sciences, Beijing 100190, China |
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Abstract The unique long-range disordered atomic arrangement inherent in amorphous materials endows them with a range of superior properties, rendering them highly promising for applications in catalysis, medicine, and battery technology, among other fields. Since not all materials can be synthesized into an amorphous structure, the composition design of amorphous materials holds significant importance. Machine learning offers a valuable alternative to traditional “trial-and-error” methods by predicting properties through experimental data, thus providing efficient guidance in material design. In this study, we develop a machine learning workflow to predict the critical casting diameter, glass transition temperature, and Young's modulus for 45 ternary reported amorphous alloy systems. The predicted results have been organized into a database, enabling direct retrieval of predicted values based on compositional information. Furthermore, the applications of high glass forming ability region screening for specified system, multi-property target system screening and high glass forming ability region search through iteration are also demonstrated. By utilizing machine learning predictions, researchers can effectively narrow the experimental scope and expedite the exploration of compositions.
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Received: 15 September 2024
Revised: 22 October 2024
Accepted manuscript online: 05 November 2024
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PACS:
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61.43.Dq
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(Amorphous semiconductors, metals, and alloys)
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71.23.Cq
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(Amorphous semiconductors, metallic glasses, glasses)
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Fund: Project supported by funding from the National Natural Science Foundation of China (Grant Nos. 52172258, 52473227 and 52171150) and the Strategic Priority Research Program of Chinese Academy of Sciences (Grant No. XDB0500200). |
Corresponding Authors:
Ran Li, Ruijuan Xiao
E-mail: liran@buaa.edu.cn;rjxiao@aphy.iphy.ac.cn
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Cite this article:
Xuhe Gong(巩旭菏), Ran Li(李然), Ruijuan Xiao(肖睿娟), Tao Zhang(张涛), and Hong Li(李泓) Database of ternary amorphous alloys based on machine learning 2025 Chin. Phys. B 34 016101
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[1] Yu X, Gong X, Qiao H, Liu X, Ma C, Xiao R, Li R and Zhang T 2024 Small Methods 8 2400793 [2] Li X, Cai W, Li D S, Xu J, Tao H and Liu B 2021 Nano Research 16 4277 [3] Meagher P, O’cearbhaill E D, Byrne J H and Browne D J 2016 Adv. Mater. 28 5755 [4] Li H F and Zheng Y F 2016 Acta Biomater 36 1 [5] Wu S, Xiao R, Li H and Chen L 2022 Inorganics 10 45 [6] Zhang S, Zhao F, Chen J, Fu J, Luo J, Alahakoon S H, Chang L Y, Feng R, Shakouri M, Liang J, Zhao Y, Li X, He L, Huang Y, Sham T K and Sun X 2023 Nat. Commun. 14 3780 [7] Dai T, Wu S, Lu Y, Yang Y, Liu Y, Chang C, Rong X, Xiao R, Zhao J, Liu Y, Wang W, Chen L and Hu Y S 2023 Nature Energy 8 1221 [8] Hu L, Wang J, Wang K, Gu Z, Xi Z, Li H, Chen F, Wang Y, Li Z and Ma C 2023 Nat. Commun. 14 3807 [9] Lu Z P and Liu C T 2002 Acta Materialia 50 3501 [10] Du X H, Huang J C, Liu C T and Lu Z P 2007 J. Appl. Phys. 101 086108 [11] Lu Z P, Tan H, Li Y and Ng S C 2000 Scripta Materialia 42 667 [12] Shen Z H, Liu H X, Shen Y, Hu J M, Chen L Q and Nan C W 2022 Interdisciplinary Materials 1 175 [13] Liu Y, Niu C, Wang Z, Gan Y, Zhu Y, Sun S and Shen T 2020 Journal of Materials Science & Technology 57 113 [14] Wei J, Chu X, Sun X Y, Xu K, Deng H X, Chen J, Wei Z and Lei M 2019 InfoMat 1 338 [15] Wu Y, Xu B, Sun Y and Guan P 2021 Chin. Phys. B 30 057103 [16] Zhao S, Jiang B, Song K, Liu X, Wang W, Si D, Zhang J, Chen X, Zhou C, Liu P, Chen D, Zhang Z, Ramasamy P, Tang J, Lv W, Prashanth K G, Şopu D and Eckert J 2024 Materials & Design 238 112634 [17] Liu X W, Long Z L, Zhang W and Yang L M 2022 J. Alloys Compd. 901 163606 [18] Liu G, Sohn S, O’hern C S, Gilbert A C and Schroers J 2024 Acta Materialia 265 119590 [19] Jeon J, Kim G, Seo N, Choi H, Kim H J, Lee M H, Lim H K, Son S B and Lee S J 2022 Journal of Materials Research and Technology 16 129 [20] Xiong J, Shi S Q and Zhang T Y 2020 Materials & Design 187 108378 [21] Gong X, Bi J, Liu X, Li R, Xiao R, Zhang T and Li H 2024 Phys. Rev. Mater. 8 055602 [22] Wang W H 2012 Progress in Materials Science 57 487 [23] Ward L, Dunn A, Faghaninia A, Zimmermann N E R, Bajaj S, Wang Q, Montoya J, Chen J, Bystrom K, Dylla M, Chard K, Asta M, Persson K A, Snyder G J, Foster I and Jain A 2018 Computational Materials Science 152 60 [24] James B, Daniel Y, David G C and David D C 2013 Proceedings of the 30th International Conference on Machine Learning, June 16-21, 2013, Atlanta, USA, p. 115 [25] Bi J, Liu X, Zhao H, Li R and Zhang T 2024 Surface and Coatings Technology 478 130421 [26] You D, Zhang H, Ganorkar S, Kim T, Schroers J, Vlassak J J and Lee D 2022 Acta Materialia 231 117861 [27] Li M X, Zhao S F, Lu Z, Hirata A, Wen P, Bai H Y, Chen M, Schroers J, Liu Y and Wang W H 2019 Nature 569 99 |
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