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2024 | OriginalPaper | Chapter

Development of High-Strength Mg–Gd–Y Alloy Based on Machine Learning Method

Authors : Yunchuan Cheng, Zhihua Dong, Yuan Peng, Zhiying Zheng, Xiaoying Qian, Cuihong Wang, Bin Jiang, Fusheng Pan

Published in: Magnesium Technology 2024

Publisher: Springer Nature Switzerland

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Abstract

A machine learning model is established to efficiently describe the relationship between mechanical properties and chemical composition and processing parameters of magnesium alloys. Among the implemented machine learning algorithms, the random forest model is demonstrated to show the high accuracy for the studied Mg–Gd–Y alloy family. By adopting the model, the optimal composition, thermal, and extrusion process parameters of a high-strength Mg–Gd–Y-based alloy are obtained. The ultimate tensile strength and elongation of the designed Mg–Gd–Y alloy are predicted to be 394 MPa and 8.7%, respectively, which is experimentally found to closely correlate to the formation of long period stacking ordered structure. Comparing with the experimental results, the prediction model gives relatively small error of 5.7% and 1.0% for the yield strength and ultimate tensile strength, respectively, and the poor prediction error of elongation is related to the quality of the prepared alloy. The findings are expected to provide helpful guidance for the intelligent design of advanced magnesium alloys.

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Literature
1.
go back to reference Qian XY, Dong ZH, Jiang B, et al (2022) Influence of alloying element segregation at grain boundary on the microstructure and mechanical properties of Mg-Zn alloy. Mater Des 224:111322 Qian XY, Dong ZH, Jiang B, et al (2022) Influence of alloying element segregation at grain boundary on the microstructure and mechanical properties of Mg-Zn alloy. Mater Des 224:111322
2.
go back to reference Qian XY, Gao YY, Dong ZH, Jiang B, He C, Wang CH, Zhang A, Yang BQ, Zheng CY, Pan FS (2023) The enhanced Zn and Ca co-segregation and mechanical properties of Mg–Zn–Ce alloy with micro-Ca addition. Mater Sci Eng A 867:144712. Qian XY, Gao YY, Dong ZH, Jiang B, He C, Wang CH, Zhang A, Yang BQ, Zheng CY, Pan FS (2023) The enhanced Zn and Ca co-segregation and mechanical properties of Mg–Zn–Ce alloy with micro-Ca addition. Mater Sci Eng A 867:144712.
3.
go back to reference Wang CH, Dong ZH, Jiang B, et al (2023) Lowering thermal expansion of Mg with the enhanced strength by Ca alloying. J Mater Res Technol 24:1293–1303. Wang CH, Dong ZH, Jiang B, et al (2023) Lowering thermal expansion of Mg with the enhanced strength by Ca alloying. J Mater Res Technol 24:1293–1303.
4.
go back to reference Li YF, Zhang A, Li C, Xie HC, Jiang B, Dong ZH, Jin PP, Pan FS (2023) Recent advances of high strength Mg-RE alloys: Alloy development, forming and application. J Mater Res Technol 26:2919–2940. Li YF, Zhang A, Li C, Xie HC, Jiang B, Dong ZH, Jin PP, Pan FS (2023) Recent advances of high strength Mg-RE alloys: Alloy development, forming and application. J Mater Res Technol 26:2919–2940.
5.
go back to reference Lei B, Dong ZH, Yang Y, et al (2022) Influence of Zn on the microstructure and mechanical properties of Mg-Gd-Zr alloy. Mater Sci Eng A 843:143136. Lei B, Dong ZH, Yang Y, et al (2022) Influence of Zn on the microstructure and mechanical properties of Mg-Gd-Zr alloy. Mater Sci Eng A 843:143136.
6.
go back to reference Ji ZK, Qiao XG, Hu CY, Yuan L, Cong F, Wang GJ, Xie WC, Zheng MY (2022) Effect of aging treatment on the microstructure, fracture toughness and fracture behavior of the extruded Mg-7Gd-2Y-1Zn-0.5Zr alloy. Mater. Sci. Eng. -Struct. Mater. Prop. Microstruct. Process. 849. Ji ZK, Qiao XG, Hu CY, Yuan L, Cong F, Wang GJ, Xie WC, Zheng MY (2022) Effect of aging treatment on the microstructure, fracture toughness and fracture behavior of the extruded Mg-7Gd-2Y-1Zn-0.5Zr alloy. Mater. Sci. Eng. -Struct. Mater. Prop. Microstruct. Process. 849.
7.
go back to reference Wang J, Meng J, Zhang DP, Tang DX (2007) Effect of Y for enhanced age hardening response and mechanical properties of Mg-Gd-Y-Zr alloys. Mater Sci Eng -Struct Mater Prop Microstruct Process 456:78–84. Wang J, Meng J, Zhang DP, Tang DX (2007) Effect of Y for enhanced age hardening response and mechanical properties of Mg-Gd-Y-Zr alloys. Mater Sci Eng -Struct Mater Prop Microstruct Process 456:78–84.
8.
go back to reference Jiang B, Dong ZH, Zhang A, Song JF, Pan FS (2022) Recent advances in micro-alloyed wrought magnesium alloys: Theory and design. Trans Nonferrous Met Soc China 32:1741–1780. Jiang B, Dong ZH, Zhang A, Song JF, Pan FS (2022) Recent advances in micro-alloyed wrought magnesium alloys: Theory and design. Trans Nonferrous Met Soc China 32:1741–1780.
9.
go back to reference Zhang JH, Liu SJ, Wu RZ, Hou LG, Zhang ML (2018) Recent developments in high-strength Mg-RE-based alloys: Focusing on Mg-Gd and Mg-Y systems. J Magnes Alloys 6:277–291. Zhang JH, Liu SJ, Wu RZ, Hou LG, Zhang ML (2018) Recent developments in high-strength Mg-RE-based alloys: Focusing on Mg-Gd and Mg-Y systems. J Magnes Alloys 6:277–291.
10.
go back to reference Yan H, Chen RS, Han EH (2010) Room-temperature ductility and anisotropy of two rolled Mg–Zn–Gd alloys. Mater Sci Eng A 527:3317–3322. Yan H, Chen RS, Han EH (2010) Room-temperature ductility and anisotropy of two rolled Mg–Zn–Gd alloys. Mater Sci Eng A 527:3317–3322.
11.
go back to reference Wang S, Ma J, Yang J, Zhang W, Sun Y, Pan J, Wang H, Chen W (2021) Improving the ductility of Mg-2.5Nd-0.5Zn-0.5Zr alloy by multi-pass hot rolling. J Mater Res Technol 14:2124–2130. Wang S, Ma J, Yang J, Zhang W, Sun Y, Pan J, Wang H, Chen W (2021) Improving the ductility of Mg-2.5Nd-0.5Zn-0.5Zr alloy by multi-pass hot rolling. J Mater Res Technol 14:2124–2130.
12.
go back to reference Hashemi M, Alizadeh R, Langdon TG (2023) Recent advances using equal-channel angular pressing to improve the properties of biodegradable Mg‒Zn alloys. J Magnes Alloys 11:2260–2284. Hashemi M, Alizadeh R, Langdon TG (2023) Recent advances using equal-channel angular pressing to improve the properties of biodegradable Mg‒Zn alloys. J Magnes Alloys 11:2260–2284.
13.
go back to reference Wu H, Jiang J, Liu H, Huang H, Li Y, Chen J, Ma A (2021) A novel method for improving the strength and ductility of Mg–Y–Er–Zn alloy using rotary-die equal-channel angular pressing. J Mater Res Technol 13:1752–1758. Wu H, Jiang J, Liu H, Huang H, Li Y, Chen J, Ma A (2021) A novel method for improving the strength and ductility of Mg–Y–Er–Zn alloy using rotary-die equal-channel angular pressing. J Mater Res Technol 13:1752–1758.
14.
go back to reference Hu MW, Tan QY, Knibbe R, Xu M, Jiang B, Wang S, Li X, Zhang MX (2023) Recent applications of machine learning in alloy design: A review. Mater Sci Eng R Rep 155:100746. Hu MW, Tan QY, Knibbe R, Xu M, Jiang B, Wang S, Li X, Zhang MX (2023) Recent applications of machine learning in alloy design: A review. Mater Sci Eng R Rep 155:100746.
15.
go back to reference Fu ZY, Liu WY, Huang C, Mei T (2022) A Review of Performance Prediction Based on Machine Learning in Materials Science. Nanomaterials 12:2957. Fu ZY, Liu WY, Huang C, Mei T (2022) A Review of Performance Prediction Based on Machine Learning in Materials Science. Nanomaterials 12:2957.
16.
go back to reference Xie JX, Su YJ, Xue DZ, Jiang X, Fu HD, Huang HY (2021) Machine Learning for Materials Research and Development. Acta Met Sin 57:1343–1361. Xie JX, Su YJ, Xue DZ, Jiang X, Fu HD, Huang HY (2021) Machine Learning for Materials Research and Development. Acta Met Sin 57:1343–1361.
17.
go back to reference Wei J, Chu X, Sun X, Xu K, Deng H, Chen J, Wei Z, Lei M (2019) Machine learning in materials science. InfoMat 1:338–358. Wei J, Chu X, Sun X, Xu K, Deng H, Chen J, Wei Z, Lei M (2019) Machine learning in materials science. InfoMat 1:338–358.
18.
go back to reference Min K, Choi B, Park K, Cho E (2018) Machine learning assisted optimization of electrochemical properties for Ni-rich cathode materials. Sci Rep 8:15778. Min K, Choi B, Park K, Cho E (2018) Machine learning assisted optimization of electrochemical properties for Ni-rich cathode materials. Sci Rep 8:15778.
19.
go back to reference Li XC, Zheng MJ, Yang XY, Chen PH, Ding WY (2022) A property-oriented design strategy of high-strength ductile RAFM steels based on machine learning. Mater Sci Eng A 840:142891. Li XC, Zheng MJ, Yang XY, Chen PH, Ding WY (2022) A property-oriented design strategy of high-strength ductile RAFM steels based on machine learning. Mater Sci Eng A 840:142891.
20.
go back to reference Lu ZX, Si SJ, He KY, et al (2022) Prediction of Mg Alloy Corrosion Based on Machine Learning Models. Adv Mater Sci Eng 2022:1–8. Lu ZX, Si SJ, He KY, et al (2022) Prediction of Mg Alloy Corrosion Based on Machine Learning Models. Adv Mater Sci Eng 2022:1–8.
21.
go back to reference Liu YW, Wang LY, Zhang H, Zhu GM, Wang J, Zhang YH, Zeng XQ (2021) Accelerated Development of High-Strength Magnesium Alloys by Machine Learning. Metall Mater Trans A 52:943–954. Liu YW, Wang LY, Zhang H, Zhu GM, Wang J, Zhang YH, Zeng XQ (2021) Accelerated Development of High-Strength Magnesium Alloys by Machine Learning. Metall Mater Trans A 52:943–954.
22.
go back to reference Xu XN, Wang LY, Zhu GM, Zeng XQ (2020) Predicting Tensile Properties of AZ31 Magnesium Alloys by Machine Learning. JOM 72:3935–3942. Xu XN, Wang LY, Zhu GM, Zeng XQ (2020) Predicting Tensile Properties of AZ31 Magnesium Alloys by Machine Learning. JOM 72:3935–3942.
23.
go back to reference Xie BB, Fang QH, Li J, Liaw PK (2020) Predicting the optimum compositions of high-performance Cu–Zn alloys via machine learning. J Mater Res 35:2709–2717. Xie BB, Fang QH, Li J, Liaw PK (2020) Predicting the optimum compositions of high-performance Cu–Zn alloys via machine learning. J Mater Res 35:2709–2717.
24.
go back to reference Xu P, Ji X, Li M, Lu W (2023) Small data machine learning in materials science. Npj Comput Mater 9:42. Xu P, Ji X, Li M, Lu W (2023) Small data machine learning in materials science. Npj Comput Mater 9:42.
25.
go back to reference Aurélien Géron (2019) Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow, 2nd Edition. O’Reilly Media, Inc., Sebastopol. Aurélien Géron (2019) Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow, 2nd Edition. O’Reilly Media, Inc., Sebastopol.
26.
go back to reference Fu HD, Zhang HT, Wang CS, Yong W, Xie JX (2022) Recent progress in the machine learning-assisted rational design of alloys. Int J Miner Metall Mater 29:635–644. Fu HD, Zhang HT, Wang CS, Yong W, Xie JX (2022) Recent progress in the machine learning-assisted rational design of alloys. Int J Miner Metall Mater 29:635–644.
28.
go back to reference Wang J, Xu P, Ji X, Li M, Lu W (2023) Feature Selection in Machine Learning for Perovskite Materials Design and Discovery. Materials 16:3134. Wang J, Xu P, Ji X, Li M, Lu W (2023) Feature Selection in Machine Learning for Perovskite Materials Design and Discovery. Materials 16:3134.
29.
go back to reference Hou XL (2012) Study on Structure and Mechanical Properties of Wrought Mg–Gd–Y–Nd–Zn(Zr) Alloy System. Ph.D. thesis, Jilin University. Hou XL (2012) Study on Structure and Mechanical Properties of Wrought Mg–Gd–Y–Nd–Zn(Zr) Alloy System. Ph.D. thesis, Jilin University.
30.
go back to reference Zhou JX, Luo XJ, Yang H, et al (2023) Introducing lamellar LPSO phase to regulate room and high-temperature mechanical properties of Mg-Gd-Y-Zn-Zr alloys by altering cooling rate. J Mater Res Technol S223878542300947X. Zhou JX, Luo XJ, Yang H, et al (2023) Introducing lamellar LPSO phase to regulate room and high-temperature mechanical properties of Mg-Gd-Y-Zn-Zr alloys by altering cooling rate. J Mater Res Technol S223878542300947X.
Metadata
Title
Development of High-Strength Mg–Gd–Y Alloy Based on Machine Learning Method
Authors
Yunchuan Cheng
Zhihua Dong
Yuan Peng
Zhiying Zheng
Xiaoying Qian
Cuihong Wang
Bin Jiang
Fusheng Pan
Copyright Year
2024
DOI
https://doi.org/10.1007/978-3-031-50240-8_28

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