Tailoring nanoprecipitates for ultra-strong high-entropy alloys via machine learning and prestrain aging

被引:8
|
作者
Tao Zheng [1 ]
Xiaobing Hu [1 ]
Feng He [1 ,2 ]
Qingfeng Wu [1 ]
Bin Han [2 ,3 ]
Chen Da [2 ]
Junjie Li [1 ]
Zhijun Wang [2 ]
Jincheng Wang [1 ]
Ji-jung Kai [2 ,4 ]
Zhenhai Xia [5 ]
C.T.Liu [4 ,6 ]
机构
[1] State Key Laboratory of Solidification Processing, Northwestern Polytechnical University
[2] Center for Advanced Nuclear Safety and Sustainable Development, City University of Hong Kong
[3] Institute of Atomic and Molecular Science, Shaanxi University of Science and Technology
[4] Department of Material Science and Engineering, College of Science and Engineering, City University of Hong Kong
[5] Department of Materials Science and Engineering, University of North Texas
[6] Center for Advanced Structural Materials, Department of Mechanical Engineering, College of Science and Engineering, City University of Hong Kong
基金
中国国家自然科学基金;
关键词
D O I
暂无
中图分类号
TP181 [自动推理、机器学习]; TB383.1 []; TG139 [其他特种性质合金];
学科分类号
摘要
The multi-principal-component concept of high-entropy alloys(HEAs) generates numerous new alloys.Among them,nanoscale precipitated HEAs have achieved superior mechanical properties and shown the potentials for structural applications.However,it is still a great challe nge to find the optimal alloy within the numerous candidates.Up to now,the reported nanoprecipitated HEAs are mainly designed by a trialand-error approach with the aid of phase diagram calculations,limiting the development of structural HEAs.In the current work,a novel method is proposed to accelerate the development of ultra-strong nanoprecipitated HEAs.With the guidance of physical metallurgy,the volume fraction of the required nanoprecipitates is designed from a machine learning of big data with thermodynamic foundation while the morphology of precipitates is kinetically tailored by prestrain aging.As a proof-of-principle study,an HEA with superior strength and ductility has been designed and systematically investigated.The newly developed γ’-strengthened HEA exhibits 1.31 GPa yield strength,1.65 GPa ultimate tensile strength,and 15% tensile elongation.Atom probe tomography and transmission electron microscope characterizations reveal the well-controlled high γ’ volume fraction(52%) and refined precipitate size(19 nm).The refinement of nanoprecipitates originates from the accelerated nucleation of the γ’ phase by prestrain aging.A deeper understanding of the excellent mechanical properties is illustrated from the aspect of strengthening mecha nisms.Finally,the versatility of the current design strategy to other precipitation-hardened alloys is discussed.
引用
收藏
页码:156 / 167
页数:12
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