材料科学
微观结构
延展性(地球科学)
冶金
尼亚尔
腐蚀
高熵合金
晶界
金属间化合物
复合材料
蠕动
合金
作者
Decheng Kong,Li Wang,Guoliang Zhu,Yiqi Zhou,Xiaoqing Ni,Jia Song,Liang Zhang,Wenheng Wu,Wei Wang,Cheng Man,Da Shu,Baode Sun,Chaofang Dong
标识
DOI:10.1016/j.jmst.2022.08.018
摘要
With the development of aerospace and transportation, high-strength structural materials manufactured by additive manufacturing techniques get more attention, which allows the production of counterparts with complex structures. This work investigates Al-added CoCrFeMnNi high-entropy alloys (Al-HEAs) prepared by laser powder bed fusion (PBF-LB), adding 4.4 wt.% Al reducing approximately 7% density. The contribution of post-heat-treatment to microstructure, mechanical properties, and corrosion behaviors are explored. Hot cracking along with grain boundaries in the as-built PBF-LB Al-HEAs is determined, which comes from the residual liquid film as a larger solidification temperature range by adding Al. The PBF-LB Al-HEAs mainly consist of a face-centered cubic (FCC) matrix with Al/Ni/Mn decorated dislocation cells therein and a minor body-centered cubic (BCC) phase. Upon 850 °C annealing treatment, massive BCC phases (ordered NiAl and disordered Cr-rich precipitates) generate at the dislocation cell/grain boundaries and the dislocation cells are still retained. However, the volume fraction of BCC phases and the dislocation cells vanish after 1150 °C solution treatment. As a result, Al-HEA850 shows an over 1000 MPa yield strength with nearly no ductility (<3%); the Al-HEA1150 exhibits considerable strength-ductility properties. Meanwhile, the Al-HEA850 demonstrates the worst pitting corrosion resistance due to the preferential dissolution of the NiAl precipitates in chloride-containing solutions. After comparatively deliberating the evolution of strength-ductility and localized corrosion, we built a framework about the effects of the heat treatment on the mechanical property and degradation behavior in additively manufactured Al-added high-strength HEAs.
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