材料科学
融合
重新使用
多孔性
离散元法
过程(计算)
沉积(地质)
粒子(生态学)
粒径
工艺工程
复合材料
冶金
化学工程
废物管理
机械
计算机科学
古生物学
哲学
语言学
物理
海洋学
沉积物
工程类
生物
操作系统
地质学
作者
Qiong Wu,Chuang Qiao,Yuhang Wu,Zhe Liu,Xiaodan Li,Ju Wang,Xizhong An,Aijun Huang,Chao Voon Samuel Lim
标识
DOI:10.1016/j.addma.2023.103821
摘要
The reuse of recycled powder in laser powder bed fusion (LPBF) has significant economic and practical value. While numerous investigations have proposed the negative effects of recycled powder in LPBF, further research is still needed to develop effective schemes for powder reuse, which plays a critical role in sustainable development of additive manufacturing. In this article, the spreading and subsequent selective melting of actual Ti-6Al-4V powder mixture with different mixing proportions of recycled powder (χr, weight percentage) were reproduced by using discrete element method (DEM) and computational fluid dynamics (CFD) simulations, where the influences of recycled powder content on the stability of LPBF process were systematically investigated/evaluated and corresponding mechanisms were explored. The results showed that for current cases, χr ≤ 60% can guarantee a stable LPBF process and desired powder bed/printing region quality. However, if χr > 60%, the LPBF process becomes unstable, which can result in not only the degraded powder bed but also the rough surface and internal defects in the printed region. The underlying mechanisms can be ascribed to: (1) during powder spreading, the excessive χr would exacerbate the interaction between particles to cause the unexpected particle scattered movement during deposition, thereby degrading the powder bed quality; (2) during laser melting, the formed loose powder bed would impede the heat absorption and dissipation, resulting in unstable liquid flow in the molten pool, thus deteriorating the quality of the printing region. Therefore, it can be confirmed that maintaining the powder bed quality in LPBF is crucial for achieving recycled powder reuse, and χr = 60% could be regarded as the threshold of current research cases.
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