Adak Debajyoti, Sreeramagiri Praveen, Roy Somnath, Balasubramanian Ganesh
Department of Mechanical Engineering, Indian Institute of Technology, Kharagpur 721302, India.
Department of Mechanical Engineering & Mechanics, Lehigh University, Bethlehem, PA 18015, USA.
Materials (Basel). 2023 Aug 18;16(16):5680. doi: 10.3390/ma16165680.
We present a scrutiny on the state of the art and applicability of predictive methods for additive manufacturing (AM) of metals, alloys, and compositionally complex metallic materials, to provide insights from the computational models for AM process optimization. Our work emphasizes the importance of manufacturing parameters on the thermal profiles evinced during processing, and the fundamental insights offered by the models used to simulate metal AM mechanisms. We discuss the methods and assumptions necessary for an educated tradeoff between the efficacy and accuracy of the computational approaches that incorporate multi-physics required to mimic the associated fluid flow phenomena as well as the resulting microstructures. Finally, the current challenges in the existing approaches are summarized and future scopes identified.
我们对金属、合金及成分复杂的金属材料增材制造(AM)的预测方法的现状和适用性进行了详细审查,以便从用于增材制造工艺优化的计算模型中获得见解。我们的工作强调了制造参数对加工过程中热分布的重要性,以及用于模拟金属增材制造机制的模型所提供的基本见解。我们讨论了在结合多物理场以模拟相关流体流动现象及最终微观结构的计算方法的有效性和准确性之间进行合理权衡所需的方法和假设。最后,总结了现有方法当前面临的挑战并确定了未来的研究范围。