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Numerical simulation of Laser Fusion Additive Manufacturing processes using the SPH method

机译:使用SPH方法进行激光熔合增材制造过程的数值模拟

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In this work, the Smooth Particle Hydrodynamics (SPH) method, a Lagrangian mesh-free numerical scheme, is adapted for the first time to resolve thermal-mechanical-material fields in a range of Laser Fusion Additive Manufacturing processes. The method is capable of simulating large-deformation, free-surface melting, flow, and re-solidification of metallic materials with complex physics and material geometries. A novel SPH formulation for modeling isothermally-incompressible fluids, which allows for the accurate simulation of thermally-driven, liquid-phase metal expansion/contraction, is presented and verified. Fundamental validation of the methodology is performed via comparison with spot laser welding experiments. The methodology is then used to investigate the specific Additive Manufacturing process of the Selective Laser Melting of Metallic, micro-scale particle beds. The physics of a track deposition process is explored through numerical experiments, and the influence of processing parameters on the quality of the finished melt-track is investigated. The unique abilities of using a Lagrangian mesh-free method, as opposed to mesh-based numerical schemes, to model this process are highlighted. The SPH method is found to be a viable and promising numerical tool for simulating laser fusion driven Additive Manufacturing processes. (C) 2018 Elsevier B.Y. All rights reserved.
机译:在这项工作中,首次采用了光滑粒子流体动力学(SPH)方法(一种无拉格朗日数值方法)来解决一系列激光熔合增材制造过程中的热机械材料场。该方法能够模拟物理性质和材料几何形状复杂的金属材料的大变形,自由表面熔化,流动和重新凝固。提出并验证了用于模拟等温不可压缩流体的新颖SPH配方,该配方可精确模拟热驱动的液相金属的膨胀/收缩。该方法的基本验证是通过与点激光焊接实验进行比较来进行的。然后,该方法用于研究选择性地熔化金属,微型颗粒床的选择性增材制造过程。通过数值实验探索了道沉积过程的物理性质,并研究了工艺参数对最终熔道质量的影响。与基于网格的数值方案相反,使用拉格朗日无网格方法对这一过程进行建模的独特能力得到了强调。发现SPH方法是模拟激光熔融驱动的增材制造过程的可行且有前途的数值工具。 (C)2018年Elsevier B.Y.版权所有。

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