Nath Paromita, Olson Joseph D, Mahadevan Sankaran, Lee Yung-Tsun Tina
Department of Civil and Environmental Engineering, Vanderbilt University, Nashville, TN 37235, USA.
Systems Integration Division, National Institute of Standards and Technology (NIST), Gaithersburg, MD 20899, USA.
Addit Manuf. 2020;35. doi: 10.1016/j.addma.2020.101331.
This work presents a novel process design optimization framework for additive manufacturing (AM) by integrating physics-informed computational simulation models with experimental observations. The proposed framework is implemented to optimize the process parameters such as extrusion temperature, extrusion velocity, and layer thickness in the fused filament fabrication (FFF) AM process, in order to reduce the variability in the geometry of the manufactured part. A coupled thermo-mechanical model is first developed to simulate the FFF process. The temperature history obtained from the heat transfer analysis is then used as input for the mechanical deformation analysis to predict the dimensional inaccuracy of the additively manufactured part. The simulation model is then corrected based on experimental observations through Bayesian calibration of the model discrepancy to make it more accurately represent the actual manufacturing process. Based on the corrected prediction model, a robustness-based design optimization problem is formulated to optimize the process parameters, while accounting for multiple sources of uncertainty in the manufacturing process, process models, and measurements. Physical experiments are conducted to verify the effectiveness of the proposed optimization framework.
这项工作通过将基于物理的计算模拟模型与实验观察相结合,提出了一种用于增材制造(AM)的新型工艺设计优化框架。所提出的框架用于优化熔融长丝制造(FFF)增材制造工艺中的工艺参数,如挤出温度、挤出速度和层厚,以减少制造零件几何形状的变化。首先开发了一个热-机械耦合模型来模拟FFF工艺。然后,将从传热分析中获得的温度历史用作机械变形分析的输入,以预测增材制造零件的尺寸误差。接着,通过对模型差异进行贝叶斯校准,根据实验观察结果对模拟模型进行修正,使其更准确地反映实际制造过程。基于修正后的预测模型,制定了一个基于稳健性的设计优化问题,以优化工艺参数,同时考虑制造过程、工艺模型和测量中的多种不确定性来源。进行了物理实验以验证所提出的优化框架的有效性。