Kusano Masahiro, Kitano Houichi, Watanabe Makoto
Research Center for Structural Materials, National Institute for Materials Science (NIMS), Sengen 1-2-1, Tsukuba, Ibaraki 305-0047, Japan.
Materials (Basel). 2021 Aug 30;14(17):4948. doi: 10.3390/ma14174948.
Selective laser melting (SLM) produces a near-net-shaped product by scanning a concentrated high-power laser beam over a thin layer of metal powder to melt and solidify it. During the SLM process, the material temperature cyclically and sharply rises and falls. Thermal analyses using the finite element method help to understand such a complex thermal history to affect the microstructure, material properties, and performance. This paper proposes a novel calibration strategy for the heat source model to validate the thermal analysis. First, in-situ temperature measurement by high-speed thermography was conducted for the absorptivity calibration. Then, the accurate simulation error was defined by processing the cross-sectional bead shape images by the experimental observations and simulations. In order to minimize the error, the optimal shape parameters of the heat source model were efficiently found by using Bayesian optimization. Bayesian optimization allowed us to find the optimal parameters with an error of less than 4% within 50 iterations of the thermal simulations. It demonstrated that our novel calibration strategy with Bayesian optimization can be effective to improve the accuracy of predicting the temperature field during the SLM process and to save the computational costs for the heat source model optimization.
选择性激光熔化(SLM)通过在一层薄薄的金属粉末上扫描聚焦的高功率激光束,使其熔化并凝固,从而制造出接近最终形状的产品。在SLM过程中,材料温度会周期性地急剧上升和下降。使用有限元方法进行热分析有助于理解这种复杂的热历史,从而影响微观结构、材料性能和性能。本文提出了一种用于热源模型的新型校准策略,以验证热分析。首先,通过高速热成像进行原位温度测量,以进行吸收率校准。然后,通过实验观察和模拟处理横截面熔珠形状图像来定义准确的模拟误差。为了最小化误差,使用贝叶斯优化有效地找到了热源模型的最佳形状参数。贝叶斯优化使我们能够在热模拟的50次迭代内找到误差小于4%的最佳参数。结果表明,我们采用贝叶斯优化的新型校准策略可以有效地提高预测SLM过程中温度场的准确性,并节省热源模型优化的计算成本。