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首页> 外文期刊>Journal of manufacturing science and engineering: Transactions of the ASME >A Data-Driven Approach for Process Optimization of Metallic Additive Manufacturing Under Uncertainty
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A Data-Driven Approach for Process Optimization of Metallic Additive Manufacturing Under Uncertainty

机译:不确定性下金属添加剂制造过程优化的数据驱动方法

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摘要

The presence of various uncertainty sources in metal-based additive manufacturing (AM) process prevents producing AM products with consistently high quality. Using electron beam melting (EBM) of Ti-6Al-4V as an example, this paper presents a data-driven framework for process parameters optimization using physics-informed computer simulation models. The goal is to identify a robust manufacturing condition that allows us to constantly obtain equiaxed materials microstructures under uncertainty. To overcome the computational challenge in the robust design optimization under uncertainty, a two-level data-driven surrogate model is constructed based on the simulation data of a validated high-fidelity multi-physics AM simulation model. The robust design result, indicating a combination of low preheating temperature, low beam power, and intermediate scanning speed, was acquired enabling the repetitive production of equiaxed structure products as demonstrated by physics-based simulations. Global sensitivity analysis at the optimal design point indicates that among the studied six noise factors, specific heat capacity and grain growth activation energy have the largest impact on the microstructure variation. Through this exemplar process optimization, the current study also demonstrates the promising potential of the presented approach in facilitating other complicate AM process optimizations, such as robust designs in terms of porosity control or direct mechanical property control.
机译:在金属基添加剂制造(AM)过程中存在各种不确定性来源,可防止以始终如一的高质量生产AM产品。用TI-6AL-4V的电子束熔化(EBM)为例,本文介绍了使用物理信息的计算机仿真模型进行处理参数优化的数据驱动框架。目标是识别稳健的制造条件,其允许我们在不确定度下持续获得等式的材料微观结构。为了在不确定度下克服鲁棒设计优化中的计算挑战,基于验证的高保真多物理AM仿真模型的仿真数据来构建两级数据驱动的代理模型。获得了低预热温度,低光束功率和中间扫描速度的鲁棒设计结果,可以获得通过基于物理的模拟所证明的等式结构产品的重复生产。最佳设计点的全局敏感性分析表明,在研究的六个噪声因子中,特定的热容量和晶粒生长激活能量对微观结构变化具有最大的影响。通过该示例性过程优化,目前的研究还证明了所提出的方法的有希望的潜力,以促进其它复杂的AM工艺优化,例如在孔隙控制或直接机械性能控制方面的鲁棒设计。

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