Application of Deep Transfer Learning and Uncertainty Quantification for Process Identification in Powder Bed Fusion

Piyush Pandita, Sayan Ghosh, V. Gupta, Andrey Meshkov, Liping Wang
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引用次数: 10

Abstract

Accurate identification and modeling of process maps in additive manufacturing remains a pertinent challenge. To ensure high quality and reliability of the finished product researchers, rely on models that entail the physics of the process as a computer code or conduct laboratory experiments, which are expensive and oftentimes demand significant logistic and overheads. Physics-based computational modeling has shown promise in alleviating the aforementioned challenge, albeit with limitations like physical approximations, model-form uncertainty, and limited experimental data. This calls for modeling methods that can combine limited experimental and simulation data in a computationally efficient manner, in order to achieve the desired properties in the manufactured parts. In this paper, we focus on demonstrating the impact of probabilistic modeling and uncertainty quantification on powder-bed fusion (PBF) additive manufacturing by focusing on the following three milieu: (a) accelerating the parameter development processes associated with laser powder bed fusion additive manufacturing process of metals, (b) quantifying uncertainty and identifying missing physical correlations in the computational model, and (c) transferring learned process maps from a source to a target process. These tasks demonstrate the application of multifidelity modeling, global sensitivity analysis, intelligent design of experiments, and deep transfer learning for a meso-scale meltpool model of the additive manufacturing process.
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深度迁移学习和不确定性量化在粉末床熔合过程识别中的应用
增材制造过程图的准确识别和建模仍然是一个相关的挑战。为了确保成品的高质量和可靠性,研究人员依赖于需要将过程的物理原理作为计算机代码的模型或进行实验室实验,这是昂贵的,并且通常需要大量的后勤和管理费用。基于物理的计算建模在缓解上述挑战方面显示出了希望,尽管存在物理近似、模型形式不确定性和有限的实验数据等局限性。这就要求建模方法能够以高效的计算方式结合有限的实验和仿真数据,以便在制造的零件中实现所需的性能。在本文中,我们重点展示了概率建模和不确定性量化对粉末床融合(PBF)增材制造的影响,重点关注以下三种环境:(a)加速与激光粉末床熔融金属增材制造工艺相关的参数开发过程,(b)量化不确定性并识别计算模型中缺失的物理相关性,以及(c)将学习到的过程图从源过程转移到目标过程。这些任务展示了多保真建模、全局灵敏度分析、实验智能设计和深度迁移学习在增材制造过程中尺度熔池模型中的应用。
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来源期刊
CiteScore
5.20
自引率
13.60%
发文量
34
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