基于数据的激光粉末床熔融增材制造不确定性量化

IF 2.7 3区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY International Journal for Numerical Methods in Engineering Pub Date : 2024-06-10 DOI:10.1002/nme.7542
Mihaela Chiappetta, Chiara Piazzola, Lorenzo Tamellini, Alessandro Reali, Ferdinando Auricchio, Massimo Carraturo
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引用次数: 0

摘要

我们提出了一种有效的方法,用于量化与激光粉末床金属熔融过程数值模拟相关的不确定性。我们的研究以美国国家标准与技术研究院(NIST)提出的 AMBench2018-01 基准为基础,重点关注因科镍合金 625 悬臂梁的热力学模型。所提出的方法包括在数值模拟的某些参数(即粉末对流系数和活化温度)存在不确定性的情况下,对悬臂梁的残余应变进行前向不确定性量化分析。根据 NIST 提供的位移实验数据,通过贝叶斯反演程序获得的数据信息概率密度函数对这些参数的不确定性进行建模。为了克服贝叶斯反演和前向不确定性量化分析的计算挑战,我们采用了多保真度代用建模技术,特别是多指数随机配位法。与根据不确定参数的先验范围进行前向不确定性量化分析相比,所提出的方法使我们能够将残余应变预测的不确定性降低 33%,特别是,尽管贝叶斯反演程序只使用了位移数据,但这些量的概率密度函数的模式(即其 "最可能值",粗略地说)与 NIST 提供的实验数据非常一致。
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Data-informed uncertainty quantification for laser-based powder bed fusion additive manufacturing

We present an efficient approach to quantify the uncertainties associated with the numerical simulations of the laser-based powder bed fusion of metals processes. Our study focuses on a thermomechanical model of an Inconel 625 cantilever beam, based on the AMBench2018-01 benchmark proposed by the National Institute of Standards and Technology (NIST). The proposed approach consists of a forward uncertainty quantification analysis of the residual strains of the cantilever beam given the uncertainty in some of the parameters of the numerical simulation, namely the powder convection coefficient and the activation temperature. The uncertainty on such parameters is modelled by a data-informed probability density function obtained by a Bayesian inversion procedure, based on the displacement experimental data provided by NIST. To overcome the computational challenges of both the Bayesian inversion and the forward uncertainty quantification analysis we employ a multi-fidelity surrogate modelling technique, specifically the multi-index stochastic collocation method. The proposed approach allows us to achieve a 33% reduction in the uncertainties on the prediction of residual strains compared with what we would get basing the forward UQ analysis on a-priori ranges for the uncertain parameters, and in particular the mode of the probability density function of such quantities (i.e., its “most likely value”, roughly speaking) results to be in good agreement with the experimental data provided by NIST, even though only displacement data were used for the Bayesian inversion procedure.

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来源期刊
CiteScore
5.70
自引率
6.90%
发文量
276
审稿时长
5.3 months
期刊介绍: The International Journal for Numerical Methods in Engineering publishes original papers describing significant, novel developments in numerical methods that are applicable to engineering problems. The Journal is known for welcoming contributions in a wide range of areas in computational engineering, including computational issues in model reduction, uncertainty quantification, verification and validation, inverse analysis and stochastic methods, optimisation, element technology, solution techniques and parallel computing, damage and fracture, mechanics at micro and nano-scales, low-speed fluid dynamics, fluid-structure interaction, electromagnetics, coupled diffusion phenomena, and error estimation and mesh generation. It is emphasized that this is by no means an exhaustive list, and particularly papers on multi-scale, multi-physics or multi-disciplinary problems, and on new, emerging topics are welcome.
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