粉末床熔合过程预测模型的新框架

IF 2.3 4区 工程技术 Q3 ENGINEERING, MANUFACTURING 3D Printing and Additive Manufacturing Pub Date : 2024-02-01 Epub Date: 2024-02-15 DOI:10.1089/3dp.2021.0255
Mallikharjun Marrey, Ehsan Malekipour, Hazim El-Mounayri, Eric J Faierson, Mangilal Agarwal
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引用次数: 0

摘要

粉末床熔融(PBF)工艺是一种金属增材制造工艺,可以用多种金属材料制造任何复杂程度的零件。由于缺乏同时对大量工艺参数进行预测建模的系统方法,粉末床熔融工艺研究主要集中在少数参数对产品性能的影响上。该工艺所面临的关键挑战需要一种定量方法,将材料特性和工艺参数映射到最终质量上;这样才能优化这些参数。在本研究中,我们针对 316L 不锈钢材料提出了一个研究工艺参数和开发预测模型的两阶段框架。我们还讨论了工艺参数(即激光规格和机械性能)之间的相关性,以及如何获得最佳的体积能量密度范围,以生产出高密度(大于 99%)的零件,并获得更好的最终机械性能。在本文中,我们介绍并测试了一种创新方法,用于开发误差率相对较低(即 10% 左右)的 AM 预测模型,该模型可用于根据用户或制造商的零件性能要求选择工艺参数。这些模型基于支持向量回归、随机森林回归和神经网络等技术。结果表明,利用这些模型智能选择工艺参数,可实现高达 99.31% 的高密度和均匀的微观结构,从而提高硬度、冲击强度和其他机械性能。
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A Novel Framework of Developing a Predictive Model for Powder Bed Fusion Process.

The powder bed fusion (PBF) process is a metal additive manufacturing process, which can build parts with any complexity from a wide range of metallic materials. PBF process research has predominantly focused on the impact of only a few parameters on product properties due to the lack of a systematic approach for predictive modeling of a large set of process parameters simultaneously. The pivotal challenges regarding this process require a quantitative approach for mapping the material properties and process parameters onto the ultimate quality; this will then enable the optimization of those parameters. In this study, we propose a two-phase framework for studying the process parameters and developing a predictive model for 316L stainless steel material. We also discuss the correlation between process parameters that is, laser specifications and mechanical properties, and how to obtain an optimum range of volumetric energy density for producing parts with high density (>99%), as well as better ultimate mechanical properties. In this article, we introduce and test an innovative approach for developing AM predictive models, with a relatively low error percentage (i.e., around 10%), which are used for process parameter selection in accordance with user or manufacturer part performance requirements. These models are based on techniques such as support vector regression, random forest regression, and neural network. It is shown that the intelligent selection of process parameters using these models can achieve a high density of up to 99.31% with uniform microstructure, which improves hardness, impact strength, and other mechanical properties.

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来源期刊
3D Printing and Additive Manufacturing
3D Printing and Additive Manufacturing Materials Science-Materials Science (miscellaneous)
CiteScore
6.00
自引率
6.50%
发文量
126
期刊介绍: 3D Printing and Additive Manufacturing is a peer-reviewed journal that provides a forum for world-class research in additive manufacturing and related technologies. The Journal explores emerging challenges and opportunities ranging from new developments of processes and materials, to new simulation and design tools, and informative applications and case studies. Novel applications in new areas, such as medicine, education, bio-printing, food printing, art and architecture, are also encouraged. The Journal addresses the important questions surrounding this powerful and growing field, including issues in policy and law, intellectual property, data standards, safety and liability, environmental impact, social, economic, and humanitarian implications, and emerging business models at the industrial and consumer scales.
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