Processing windows for Al-357 by LPBF process: a novel framework integrating FEM simulation and machine learning with empirical testing

IF 3.4 4区 工程技术 Q1 ENGINEERING, MECHANICAL Rapid Prototyping Journal Pub Date : 2024-08-09 DOI:10.1108/rpj-01-2024-0057
M. A. Mahmood, Marwan Khraisheh, Andrei C. Popescu, Frank Liou
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Abstract

Purpose This study aims to develop a holistic method that integrates finite element modeling, machine learning, and experimental validation to propose processing windows for optimizing the laser powder bed fusion (LPBF) process specific to the Al-357 alloy. Design/methodology/approach Validation of a 3D heat transfer simulation model was conducted to forecast melt pool dimensions, involving variations in laser power, laser scanning speed, powder bed thickness (PBT) and powder bed pre-heating (PHB). Using the validated model, a data set was compiled to establish a back-propagation-based machine learning capable of predicting melt pool dimensional ratios indicative of printing defects. Findings The study revealed that, apart from process parameters, PBT and PHB significantly influenced defect formation. Elevated PHBs were identified as contributors to increased lack of fusion and keyhole defects. Optimal combinations were pinpointed, such as 30.0 µm PBT with 90.0 and 120.0 °C PHBs and 50.0 µm PBT with 120.0 °C PHB. Originality/value The integrated process mapping approach showcased the potential to expedite the qualification of LPBF parameters for Al-357 alloy by minimizing the need for iterative physical testing.
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通过 LPBF 工艺加工 Al-357 的窗口:将有限元模拟和机器学习与经验测试相结合的新型框架
本研究旨在开发一种综合方法,将有限元建模、机器学习和实验验证整合在一起,为优化 Al-357 合金激光粉末床熔融 (LPBF) 工艺提出加工窗口。研究结果表明,除工艺参数外,PBT 和 PHB 对缺陷的形成也有显著影响。研究发现,PHB 的升高会导致更多的不融合和锁孔缺陷。研究确定了最佳组合,如 30.0 µm PBT 与 90.0 和 120.0 °C PHB,以及 50.0 µm PBT 与 120.0 °C PHB。原创性/价值该综合工艺制图方法最大程度地减少了反复物理测试的需要,从而展示了加快 Al-357 合金 LPBF 参数鉴定的潜力。
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来源期刊
Rapid Prototyping Journal
Rapid Prototyping Journal 工程技术-材料科学:综合
CiteScore
8.30
自引率
10.30%
发文量
137
审稿时长
4.6 months
期刊介绍: Rapid Prototyping Journal concentrates on development in a manufacturing environment but covers applications in other areas, such as medicine and construction. All papers published in this field are scattered over a wide range of international publications, none of which actually specializes in this particular discipline, this journal is a vital resource for anyone involved in additive manufacturing. It draws together important refereed papers on all aspects of AM from distinguished sources all over the world, to give a truly international perspective on this dynamic and exciting area. -Benchmarking – certification and qualification in AM- Mass customisation in AM- Design for AM- Materials aspects- Reviews of processes/applications- CAD and other software aspects- Enhancement of existing processes- Integration with design process- Management implications- New AM processes- Novel applications of AM parts- AM for tooling- Medical applications- Reverse engineering in relation to AM- Additive & Subtractive hybrid manufacturing- Industrialisation
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