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"Process parameter"

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"Process parameter"

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Bayesian Optimization of Process Parameters for Enhanced Overhang Structure Quality in L-PBF
Kyung Lim Oh, Ju Chan Yuk, Suk Hee Park
J. Korean Soc. Precis. Eng. 2025;42(7):555-564.
Published online July 1, 2025
DOI: https://doi.org/10.7736/JKSPE.025.075
Overhang structures are essential geometries in metal additive manufacturing for realizing complex shapes. However, achieving stable, support-free overhang structures requires precise control of process parameters, and securing shape fidelity becomes particularly challenging as overhang length increases due to thermal deformation. To address this challenge, this study proposed a Bayesian optimization framework for efficiently identifying optimal process parameters to fabricate high-difficulty overhang structures. An image-based scoring method was developed to quantitatively evaluate shape defects. Experimental data were collected by fabricating 3, 6, and 9 mm overhang structures with various process parameters. Based on collected data, Gaussian Process Regression (GPR) models were trained. A physics-informed soft penalty term based on energy density was incorporated to construct a surrogate model capable of making physically plausible predictions even in extrapolated regions. Using this model, Bayesian optimization was applied to overhang lengths of 12, 15, and 18 mm, for which no prior experimental data existed. Recommended parameters enabled stable, support-free fabrication of overhang structures. This study demonstrates that reliable optimization of process parameters for complex geometries can be achieved by combining minimal experimental data with physics-informed modeling, highlighting the framework’s potential extension to a wider range of geometries and processes
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Estimation of Appropriate Process Parameters for a Plasma Electron Beam Re-Melting Process Using Finite Element Analysis
Bih Lii Chua, Ho-Jin Lee, Dong-Gyu Ahn
J. Korean Soc. Precis. Eng. 2020;37(1):75-82.
Published online January 1, 2020
DOI: https://doi.org/10.7736/JKSPE.019.102
Metal additive manufacturing using electron beam melting (EBM) process applies electron beam for heating, sintering, and melting of powders to fabricate a three-dimensional component. The component may contain residual porosity internally and may be subjected to poor surface finish externally. To improve the quality of the surface finish and densification, re-melting is conducted. The purpose of this paper was to estimate the appropriate process conditions for a plasma electron beam remelting process using heat transfer finite element analyses (FEAs). The impact of the travel speed of table and thickness of the deposited part on temperature distributions were examined. The size of molten pool was estimated from the results of the thermal FEA. From the estimated size of molten pool, the travel speed of table and the hatch spacing between remelting tracks are discussed and selected as the appropriate process conditions for electron beam re-melting process from the perspective of minimum overlapping region of the molten pool.

Citations

Citations to this article as recorded by  Crossref logo
  • Investigation of elimination of powder spreading in manufacture of thin and wide preheating beads from Co–Cr alloy powders using a P-ebeam
    Ho-Jin Lee, Dong-Gyu Ahn
    Journal of Materials Research and Technology.2021; 14: 1873.     CrossRef
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Effect of Process Parameters on Mechanical Strength of Fabricated Parts using the Fused Deposition Modelling Method
Lan P. T., Huy A. Nguyen, Huy Q. Nguyen, Loc K. H., Thanh T. Tran
J. Korean Soc. Precis. Eng. 2019;36(8):705-712.
Published online August 1, 2019
DOI: https://doi.org/10.7736/KSPE.2019.36.8.705
This study investigated the effects of process parameters on mechanical properties of fabricated parts of the Polylactic acid (PLA) materials using fused deposition modeling (FDM) in 3D printing Technology. First, Taguchi method in the design of experiment (DOE) approach was applied to generate a design matrix of three process parameters namely; printing speed, extrusion temperature and layer thickness. A L9 array with 9 specimens was used for fabrication under various process parameters by the Builder 3D printer. Tensile test was implemented and recorded in accordance with ASTM D368 standard. Achieved data were analyzed using the Minitab software to show the effect of each process parameter on mechanical properties. Secondly, a regression model was developed to predict the trend of response in case of change in setting of parameters and estimating the optimal set of process parameters which creates the strongest FDM parts. The achieved optimum parameters were used to validate the fabricated samples for tensile testing. According to the results, the best mechanical strength of fabricated parts was achieved with printing speed of 48 mm/s, extrusion temperature of 220 degree of celsius (C) and the layer thickness of 0.15 mm. Also, the extrusion temperature was the most influencing factor on ultimate tensile stress.

Citations

Citations to this article as recorded by  Crossref logo
  • Predicting the dynamic tensile response of FDM materials using machine learning
    Amjad Alsakarneh, Sinan Obaidat, Ahmad A. Mumani, Mohammad F. Tamimi
    Discover Applied Sciences.2025;[Epub]     CrossRef
  • From feedforward to quantum: Exploring neural networks for predicting tensile strength in additively manufactured polylactic acid parts
    Mohammad Hossein Nikzad, Mohammad Heidari-Rarani, Reza Rasti, Neda Moghim, Sachin Shetty
    Materials Today Communications.2025; 49: 113956.     CrossRef
  • Machine learning-driven prediction of tensile strength in 3D-printed PLA parts
    Mohammad Hossein Nikzad, Mohammad Heidari-Rarani, Reza Rasti, Pooya Sareh
    Expert Systems with Applications.2025; 264: 125836.     CrossRef
  • Using Bayesian Regularized Artificial Neural Networks to Predict the Tensile Strength of Additively Manufactured Polylactic Acid Parts
    Valentina Vendittoli, Wilma Polini, Michael S. J. Walter, Stefan Geißelsöder
    Applied Sciences.2024; 14(8): 3184.     CrossRef
  • Experimental and Investigation of ABS Filament Process Variables on Tensile Strength Using an Artificial Neural Network and Regression Model
    Mostafa Adel Abdullah Hamed
    Al-Nahrain Journal for Engineering Sciences.2024; 27(2): 251.     CrossRef
  • OPTIMIZATION OF FDM 3D PRINTING PARAMETERS FOR TENSILE STRENGTH OF PETG CARBON FIBRE USING TAGUCHI METHOD
    Nor Aiman Sukindar, Nurul Aini Athirah Abdul Rahim , Ahmad Shah Hizam Md Yasir , Shafie Kamaruddin , Mohamad Talhah Al Hafiz Mohd Khata , Nor Farah Huda Abd Halim , Mohamad Nor Hafiz Jamil , Ahmad Azlan Ab Aziz
    International Journal of Modern Manufacturing Technologies.2024; 16(3): 143.     CrossRef
  • The use of machine learning in process–structure–property modeling for material extrusion additive manufacturing: a state-of-the-art review
    Ziadia Abdelhamid, Habibi Mohamed, Sousso Kelouwani
    Journal of the Brazilian Society of Mechanical Sciences and Engineering.2024;[Epub]     CrossRef
  • Machine Learning Study of the Effect of Process Parameters on Tensile Strength of FFF PLA and PLA-CF
    Abdelhamid Ziadia, Mohamed Habibi, Sousso Kelouwani
    Eng.2023; 4(4): 2741.     CrossRef
  • Metatarsal bone model production using 3D printing and comparison of material properties with results obtained from CT-based modeling and real bone
    Zeliha Coşkun, Talip Çelik, Yasin Kişioğlu
    Proceedings of the Institution of Mechanical Engineers, Part H: Journal of Engineering in Medicine.2023; 237(4): 481.     CrossRef
  • Ergiyik filament ile imalat yönteminde kullanılan PLA ve çelik katkılı PLA filament malzemelerin mekanik ve fiziksel özelliklerinin incelenmesi
    Ali Osman ER, Osman Muhsin AYDINLI
    Gazi Üniversitesi Mühendislik Mimarlık Fakültesi Dergisi.2023; 39(2): 1285.     CrossRef
  • INFLUENCE OF FDM PROCESS VARIABLES' ON TENSILE STRENGTH, WEIGHT, AND ACTUAL PRINTING TIME WHEN USING ABS FILAMENT
    Tahseen Fadhil Abbas, Ali Hind Basil , Kalida Kadhim Mansor
    International Journal of Modern Manufacturing Technologies.2022; 14(1): 7.     CrossRef
  • Analysis of Correlation between FDM Additive and Finishing Process Conditions in FDM Additive-Finishing Integrated Process for the Improved Surface Quality of FDM Prints
    Ji Won Yu, Hyung Jin Jeong, Jae Hyung Park, Dong Hun Lee
    Journal of the Korean Society for Precision Engineering.2022; 39(2): 159.     CrossRef
  • Regression Model for Optimization and Prediction of Tensile Strength of a PLA Prototype Printed
    Lahcen Hamouti, Omar El Farissi, Omar Outemssa
    Journal of Advanced Computational Intelligence and Intelligent Informatics.2022; 26(6): 952.     CrossRef
  • Effect of extruder temperature and printing speed on the tensile strength of fused deposition modeling (FDM) 3D printed samples: a meta-analysis study
    Sajjad Farashi, Fariborz Vafaee
    International Journal on Interactive Design and Manufacturing (IJIDeM).2022; 16(1): 305.     CrossRef
  • Effects of raster angle in single- and multi-oriented layers for the production of polyetherimide (PEI/ULTEM 1010) parts with fused deposition modelling
    Musa Yilmaz, Necip Fazil Yilmaz
    Materials Testing.2022; 64(11): 1651.     CrossRef
  • Optimisation of Strength Properties of FDM Printed Parts—A Critical Review
    Daniyar Syrlybayev, Beibit Zharylkassyn, Aidana Seisekulova, Mustakhim Akhmetov, Asma Perveen, Didier Talamona
    Polymers.2021; 13(10): 1587.     CrossRef
  • Influence of 3D printing process parameters on the mechanical properties and mass of PLA parts and predictive models
    João Araújo Afonso, Jorge Lino Alves, Gabriela Caldas, Barbara Perry Gouveia, Leonardo Santana, Jorge Belinha
    Rapid Prototyping Journal.2021; 27(3): 487.     CrossRef
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Influence of the Material Scattering on the Springback Tendency in the Stamping Process of the UHSS
Sang Bum Bae, Se Ho Kim
J. Korean Soc. Precis. Eng. 2018;35(8):791-796.
Published online August 1, 2018
DOI: https://doi.org/10.7736/KSPE.2018.35.8.791
In this paper, the reliability-based parameter study is carried out for the stamping process of a front rail roof member with the ultra high strength steel, considering the scatters of the material properties and the process parameters. With the reliability-based design optimization (RBDO) scheme, the springback tendency is investigated from the perturbation of the process parameters such as the sheet thickness, ultimate tensile strength, yield strength, Coulomb friction coefficient, and applied padding force. The amount of the elastic recovery along the height direction is quantified to describe the springback tendency from the analysis. The analysis shows the springback-amount scattering is not ignorable when the yield stress scatters within the similar range of the ultimate tensile strength. The analysis results fully explain the importance of controlling the scatters as well as the average yield-strength amount in the mass production of the stamped products.
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