Page 26 - ESAM-1-1
P. 26

Engineering Science in
            Additive Manufacturing                                        ML in MAM monitoring and control through images



            References                                            monitoring of metal additive manufacturing based on image
                                                                  processing. Int J Adv Manuf Technol. 2022;123(1-2):1-20.
            1.   Frazier WE. Metal additive manufacturing: A  review.
               J Mater Eng Performance. 2014;23(6):1917-1928.     doi: 10.1007/s00170-022-10178-3
               doi: 10.1007/s11665-014-0958-z                  13.  Zhang  Y,  Soon  HG,  Ye  D,  Fuh  JYH,  Zhu  K.  Powder-bed
                                                                  fusion process monitoring by machine vision with hybrid
            2.   Sun C, Wang Y, McMurtrey MD, Jerred ND, Liou F, Li J.   convolutional neural networks. Article.  IEEE Trans Ind
               Additive manufacturing for energy: A review. Appl Energy.   Inform. 2020;16(9):5769-5779.
               2021;282:116041.
                                                                  doi: 10.1109/tii.2019.2956078
               doi: 10.1016/j.apenergy.2020.116041
                                                               14.  Wang Z, Iquebal AS, Bukkapatnam STS. A  vision-based
            3.   DebRoy T, Wei HL, Zuback JS, et al. Additive manufacturing   monitoring approach for real-time control of laser origami
               of metallic components-process, structure and properties.   cybermanufacturing processes. Proc Manuf. 2018;???:1307-1317.
               Prog Mater Sci. 2018;92:112-224.
                                                                  doi: 10.1016/j.promfg.2018.07.135
               doi: 10.1016/j.pmatsci.2017.10.001
                                                               15.  Hossain MS, Taheri H. In-situ process monitoring for metal
            4.   Gu DD, Meiners W, Wissenbach K, Poprawe R. Laser additive   additive manufacturing through acoustic techniques using
               manufacturing of metallic components: Materials, processes   wavelet and convolutional neural network (CNN). Int J Adv
               and mechanisms. Int Mater Rev. 2012;57(3):133-164.  Manuf Technol. 2021;116(11-12):3473-3488.
               doi: 10.1179/1743280411Y.0000000014                doi: 10.1007/s00170-021-07721-z
            5.   Blakey-Milner B, Gradl P, Snedden G, et al. Metal additive   16.  Zhu K, Fuh JYH, Lin X. Metal-based additive manufacturing
               manufacturing in aerospace: A  review.  Mater Des.   condition monitoring: A  review on machine learning
               2021;209:110008.                                   based approaches.  IEEE  ASME  Trans  Mechatronics.
               doi: 10.1016/j.matdes.2021.110008                  2022;27(5):2495-2510.
            6.   Lin X, Zhu K, Fuh JYH, Duan X. Metal-based additive      doi: 10.1109/tmech.2021.3110818
               manufacturing condition monitoring methods: From   17.  Bisheh MN, Chang SI, Lei S. A  layer-by-layer quality
               measurement to control. ISA Trans. 2022;120:147-166.  monitoring framework for 3D printing. Proceedings Paper.
               doi: 10.1016/j.isatra.2021.03.001                  Comput Ind Eng. 2021;157:107314.
            7.   Herzog T, Brandt M, Trinchi A, Sola A, Molotnikov A.      doi: 10.1016/j.cie.2021.107314
               Process monitoring and machine learning for defect   18.  Qi X, Chen G, Li Y, Cheng X, Li C. Applying neural-
               detection in laser-based metal additive manufacturing.   network-based machine learning to additive manufacturing:
               J Intell Manuf. 2024;35(4):1407-1437.              Current  applications,  challenges,  and  future  perspectives.
               doi: 10.1007/s10845-023-02119-y                    Engineering. 2019;5(4):721-729.
            8.   Mostafaei A, Zhao C, He Y, et al. Defects and anomalies in      doi: 10.1016/j.eng.2019.04.012
               powder bed fusion metal additive manufacturing. Curr Opin   19.  Zhao T, Yan Z, Zhang B,  et al. A  comprehensive review of
               Solid State Mater Sci. 2022;26(2):100974.          process planning and trajectory optimization in arc-based
                                                                  directed energy deposition. J Manuf Process. 2024;119:235-254.
               doi: 10.1016/j.cossms.2021.100974
                                                                  doi: 10.1016/j.jmapro.2024.03.093
            9.   Sanaei N, Fatemi A. Defects in additive manufactured
               metals and their effect on fatigue performance: A state-of-  20.  Ng WL, Goh GL, Goh GD, Ten JSJ, Yeong WY. Progress
               the-art review. Prog Mater Sci. 2021;117:100724.   and opportunities for machine learning in materials
                                                                  and  processes  of  additive  manufacturing.  Adv Mater.
               doi: 10.1016/j.pmatsci.2020.100724
                                                                  2024;36(34):e202310006.
            10.  Guo L, Xu W, Qi C, et al. Research progress of monitoring
               and control technology for metal additive manufacturing.      doi: 10.1002/adma.202310006
               J Nanjing Univ Aeronautics Astronautics. 2022;54(3):365-377.  21.  Khorasani M, Gibson I, Ghasemi AH, Hadavi E, Rolfe B.
                                                                  Laser subtractive and laser powder bed fusion of metals:
               doi: 10.16356/j.1005-2615.2022.03.002
                                                                  Review of process and production features. Rapid Prototyp J.
            11.  Das A, Ghosh D, Lau SF, Srivastava P, Ghosh A, Ding CF.   2023;29(5):935-958.
               A  critical review of process monitoring for laser-based
               additive manufacturing. Adv Eng Inform. 2024;62:102932.     doi: 10.1108/rpj-03-2021-0055
                                                               22.  Karkaria V, Goeckner A, Zha RJ,  et  al. Towards a digital
               doi: 10.1016/j.aei.2024.102932
                                                                  twin framework in additive manufacturing: Machine
            12.  Zhang Y, Shen S, Li H, Hu Y. Review of in situ and real-time   learning and bayesian optimization for time series process


            Volume 1 Issue 1 (2025)                         20                             doi: 10.36922/esam.8548
   21   22   23   24   25   26   27   28   29   30   31