Monitoring and control of biological additive manufacturing using machine learning

被引:7
|
作者
Gerdes, Samuel [1 ]
Gaikwad, Aniruddha [1 ]
Ramesh, Srikanthan [4 ]
Rivero, Iris V. [2 ]
Tamayol, Ali [3 ]
Rao, Prahalada [1 ,5 ]
机构
[1] Univ Nebraska, Mech & Mat Engn, Lincoln, NE 68588 USA
[2] Rochester Inst Technol, Ind & Syst Engn, Rochester, NY USA
[3] Univ Connecticut, Biomed Engn, Farmington, CT USA
[4] Oklahoma State Univ, Sch Ind Engn & Management, Stillwater, OK USA
[5] Virginia Tech, Grad Dept Ind & Syst Engn, Blacksburg, VA USA
基金
美国国家科学基金会;
关键词
3D printing; Bone tissue; Poly(caprolactone) (PCL)-hydroxyapatite (HAp) composites; In-situ sensing; PORE-SIZE; POLYCAPROLACTONE SCAFFOLDS;
D O I
10.1007/s10845-023-02092-6
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The goal of this work is the flaw-free, industrial-scale production of biological additive manufacturing of tissue constructs (Bio-AM). In pursuit of this goal, the objectives of this work in the context of extrusion-based Bio-AM of bone tissue constructs are twofold: (1) detect flaw formation using data from in-situ infrared thermocouple sensors; and (2) prevent flaw formation through preemptive process control. In realizing the first objective, data signatures acquired from in-situ sensors were analyzed using several machine learning approaches to ascertain critical quality metrics, such as print regime, strand width, strand height, and strand fusion severity. These quality metrics are intended to capture the process state at the basic 1D strand-level to the 2D layer-level. For this purpose, machine learning models were trained to classify and predict flaw formation. These models predicted print quality features with accuracy nearing 90%. In connection with the second objective, the previously trained machine learning models were used to preempt flaw formation by changing the process parameters (print velocity) during deposition-a form of feedforward control. With the feedforward process control, strand width heterogeneity was statistically significantly reduced, reducing the strand width difference between strand halves to less than 50 mu m. Using this integrated process monitoring, detection, and control approach, we demonstrate consistent, repeatable production of Bio-AM constructs.
引用
收藏
页码:1055 / 1077
页数:23
相关论文
共 50 条
  • [31] Deep learning for process monitoring of additive manufacturing
    Yi L.
    Ehmsen S.
    Cassani M.
    Glatt M.
    Varshneya S.
    Liznerski P.
    Kloft M.
    da Silva E.J.
    Aurich J.C.
    ZWF Zeitschrift fuer Wirtschaftlichen Fabrikbetrieb, 2020, 115 (11): : 810 - 813
  • [32] APPLICATION OF DATA PROCESSING AND MACHINE LEARNING TECHNIQUES FOR IN SITU MONITORING OF METAL ADDITIVE MANUFACTURING USING ACOUSTIC EMISSION DATA
    Hossain, Shahjahan
    Taheri, Hossein
    PROCEEDINGS OF ASME 2021 INTERNATIONAL MECHANICAL ENGINEERING CONGRESS AND EXPOSITION (IMECE2021), VOL 2B, 2021,
  • [33] A Framework for Additive Manufacturing Process Monitoring & Control
    Cummings, Ian T.
    Bax, Megan E.
    Fuller, Ivan J.
    Wachtor, Adam J.
    Bernardin, John D.
    TOPICS IN MODAL ANALYSIS & TESTING, VOL 10, 2017, : 137 - 146
  • [34] Process Monitoring, Diagnosis and Control of Additive Manufacturing
    Fang, Qihang
    Xiong, Gang
    Zhou, MengChu
    Tamir, Tariku Sinshaw
    Yan, Chao-Bo
    Wu, Huaiyu
    Shen, Zhen
    Wang, Fei-Yue
    IEEE TRANSACTIONS ON AUTOMATION SCIENCE AND ENGINEERING, 2024, 21 (01) : 1041 - 1067
  • [35] Raster Angle Prediction of Additive Manufacturing Process Using Machine Learning Algorithm
    Ulkir, Osman
    Bayraklilar, Mehmet Said
    Kuncan, Melih
    APPLIED SCIENCES-BASEL, 2024, 14 (05):
  • [36] A Study for Laser Additive Manufacturing Quality and Material Classification Using Machine Learning
    Schmidt, Ralph Rudi
    Hildebrand, Jorg
    Kraljevski, Ivan
    Duckhorn, Frank
    Tschoepe, Constanze
    2022 IEEE SENSORS, 2022,
  • [37] Filament Type Recognition for Additive Manufacturing Using a Spectroscopy Sensor and Machine Learning
    Al, Gorkem Anil
    Martinez-Hernandez, Uriel
    SENSORS, 2025, 25 (05)
  • [38] Prediction of machine learning-based hardness for the polycarbonate using additive manufacturing
    Mahmoud, Haitham A.
    Shanmugasundar, G.
    Vyavahare, Swapnil
    Kumar, Rakesh
    Cep, Robert
    Salunkhe, Sachin
    Gawade, Sharad
    Nasr, Emad S. Abouel
    FRONTIERS IN MATERIALS, 2024, 11
  • [39] Applications of Machine Learning in Process Monitoring and Controls of L-PBF Additive Manufacturing: A Review
    Mahmoud, Dalia
    Magolon, Marcin
    Boer, Jan
    Elbestawi, M. A.
    Mohammadi, Mohammad Ghayoomi
    APPLIED SCIENCES-BASEL, 2021, 11 (24):
  • [40] Metal-Based Additive Manufacturing Condition Monitoring: A Review on Machine Learning Based Approaches
    Zhu, Kunpeng
    Fuh, Jerry Ying Hsi
    Lin, Xin
    IEEE-ASME TRANSACTIONS ON MECHATRONICS, 2022, 27 (05) : 2495 - 2510