TY - JOUR
T1 - Machine Learning Enabled Design and Optimization for 3D-Printing of High-Fidelity Presurgical Organ Models
AU - Chen, Eric S.
AU - Ahmadianshalchi, Alaleh
AU - Sparks, Sonja S.
AU - Chen, Chuchu
AU - Deshwal, Aryan
AU - Doppa, Janardhan R.
AU - Qiu, Kaiyan
N1 - Publisher Copyright:
© 2024 The Author(s). Advanced Materials Technologies published by Wiley-VCH GmbH.
PY - 2025/1/8
Y1 - 2025/1/8
N2 - The development of a general-purpose machine learning algorithm capable of quickly identifying optimal 3D-printing settings can save manufacturing time and cost, reduce labor intensity, and improve the quality of 3D-printed objects. Existing methods have limitations which focus on overall performance or one specific aspect of 3D-printing quality. Here, for addressing the limitations, a multi-objective Bayesian Optimization (BO) approach which uses a general-purpose algorithm to optimize the black-box functions is demonstrated and identifies the optimal input parameters of direct ink writing for 3D-printing different presurgical organ models with intricate geometry. The BO approach enhances the 3D-printing efficiency to achieve the best possible printed object quality while simultaneously addressing the inherent trade-offs from the process of pursuing ideal outcomes relevant to requirements from practitioners. The BO approach also enables us to effectively explore 3D-printing inputs inclusive of layer height, nozzle travel speed, and dispensing pressure, as well as visualize the trade-offs between each set of 3D-printing inputs in terms of the output objectives which consist of time, porosity, and geometry precisions through the Pareto front.
AB - The development of a general-purpose machine learning algorithm capable of quickly identifying optimal 3D-printing settings can save manufacturing time and cost, reduce labor intensity, and improve the quality of 3D-printed objects. Existing methods have limitations which focus on overall performance or one specific aspect of 3D-printing quality. Here, for addressing the limitations, a multi-objective Bayesian Optimization (BO) approach which uses a general-purpose algorithm to optimize the black-box functions is demonstrated and identifies the optimal input parameters of direct ink writing for 3D-printing different presurgical organ models with intricate geometry. The BO approach enhances the 3D-printing efficiency to achieve the best possible printed object quality while simultaneously addressing the inherent trade-offs from the process of pursuing ideal outcomes relevant to requirements from practitioners. The BO approach also enables us to effectively explore 3D-printing inputs inclusive of layer height, nozzle travel speed, and dispensing pressure, as well as visualize the trade-offs between each set of 3D-printing inputs in terms of the output objectives which consist of time, porosity, and geometry precisions through the Pareto front.
KW - 3D-printing
KW - Bayesian optimization
KW - machine learning
KW - parameters optimization
KW - presurgical organ models
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U2 - 10.1002/admt.202400037
DO - 10.1002/admt.202400037
M3 - Article
AN - SCOPUS:85200459493
SN - 2365-709X
VL - 10
JO - Advanced Materials Technologies
JF - Advanced Materials Technologies
IS - 1
M1 - 2400037
ER -