INTEGRATION OF ARTIFICIAL INTELLIGENCE IN THE 3D PRINTING PROCESS. LITERATURE REVIEW

Dana COJOCARU (căs. DASCAL), Angela REPANOVICI, Cornel DRUGĂ, Santiago Ferrandiz BOU

Abstract


This study provides a comprehensive literature review on the integration of artificial intelligence (AI) into the 3D printing workflow. It specifically investigates AI's contribution to parameter optimization, product quality enhancement, and waste reduction. The methodology for selecting pertinent research is detailed, involving an analysis of scientific articles and patents that address the advantages and disadvantages of AI integration in 3D printing. Finally, it identifies a path for future research to further improve the efficiency of 3D printing.

Full Text:

PDF

References


Ree, B.J., Critical review and perspectives on recent progresses in 3D printing processes, materials, and applications. Polymer, Vol. 308, Articol Nr. 127384, 2024.

Hassan, M., Misra, M., Taylor, G.W., Mohanty, A.K., A review of AI for optimization of 3D printing of sustainable polymers and composites. Composites Part C: Open Access, Vol. 15, Articol Nr. 100513, 2024

Siemasz, R., Tomczuk, K., Malecha, Z., 3D Printing with Robotic arm with Artificial Intelligence elements, Procedia Computer Science, vol. 176, pp. 3741–3750, 2020.

Straub, J., Initial work on the characterization of additive manufacturing (3D printing) using software image analysis, Machines, vol. 3, no. 2, pp. 55–71, 2015.

Xiaoyong, T., Lingling, W., Xinyun, C., Tengfei, L. Dichen, L., Continuous fiber 3D printing process monitoring method based on artificial intelligence image recognition, CN115457476A.

Howard, C., Brent, C., Sharma, B.K., Digital-twin-enabled artificial intelligence system for distributed additive manufacturing, US20230236552A1.

Pinskiy, V., Putman, M.C., Limoge, D., Raghav, A., Eswaran, N., Systems, methods, and media for artificial intelligence process control in additive manufacturing, US11731368B2.

Delli, U., Chang, S., Automatic process Monitoring in 3D Printing using supervised Machine learning, Procedia Manufacturing, vol. 26, pp. 865–870, 2018.

Alexander, A., Perez, C., Haid, M., Doll, M.P., Pieper, F.W., Automatic process control of additive manufacturing device, CA2919508C.

W. Matusik, D. Chen (Inkbit LLC), Intelligent additive manufacturing, US11347908B2.

Z. Guo, J. Que, 3D printing training database construction method based on an artificial intelligence technology, CN109814817A.

I. Rojek, T. Marciniak, D. Mikołajewski, Digital twins in 3D printing processes using artificial intelligence, Electronics, vol. 13, no. 17, p. 3550, 2024.

H. Zhang, P. Guo, J. Ji, X. An, Optimization method of FFF 3D printing process based on analog simulation and artificial intelligence, CN117875158A.

J. Que, Z. Guo, J. Yao, 3D printing process parameter optimization method based on an artificial intelligence technology, CN109800533A.

J. Wang, N. Zhang, K. Liang, Artificial intelligence based automatic calibration method for 3D printing micro-nano device, CN111113903A.

X. Wang, Y. Han, J. Zhu, Z. Zhou, W. Zhou, Q. Guo, C. Guo, J. Guo, 3D printing control method and system based on artificial intelligence, CN118155120A.

S.L. Un, J. Huang, 3D printing automation control system based on artificial intelligence, Procedia Computer Science, vol. 247, pp. 477–484, 2024.

M.C. Putman, V. Pinskiy, J. Williams III, D. Limoge, A.R. Nirmaleswaran, M. Chris, Systems, methods, and media for artificial intelligence feedback control in additive manufacturing, CN112118949B; US10518480B2.


Refbacks

  • There are currently no refbacks.


JOURNAL INDEXED IN :