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2021 | OriginalPaper | Chapter

In-Process Digital Monitoring of Additive Manufacturing: Proposed Machine Learning Approach and Potential Implications on Sustainability

Authors : Amal Charles, Mahmoud Salem, Mandaná Moshiri, Ahmed Elkaseer, Steffen G. Scholz

Published in: Sustainable Design and Manufacturing 2020

Publisher: Springer Singapore

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Abstract

Additive Manufacturing (AM) technologies have recently gained significance amongst industries as well as everyday consumers. This is largely due to the benefits that they offer in terms of design freedom, lead-time reduction, mass-customization as well as potential sustainability improvements due to efficiency in resource usage. However, conventional manufacturing industries are reluctant to integrate AM within their established process chains due to the unpredictability of the process and the quality of the final parts that are printed. Conventional manufacturing process have the advantage of decades of research in developing process knowledge and optimization, which culminates in accurate process predictability. This gap in process understanding is one that AM will need to cover in a short time. AM does have the benefit of being a digital manufacturing process and with the adoption of advanced Artificial Intelligence (AI) and Machine Learning (ML) techniques in production lines, there may not have been a better industrial age for its implementation. This paper presents a case for actively developing AM processes using ML. Then a method for in-process monitoring of the printing process is presented and discussed. The main benefit from using the proposed system is an increase in the efficiency and final quality of the parts printed, as a result of which there is an increased efficiency in resource usage due to preventing material loss due to failed builds and defected parts.

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Literature
1.
go back to reference Arumugam, D., Lee, J.K., Saskin, S., Littman, M.L.: %T Deep reinforcement learning from policy-dependent human feedback. (2019). ArXiv abs/1902.04257 Arumugam, D., Lee, J.K., Saskin, S., Littman, M.L.: %T Deep reinforcement learning from policy-dependent human feedback. (2019). ArXiv abs/1902.04257
5.
go back to reference Charles, A., Elkaseer, A., Thijs, L., Scholz, S.G.: Dimensional errors due to overhanging features in laser powder bed fusion parts made of Ti-6Al-4 V. Appl. Sci. 10(7), 2416 (2020)CrossRef Charles, A., Elkaseer, A., Thijs, L., Scholz, S.G.: Dimensional errors due to overhanging features in laser powder bed fusion parts made of Ti-6Al-4 V. Appl. Sci. 10(7), 2416 (2020)CrossRef
6.
go back to reference Christiano, P.F., Leike, J., Brown, T.B., Martic, M., Legg, S., Amodei, D.: Deep reinforcement learning from human preferences. In: NIPS (2017) Christiano, P.F., Leike, J., Brown, T.B., Martic, M., Legg, S., Amodei, D.: Deep reinforcement learning from human preferences. In: NIPS (2017)
8.
go back to reference Elkaseer, A., Mueller, T., Charles, A., Scholz, S.: Digital detection and correction of errors in as-built parts: a step towards automated quality control of additive manufacturing. In: Proceedings WCMNM, Portorož, Slovenia 2018, pp. 389–392. Research Publishing Services, Singapore (2018). https://doi.org/10.3850/978-981-11-2728-1_58 Elkaseer, A., Mueller, T., Charles, A., Scholz, S.: Digital detection and correction of errors in as-built parts: a step towards automated quality control of additive manufacturing. In: Proceedings WCMNM, Portorož, Slovenia 2018, pp. 389–392. Research Publishing Services, Singapore (2018). https://​doi.​org/​10.​3850/​978-981-11-2728-1_​58
10.
go back to reference Fassi, I., Shipley, D.: In: Micro-Manufacturing Technologies and their Applications. Springer Tracts in Mechanical Engineering, 1st edn. Springer, Cham (2017) Fassi, I., Shipley, D.: In: Micro-Manufacturing Technologies and their Applications. Springer Tracts in Mechanical Engineering, 1st edn. Springer, Cham (2017)
13.
go back to reference Jetson, N.: Jetson nano developer kit (2019) Jetson, N.: Jetson nano developer kit (2019)
15.
go back to reference MacGlashan, J, Ho, M.K., Loftin, R., Peng, B., Wang, G., Roberts, D.L., Taylor, M.E., Littman, M.L.: Interactive learning from policy-dependent human feedback. In: Paper presented at the Proceedings of the 34th International Conference on Machine Learning, Proceedings of Machine Learning Research, (2017) MacGlashan, J, Ho, M.K., Loftin, R., Peng, B., Wang, G., Roberts, D.L., Taylor, M.E., Littman, M.L.: Interactive learning from policy-dependent human feedback. In: Paper presented at the Proceedings of the 34th International Conference on Machine Learning, Proceedings of Machine Learning Research, (2017)
17.
go back to reference Moshiri, M., Charles, A., Elkaseer, A., Scholz, S., Mohanty, S., Tosello, G.: An industry 4.0 framework for tooling production using metal additive manufacturing-based first-time-right smart manufacturing system. Procedia CIRP 00, 000–000 (2020) Moshiri, M., Charles, A., Elkaseer, A., Scholz, S., Mohanty, S., Tosello, G.: An industry 4.0 framework for tooling production using metal additive manufacturing-based first-time-right smart manufacturing system. Procedia CIRP 00, 000–000 (2020)
19.
go back to reference Özel, T., Altay, A.: Process monitoring of meltpool and spatter for temporal-spatial modeling of laser powder bed fusion process (2018). 10.1016/j.procir.2018.08.049 Özel, T., Altay, A.: Process monitoring of meltpool and spatter for temporal-spatial modeling of laser powder bed fusion process (2018). 10.1016/j.procir.2018.08.049
21.
go back to reference Solheid, J., Elkaseer, A., Wunsch, T., Charles, A., Seifert, H., Pfleging, W.: Effect of process parameters on surface texture generated by laser polishing of additively manufactured Ti-6Al-4V, vol. 11268. SPIE LASE, SPIE (2020) Solheid, J., Elkaseer, A., Wunsch, T., Charles, A., Seifert, H., Pfleging, W.: Effect of process parameters on surface texture generated by laser polishing of additively manufactured Ti-6Al-4V, vol. 11268. SPIE LASE, SPIE (2020)
Metadata
Title
In-Process Digital Monitoring of Additive Manufacturing: Proposed Machine Learning Approach and Potential Implications on Sustainability
Authors
Amal Charles
Mahmoud Salem
Mandaná Moshiri
Ahmed Elkaseer
Steffen G. Scholz
Copyright Year
2021
Publisher
Springer Singapore
DOI
https://doi.org/10.1007/978-981-15-8131-1_27

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