TOWARDS GLOBAL DIGITAL MODELING OF MANUFACTURING

Gabriel FRUMUŞANU, Alexandru EPUREANU

Abstract


Manufacturing performance is limited by the large variety of models that are used for information processing and by their continuous modification. Research opportunity is brought by manufacturing digitalization, enabling to capitalize on the capabilities of digital technologies, needed for mass personalization in the cloud technology era. Paper addresses the development of a new vision concerning manufacturing modeling, to increase is the manufacturing performance by implementing a global digital model, built on the basis of the manufacturing holonic digitalization. In this purpose, manufacturing is here modeled as decisional, instead of physical process, and as holarchy of decisions, instead of succession of actions. Moreover, the manufacturing model is formalized as open data and not as a data processing algorithm.


Full Text:

PDF

References


Segreto, T., Teti, R. Manufacturing. In the Int. Acad. for Production Engineering, CIRP Encyclopedia of Production Engineering. Springer, Berlin, 2016, 0.1007/978-3-642-35950-7_65 61-4

Frumuşanu, G., Epureanu, A. Architectural Holarchy of the Next Generation Manufacturing System, Int J of Model and Optim, 12(1), 2021, https://doi.org /10.7763 /IJMO.2022.V12.793.

Kalpakjian, S., and Schmid, S.R. Manufacturing Engineering and Technology, Prentice Hall, ISBN 978-0133128741, 2014.

https://www.investopedia.com/terms/m/masscustomization.asp accessed in 21.08.2022.

Chryssolouris, G., Manufacturing Systems – Theory and Practice, Springer Verlag NY, ISBN 978-0387256832, New York, 2005, https://doi. org/10.1007/0-387-28431-1.

Mourtzis, D. Design and Operation of Production Networks for Mass Personalization in the Era of Cloud Technology, Elsevier, ISBN 978-0128236581, 2021.

Wang Y., Ma H. S., Yang, J. H., Wang K. S. Industry 4.0: a way from mass customization to mass personalization production, Adv. Manuf. 5, 2017, https://doi.org/10.1007/s4 0436-017-0204-7.

Frumuşanu, G., Epureanu, A. Holistic Monitoring of Machining System, Int. J Modern Manuf. Technol, IX(2), 2017, https://doi.org /10.54684/ijmmt.2021.13.3.45.

Frumuşanu, G., Afteni, C., Epureanu, A. Data-driven causal modelling of the manufacturing system, Transactions of FAMENA 45(1), 2021, https://doi.org/10. 21278/TOF.451020920.

Afteni, C., Frumuşanu, G. Instance-based comparative assessment with application in manufacturing, IOP Conf. Series: Materials Science and Engineering, 400, 2018, https://doi. org/10.1088/1757-899X/400/4/04 2001.

Ghadami, A., Epureanu, I. B. Data-driven prediction in dynamical systems: recent developments, Philosophical Transactions A 380: The Royal Society Publishing, ISSN 1471-2962, 2022, https://doi.org/10.1098 /rsta.2021.0213.


Refbacks

  • There are currently no refbacks.


JOURNAL INDEXED IN :