Abstract
The basic principles and stages employed in the creation of digital twins are investigated. At manufacturing enterprises, digital twins permit increase in productivity, efficient resource use, decrease in costs at all stages of the product life cycle, the creation of new products, and reworking of the organization’s business model. Management of industrial systems on the basis of digital twins is associated with the development of high-level models, taking account of the available experience regarding the introduction and creation of digital technologies.
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Kuftinova, N.G., Ostroukh, A.V., Maksimychev, O.I. et al. Digital Twins in Smart Data Management at a Manufacturing Enterprise. Russ. Engin. Res. 42, 162–164 (2022). https://doi.org/10.3103/S1068798X22020149
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DOI: https://doi.org/10.3103/S1068798X22020149