How Machine Learning Empowers Models for Digital Twins


This article featured in the July 2018 edition of benchmark "Artificial Intelligence & Machine Learning - Believe the Hype?"

Although the component structure of digital twins is not yet defined clearly and can differ drastically from implementation to implementation, we can see that one thing is present everywhere and powers the whole process and that is predictive models. Predictive models are used in the core of almost every digital twin that is already implemented or being developed and by using machine learning to create such models, the full range of data, from all sources, can be used. By predictive model we mean a digital representation of asset’s behavior that not only gives the understanding of the behavior itself but often collects individual changes of the asset and adjusts itself accordingly.

Document Details

Reference

Bm_Jul_18_7

Authors

Frolov. D

Language

English

Type

Magazine Article

Date

2018-07-01

Organisations

Datadvance

Region

Global

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