4.0 Article

FAIR Digital Twins for Data-Intensive Research

期刊

FRONTIERS IN BIG DATA
卷 5, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fdata.2022.883341

关键词

nanopublications; data stewardship; FAIR guiding principles; machine learning; FAIR Digital Twin; FAIR Digital Object; Knowlet; augmented reasoning

资金

  1. Leiden Center of Computational Oncology, an internal grant of the Leiden University Medical Center
  2. NeXON (Next-Generation Ontology-Driven Conceptual Modeling)
  3. UNIBZ-CRC
  4. project Trusted World of Corona, TKI-LSH Healthsimilar toHolland [LSHM20070]

向作者/读者索取更多资源

This article introduces the concept and methodology of Digital Twins (DT) and proposes an architectural design for FAIR Digital Twins (FDT) that supports data intensive research and complies with GDPR requirements for open science.
Although all the technical components supporting fully orchestrated Digital Twins (DT) currently exist, what remains missing is a conceptual clarification and analysis of a more generalized concept of a DT that is made FAIR, that is, universally machine actionable. This methodological overview is a first step toward this clarification. We present a review of previously developed semantic artifacts and how they may be used to compose a higher-order data model referred to here as a FAIR Digital Twin (FDT). We propose an architectural design to compose, store and reuse FDTs supporting data intensive research, with emphasis on privacy by design and their use in GDPR compliant open science.

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