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Digital Twins: State of the Art Theory and Practice, Challenges, and Open Research Questions (2011.02833v3)

Published 2 Nov 2020 in cs.LG and cs.SE

Abstract: Digital Twin was introduced over a decade ago, as an innovative all-encompassing tool, with perceived benefits including real-time monitoring, simulation and forecasting. However, the theoretical framework and practical implementations of digital twins (DT) are still far from this vision. Although successful implementations exist, sufficient implementation details are not publicly available, therefore it is difficult to assess their effectiveness, draw comparisons and jointly advance the DT methodology. This work explores the various DT features and current approaches, the shortcomings and reasons behind the delay in the implementation and adoption of digital twin. Advancements in machine learning, internet of things and big data have contributed hugely to the improvements in DT with regards to its real-time monitoring and forecasting properties. Despite this progress and individual company-based efforts, certain research gaps exist in the field, which have caused delay in the widespread adoption of this concept. We reviewed relevant works and identified that the major reasons for this delay are the lack of a universal reference framework, domain dependence, security concerns of shared data, reliance of digital twin on other technologies, and lack of quantitative metrics. We define the necessary components of a digital twin required for a universal reference framework, which also validate its uniqueness as a concept compared to similar concepts like simulation, autonomous systems, etc. This work further assesses the digital twin applications in different domains and the current state of machine learning and big data in it. It thus answers and identifies novel research questions, both of which will help to better understand and advance the theory and practice of digital twins.

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Authors (5)
  1. Angira Sharma (5 papers)
  2. Edward Kosasih (2 papers)
  3. Jie Zhang (847 papers)
  4. Alexandra Brintrup (50 papers)
  5. Anisoara Calinescu (16 papers)
Citations (225)

Summary

Analysis of "Digital Twins: State of the Art Theory and Practice, Challenges, and Open Research Questions"

The paper "Digital Twins: State of the Art Theory and Practice, Challenges, and Open Research Questions" provides a comprehensive evaluation of the digital twin (DT) concept, assessing its capabilities, challenges, and potential directions for future research. Through an analytical synthesis of existing literature and observational insights, the authors aim to elucidate the practical and theoretical nuances of digital twins in various domains.

Overview

Digital twins, conceived more than a decade ago, serve as virtual models of physical products, offering substantial benefits, including real-time monitoring, simulation, and forecasting. However, despite the theoretical endorsements and some successful implementations, the universal adoption and advancement of DTs have been hindered by several factors. The authors highlight that the lack of a universal reference framework, domain dependency, security concerns, reliance on other evolving technologies, and the absence of DT performance metrics have slowed progress in adopting this concept.

Key Components of Digital Twins

The authors argue for both a foundational and expansive understanding of the components and properties that constitute a digital twin:

  1. Elementary Components:
    • Physical Asset: The entity being twin.
    • Digital Asset: Its corresponding virtual counterpart.
    • Bidirectional Synchronization: A real-time communication link between the physical and digital entities.
  2. Imperative Components:
    • IoT Devices: Essential for gathering real-time data.
    • Integrated Data for Analytics: Facilitates machine learning applications and predictive analytics.
    • Machine Learning: Engages in continuous system monitoring and decision support.
    • Security Considerations: Ensures data integrity and operational safety.
    • DT Performance Evaluation: Metrics determining the twin's effectiveness.

Domain-Specific Observations

The paper explores the specificity of DTs across domains like aerospace, manufacturing, and health management, asserting that a one-size-fits-all approach is inadequate. Each domain, given its distinctive requirements and operational parameters, demands tailored DT models. The paper observes that complexities, such as the multitude of components in aerospace, necessitate targeted solutions to leverage DT capabilities fully.

Challenges and Limitations

Several technical challenges impede the full realization of DT technologies:

  • Data Handling: High-dimensional, time-continuous data poses storage and processing challenges.
  • Simulation and Optimization: The formulation of joint optimization problems is noted as particularly complex.
  • Security and Interoperability: Regulatory and compliance issues, especially in cross-industry applications, are substantial challenges.
  • Machine Learning Integration: The current literature shows minimal engagement with advanced machine learning solutions, highlighting an area for developmental attention.

Future Directions and Open Questions

The authors identify several open research questions and propose future research directions:

  • Establishing a unified definition and DT standards is essential for broadening its application.
  • Developing robust security frameworks and IoT standards will address prevailing concerns.
  • Performance metrics specific to the domain could aid in effective DT evaluation.
  • The authors advocate for continual collaboration with domain experts, ensuring practical and efficient DT implementations.

Conclusion

The paper presents digital twins as a versatile yet complex tool requiring multidimensional integrations across technologies such as IoT, machine learning, and big data. It acknowledges that while DTs hold significant promise across various domains, realizing their full potential necessitates addressing existing technical barriers. The discourse sets the stage for further studies to address technical, theoretical, and application-specific challenges, thus paving the way for more ubiquitous and effective digital twin solutions.