论文标题

数字双胞胎:艺术状态理论和实践,挑战和开放研究问题

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

论文作者

Sharma, Angira, Kosasih, Edward, Zhang, Jie, Brintrup, Alexandra, Calinescu, Anisoara

论文摘要

Digital Twin是十多年前引入的,作为一种创新的全能工具,具有感知的好处,包括实时监控,仿真和预测。但是,数字双胞胎(DT)的理论框架和实际实现远非该愿景。尽管存在成功的实施,但没有公开的实施细节,因此很难评估其有效性,进行比较并共同推进DT方法。这项工作探讨了各种DT功能和当前方法,数字双胞胎实施和采用延迟的缺点和原因。机器学习,物品和大数据的进步在其实时监控和预测属性方面为DT的改进做出了巨大贡献。尽管取得了进展和基于公司的个人努力,但该领域仍然存在某些研究差距,这导致了该概念广泛采用的延迟。我们回顾了相关的作品,并确定了这种延迟的主要原因是缺乏通用的参考框架,域依赖性,共享数据的安全问题,数字双胞胎对其他技术的依赖以及缺乏定量指标。我们定义了通用参考框架所需的数字双胞胎的必要组成部分,该组件与仿真,自主系统等类似概念相比,该框架还可以验证其独特性作为概念。这项工作进一步评估了不同域中的数字双胞胎应用以及机器学习的当前状态和其中的大数据。因此,它回答并确定了新颖的研究问题,这两者都将有助于更好地理解和推进数字双胞胎的理论和实践。

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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