School of Design, Engineering and Technology, Mälardalen University, Hamngatan 15, 632 20 Eskilstuna, Sweden.
Philos Trans A Math Phys Eng Sci. 2021 Oct 4;379(2207):20200369. doi: 10.1098/rsta.2020.0369. Epub 2021 Aug 16.
Digital twins (DT) are emerging as an extremely promising paradigm for run-time modelling and performability prediction of cyber-physical systems (CPS) in various domains. Although several different definitions and industrial applications of DT exist, ranging from purely visual three-dimensional models to predictive maintenance tools, in this paper, we focus on data-driven evaluation and prediction of critical dependability attributes such as safety. To that end, we introduce a conceptual framework based on autonomic systems to host DT run-time models based on a structured and systematic approach. We argue that the convergence between DT and self-adaptation is the key to building smarter, resilient and trustworthy CPS that can self-monitor, self-diagnose and-ultimately-self-heal. The conceptual framework eases dependability assessment, which is essential for the certification of autonomous CPS operating with artificial intelligence and machine learning in critical applications. This article is part of the theme issue 'Towards symbiotic autonomous systems'.
数字孪生 (DT) 作为一种极有前途的范例,正在各个领域中涌现,用于实时建模和对网络物理系统 (CPS) 的性能进行预测。尽管 DT 存在几种不同的定义和工业应用,从纯粹的可视化三维模型到预测性维护工具,但在本文中,我们专注于基于数据的关键可靠性属性(如安全性)的评估和预测。为此,我们引入了一个基于自主系统的概念框架,以基于结构化和系统的方法来承载 DT 运行时模型。我们认为,DT 和自适应的融合是构建更智能、更有弹性和更值得信赖的 CPS 的关键,这些 CPS 可以自我监控、自我诊断,并最终自我修复。该概念框架简化了可靠性评估,这对于在关键应用中使用人工智能和机器学习进行自主 CPS 的认证至关重要。本文是主题为“走向共生自主系统”的一部分。