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Finding faults: A scoping study of fault diagnostics for Industrial Cyber-Physical Systems

机译:寻找故障:工业网络物理系统故障诊断的范围研究

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Context: As Industrial Cyber-Physical Systems (iCPS) become more connected and widely-distributed, often operating in safety-critical environments, we require innovative approaches to detect and diagnose the faults that occur in them. Objective: We profile fault identification and diagnosis techniques employed in the aerospace, automotive, and industrial control domains. Each of these sectors has adopted particular methods to meet their differing diagnostic needs. By examining both theoretical presentations as well as case studies from production environments, we present a profile of the current approaches being employed and identify gaps. Methodology: A scoping study was used to identify and compare fault detection and diagnosis methodologies that are presented in the current literature. We created categories for the different diagnostic approaches via a pilot study and present an analysis of the trends that emerged. We then compared the maturity of these approaches by adapting and using the NASA Technology Readiness Level (TRL) scale. Results: Fault identification and analysis studies from 127 papers published from 2004 to 2019 reveal a wide diversity of promising techniques, both emerging and in-use. These range from traditional Physics-based Models to Data-Driven Artificial Intelligence (AI) and Knowledge-Based approaches. Hybrid techniques that blend aspects of these three broad categories were also encountered. Predictive diagnostics or prognostics featured prominently across all sectors, along with discussions of techniques including Fault trees, Petri nets and Markov approaches. We also profile some of the techniques that have reached the highest Technology Readiness Levels, showing how those methods are being applied in real-world environments beyond the laboratory. Conclusions: Our results suggest that the continuing wide use of both Model-Based and Data-Driven AI techniques across all domains, especially when they are used together in hybrid configuration, reflects the complexity of the current ICPS application space. While creating sufficiently-complete models is labor intensive, Model-free AI techniques were evidenced as a viable way of addressing aspects of this challenge, demonstrating the increasing sophistication of current machine learning systems. Connecting ICPS together to share sufficient telemetry to diagnose and manage faults is difficult when the physical environment places demands on ICPS. Despite these challenges, the most mature papers present robust fault diagnosis and analysis techniques which have moved beyond the laboratory and are proving valuable in real-world environments.
机译:背景信息:由于工业网络物理系统(ICP)变得更加联系和广泛分布,通常在安全关键环境中运行,我们需要创新的方法来检测和诊断它们中发生的故障。目的:我们在航空,汽车和工业控制领域采用故障识别和诊断技术。这些部门中的每一个都采用了特定的方法来满足其不同的诊断需求。通过检查理论介绍以及生产环境的案例研究,我们提出了正在采用的目前方法和识别间隙的轮廓。方法论:用于识别和比较当前文献中呈现的故障检测和诊断方法的范围。我们通过试点研究为不同的诊断方法创建了类别,并对出现的趋势进行了分析。然后,我们通过调整和使用美国国家航空航天局技术准备水平(TRL)规模来比较这些方法的成熟度。结果:从2004年到2019年发布的127篇论文的故障识别和分析研究揭示了广泛的有希望技术的多样性,包括新兴和使用。这些范围从基于传统的物理学模型到数据驱动的人工智能(AI)和基于知识的方法。还遇到了混合这三个广泛类别的方面的混合技巧。在所有部门突出的预测性诊断或预测,以及对包括故障树,培养网和马尔可夫方法的技术的讨论。我们还介绍了一些达到最高技术准备水平的技术,展示了这些方法在实验室之外的现实环境中是如何应用的。结论:我们的结果表明,在所有域中继续使用基于模型和数据驱动的AI技术,特别是当它们以混合配置一起使用时,反映了当前ICPS应用空间的复杂性。虽然创造了足够完整的模型是劳动密集型,无模型的AI技术被证明是解决这一挑战的方面的可行方式,展示了当前机器学习系统的增加的复杂程度。将ICP连接在一起以分享足够的遥测,以诊断和管理故障在ICP上的需求需求时很难。尽管存在这些挑战,但最成熟的论文目前存在稳健的故障诊断和分析技术,这些技术已经超越了实验室,并在现实世界环境中证明了有价值的。

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