预训练、提示和转移:用于网络物理系统中时间到事件分析的进化数字双胞胎

IF 6.5 1区 计算机科学 Q1 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Qinghua Xu;Tao Yue;Shaukat Ali;Maite Arratibel
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引用次数: 0

摘要

网络物理系统(CPS),如电梯和自动驾驶系统,正逐渐渗透到我们的日常生活中。为确保其安全性,需要进行各种分析,如异常检测和时间到事件分析(本文的重点)。最近,人们普遍认为数字孪生(DTs)是帮助开发、维护和安全运行 CPS 的有效方法。然而,CPS 经常会发生进化,例如新增或更新功能,这就要求相应的 DTs 与 CPS 同步进化。为此,我们提出了一种名为 PPT 的新方法,利用不确定性感知迁移学习来实现 DT 演化。具体来说,我们首先使用预训练数据集对 PPT 进行预训练,以获取有关 CPS 的通用知识,然后在及时调整的帮助下将其适应于特定的 CPS。实验结果表明,在电梯和自动驾驶案例研究中,PPT 都能有效地进行时间到事件分析,在 Huber 损失方面分别比基线方法高出 7.31 和 12.58。实验结果还肯定了迁移学习、及时调整和不确定性量化的有效性,在这两个案例研究中,迁移学习、及时调整和不确定性量化分别将 Huber 损失减少了至少 21.32、3.14 和 4.08。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pretrain, Prompt, and Transfer: Evolving Digital Twins for Time-to-Event Analysis in Cyber-Physical Systems
Cyber-physicalnd systems (CPSs), e.g., elevators and autonomous driving systems, are progressively permeating our everyday lives. To ensure their safety, various analyses need to be conducted, such as anomaly detection and time-to-event analysis (the focus of this paper). Recently, it has been widely accepted that digital Twins (DTs) can be an efficient method to aid in developing, maintaining, and safe and secure operation of CPSs. However, CPSs frequently evolve, e.g., with new or updated functionalities, which demand their corresponding DTs be co-evolved, i.e., in synchronization with the CPSs. To that end, we propose a novel method, named PPT , utilizing an uncertainty-aware transfer learning for DT evolution. Specifically, we first pretrain PPT with a pretraining dataset to acquire generic knowledge about the CPSs, followed by adapting it to a specific CPS with the help of prompt tuning. Results highlight that PPT is effective in time-to-event analysis in both elevator and autonomous driving case studies, on average, outperforming a baseline method by 7.31 and 12.58 in terms of Huber loss, respectively. The experiment results also affirm the effectiveness of transfer learning, prompt tuning, and uncertainty quantification in terms of reducing Huber loss by at least 21.32, 3.14, and 4.08, respectively, in both case studies.
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来源期刊
IEEE Transactions on Software Engineering
IEEE Transactions on Software Engineering 工程技术-工程:电子与电气
CiteScore
9.70
自引率
10.80%
发文量
724
审稿时长
6 months
期刊介绍: IEEE Transactions on Software Engineering seeks contributions comprising well-defined theoretical results and empirical studies with potential impacts on software construction, analysis, or management. The scope of this Transactions extends from fundamental mechanisms to the development of principles and their application in specific environments. Specific topic areas include: a) Development and maintenance methods and models: Techniques and principles for specifying, designing, and implementing software systems, encompassing notations and process models. b) Assessment methods: Software tests, validation, reliability models, test and diagnosis procedures, software redundancy, design for error control, and measurements and evaluation of process and product aspects. c) Software project management: Productivity factors, cost models, schedule and organizational issues, and standards. d) Tools and environments: Specific tools, integrated tool environments, associated architectures, databases, and parallel and distributed processing issues. e) System issues: Hardware-software trade-offs. f) State-of-the-art surveys: Syntheses and comprehensive reviews of the historical development within specific areas of interest.
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