A Framework for the Network-Based Assessment of System Dynamic Resilience

IF 5.7 2区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE Transactions on Reliability Pub Date : 2024-03-18 DOI:10.1109/TR.2024.3371215
Huixiong Wang;Xing Pan;Zeqing Liu;Yuheng Dang;Dongpao Hong
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Abstract

In recent years, network-based resilience assessment has aroused attention because of its strong link to the stability and dependability of complex systems. Previous network-based studies have contributed to the definition and quantification of system resilience, but an integral and consistent framework is still lacking for the procedure of resilience analysis for general complex systems, and system responses and strains induced by multiple rounds of disruptions have not been well studied. In this manuscript, dynamic resilience is defined as a system's ability to resist loss of resilience and to adapt to successive resilience processes. We employ a four-factor measurement system, instead of a single-factor measurement, for the resilience analysis. A comprehensive framework for resilience assessment is proposed for dynamic resilience modeling in general complex systems to address various concerns in complex systems. A case study demonstrates the application of the proposed framework by simulating disruption intensity and recovery volume on a model communication system. We find that the assessment of dynamic resilience produces distinct results for different resilience aspects, while optimizations can help us identify solutions when all resilience factors are stabilized in the long-term dynamic resilience process. The dependability of the simulation results is verified using noise techniques in signal processing.
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基于网络的系统动态复原力评估框架
近年来,基于网络的弹性评估因其与复杂系统的稳定性和可靠性密切相关而引起了人们的关注。以往基于网络的研究对系统弹性的定义和量化做出了贡献,但对于一般复杂系统的弹性分析过程,仍然缺乏一个完整和一致的框架,对多轮中断引起的系统响应和应变的研究还不够深入。在本文中,动态弹性被定义为系统抵抗弹性丧失和适应连续弹性过程的能力。我们采用四因素测量系统,而不是单因素测量,弹性分析。为解决复杂系统中存在的各种问题,提出了一种综合的弹性评估框架,用于一般复杂系统动态弹性建模。一个案例研究通过模拟一个模型通信系统的中断强度和恢复量来演示所提出的框架的应用。研究发现,动态弹性的评估对弹性的不同方面产生了不同的结果,而优化可以帮助我们在长期的动态弹性过程中找到所有弹性因素稳定的解决方案。利用噪声技术对信号进行处理,验证了仿真结果的可靠性。
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来源期刊
IEEE Transactions on Reliability
IEEE Transactions on Reliability 工程技术-工程:电子与电气
CiteScore
12.20
自引率
8.50%
发文量
153
审稿时长
7.5 months
期刊介绍: IEEE Transactions on Reliability is a refereed journal for the reliability and allied disciplines including, but not limited to, maintainability, physics of failure, life testing, prognostics, design and manufacture for reliability, reliability for systems of systems, network availability, mission success, warranty, safety, and various measures of effectiveness. Topics eligible for publication range from hardware to software, from materials to systems, from consumer and industrial devices to manufacturing plants, from individual items to networks, from techniques for making things better to ways of predicting and measuring behavior in the field. As an engineering subject that supports new and existing technologies, we constantly expand into new areas of the assurance sciences.
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