基于不确定性理论的信息物理系统不确定可靠性划分

Si Chen, Guoqi Xie, Renfa Li, Keqin Li
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引用次数: 1

摘要

合理分区是网络物理系统设计的关键问题。传统的CPS划分方法在确定的环境下运行,依赖于参数预估计,但忽略了参数的不确定性,很少考虑可靠性。现有研究提出了一种基于不确定性理论的CPS划分方法,该方法包括参数不确定性和可靠性分析,但只考虑变量的线性不确定性分布,忽略了可靠性的不确定性。本文提出了一种基于不确定性理论的不确定可靠性CPS划分方法。我们把不确定的目标和约束转化为确定的形式;这种转换方法可以应用于所有形式的不确定变量,而不仅仅是线性的。在不确定模型中应用不确定可靠性分析,首次将可靠性的不确定性纳入到CPS划分中,并提出了可靠性增强算法。研究了通过不确定可靠性分析得到的可靠性性能,实验结果表明,不确定系统的可靠性不随任务模块数量的增加而发生显著变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncertainty Theory Based Partitioning for Cyber-Physical Systems with Uncertain Reliability Analysis
Reasonable partitioning is a critical issue for cyber-physical system (CPS) design. Traditional CPS partitioning methods run in a determined context and depend on the parameter pre-estimations, but they ignore the uncertainty of parameters and hardly consider reliability. The state-of-the-art work proposed an uncertainty theory based CPS partitioning method, which includes parameter uncertainty and reliability analysis, but it only considers linear uncertainty distributions for variables and ignores the uncertainty of reliability. In this paper, we propose an uncertainty theory based CPS partitioning method with uncertain reliability analysis. We convert the uncertain objective and constraint into determined forms; such conversion methods can be applied to all forms of uncertain variables, not just for linear. By applying uncertain reliability analysis in the uncertainty model, we for the first time include the uncertainty of reliability into the CPS partitioning, where the reliability enhancement algorithm is proposed. We study the performance of the reliability obtained through uncertain reliability analysis, and experimental results show that the system reliability with uncertainty does not change significantly with the growth of task module numbers.
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