基于贝叶斯网络的PLC系统可靠性分析

Hehua Zhang, Yu Jiang, X. Jiao, Xiaoyu Song, W. Hung, M. Gu
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引用次数: 2

摘要

可靠性分析在安全关键型可编程控制器(PLC)系统的生命周期中具有重要意义。PLC系统可靠性分析的复杂性在于处理硬件组件与嵌入式软件之间的复杂关系。不同的嵌入式软件可能导致不同的硬件执行安排和不同的系统可靠性量。本文提出了一种新的概率模型,称为混合关系模型(HRM),用于PLC系统的可靠性分析。它是基于硬件组件的分布和嵌入式软件的执行逻辑来构建的。我们将硬件组件映射到人力资源管理节点,并将其故障概率嵌入到人力资源管理节点的条件概率分布表中。然后,HRM模型利用贝叶斯网络的计算机制,处理各硬件部件的故障概率以及嵌入式软件执行逻辑导致的复杂关系。实验结果证明了模型的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reliability Analysis of PLC Systems by Bayesian Network
Reliability analysis is important in the life cycle of safety critical Programmable Logic Controller (PLC) system. The complexity of PLC system reliability analysis arises in handling the complex relations between hardware components and embedded software. Different embedded software may lead to different arrangements of hardware execution and different system reliability quantities. In this paper, we propose a novel probabilistic model, named hybrid relation model (HRM), for the reliability analysis of PLC systems. It is constructed based on the distribution of the hardware components and the execution logic of the embedded software. We map the hardware components to the HRM nodes and embed the failure probabilities of them into the well defined conditional probability distribution tables of the HRM nodes. Then, HRM model handles the failure probability of each hardware component as well as the complex relations caused by the execution logic of the embedded software, with the computational mechanism of Bayesian Network. Experiment results demonstrate the accuracy of our model.
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