用博弈论解决对称比较规则下的故障诊断问题

M. Elhadef
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引用次数: 0

摘要

本文致力于解决对称失效规则下的系统级故障诊断问题。SLD的目的是根据比较不同节点的输出而产生的输入综合征来确定故障节点。对称比较诊断模型假设将任务分配给对节点,并比较这些任务的执行结果。根据节点输出的一致性和不一致性来识别故障节点。假设同时发生故障的最大节点数有一个限制t。在过去的几十年里,各种诊断算法已经被开发出来,但有效识别可诊断系统的故障单元集的问题仍然是一个突出的研究问题。本文提出了一种基于博弈论的基于对称的比较诊断问题的新诊断方法。在这种方法中,通过最大化所有参与者(节点)的收益来识别故障节点。我们使用随机生成的可诊断系统在极限t被设置为接近节点数的极端故障情况下测试了新的诊断方法。大量的仿真结果证明了基于博弈论的诊断算法的有效性,该算法能够在所有故障情况下成功地猜测出所有节点的故障状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Game Theory to Solve the Fault Diagnosis Problem under Symmetric Comparison Rules
In this paper, we contribute in solving the systemlevel fault diagnosis (SLD) problem under the symmetric invalidation rules. The SLD aims at determining faulty nodes based on an input syndrome that is generated comparing the outputs from the different nodes. The symmetric comparison diagnosis model assumes that tasks are assigned to pairs of nodes and the results of executing these tasks are compared. Fault nodes are identified based on the agreements and disagreements among the nodes’ outputs. A limit t is assumed on the maximum number of nodes that can fail simultaneously. Various diagnosis algorithms have been developed in the last decades, but the problem of efficiently identifying the set of faulty units of a diagnosable system remained an outstanding research issue. This work introduces a new diagnosis approach for the symmetricbased comparison diagnosis problem using game theory. In this approach, faulty nodes are identified by maximizing the payoffs of all players (nodes). We have tested the new diagnosis approach using randomly generated diagnosable systems under even extreme faulty situations in which the limit t was set close to the number of nodes. The extensive simulations we have conducted proved the efficiency of the new game-theory-based diagnosis algorithm as it succeeded in guessing the fault status all nodes in all faulty situations.
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