基于通配符N-gram模型的随机离散事件系统诊断

K. Hiraishi, Miwa Yoshimoto, Koichi Kobayashi
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引用次数: 4

摘要

本文提出了一种随机离散事件系统诊断的新方法。我们正在开发一种基于N-gram模型的方法,称为序列分析。序列分析所需的信息只是来自目标系统的事件日志。从正常情况下的事件日志出发,通过简单的统计分析,构建N-gram模型。基于N-gram模型,诊断者估计系统中发生了什么类型的故障,或者可能得出没有发生故障的结论。当目标系统是由多个子系统组成的分布式系统时,来自子系统的事件序列可能会交错,该方法无法将子系统的事件序列与局部事件序列分离开来。为了改善这种情况,我们在n -gram中使用的短序列中引入了通配符。这有助于消除可能与故障无关的子系统的影响。在多处理器系统故障诊断中的应用验证了该方法的有效性。
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Diagnosis of stochastic discrete event systems based on N-gram models with wildcard characters
In this paper, a new approach to the diagnosis of stochastic discrete event system is presented. We are developing a method, called sequence profiling, based on N-gram models. The information necessary for sequence profiling is only event logs from the target system. From event logs in the normal situation, N-gram models are constructed through a simple statistical analysis. Based on the N-gram model, the diagnoser estimates what kind of faults has occurred in the system, or may conclude that no faults occurs. When the target system is a distributed system consisting of several subsystems, event sequences from subsystems may be interleaved and the method cannot separate the event sequence from local event sequences by subsystems. To improve this situation, we introduce the wildcard characters in the short sequences used in the N-grams. This contributes to removing the effect by subsystems which may not be related to faults. Effectiveness of the proposed approach is demonstrated by application to fault diagnosis of a multi-processor system.
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