定时故障传播图中的诊断报警序列成熟

S. Strasser, J. Sheppard
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引用次数: 21

摘要

诊断模型的开发提出了一个重大的工程挑战,以确保使用这些模型的后续诊断过程将产生准确的结果。一种开发系统级诊断模型的方法一直受到关注,即由范德比尔特大学开发的定时故障传播图(TFPG)。不幸的是,开发TFPG模型也很困难且容易出错。在本文中,我们扩展了以前的工作,使用历史维护和诊断信息来识别基于tfpga的诊断模型中的潜在错误,并推荐了使这些模型成熟的方法。这是通过扩展成熟过程来合并历史报警序列,并使用概率转移矩阵(类似于马尔可夫链)对这些序列建模来实现的。将结果序列模型与原始TFPG中确定的因果关系进行比较,以发现两者之间的差异。潜在的序列建模错误和建议被反馈给工程师或分析师。我们报告了成熟过程和算法,并提供了初步的实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnostic alarm sequence maturation in timed failure propagation graphs
Diagnostic model development presents a significant engineering challenge to ensure subsequent diagnostic processes using such models will yield accurate results. One approach to developing system-level diagnostic models that has been receiving attention is the Timed Failure Propagation Graph (TFPG), developed at Vanderbilt University. Unfortunately, developing TFPG models is also difficult and error-prone. In this paper, we extend previous work in using historical maintenance and diagnostic information to identify potential errors in the TFPG-based diagnostic models and recommend ways of maturing these models. This is done by extending the maturation process to incorporate historical alarm sequences and to model these sequences using a probabilistic transition matrix (similar to a Markov chain). The resulting sequence model is compared to the causal relationships identified in the original TFPG to discover discrepancies between the two. Potential sequence modeling errors with recommendations are given back to an engineer or analyst. We report on the maturation process and algorithms and also provide preliminary experimental results.
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