A Formal Condition to Stop an Incremental Automatic Functional Diagnosis

Luca Amati, C. Bolchini, F. Salice, F. Franzoso
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引用次数: 5

Abstract

iAF2D (incremental Automatic Functional Fault Detective) is a methodology for the identification of the faulty component in a complex system using data collected from a test session. It is an incremental approach based on a Bayesian Belief Network, where the model of the system under analysis is extracted from a faulty signature description. iAF2D reduces time, cost and efforts during the diagnostic phase by implementing a step-by-step selection of the tests to be executed from the set of available tests. This paper focuses on the evolution of the BBN nodes probabilities, to define a stop criterion to interrupt the diagnosis process when additional test outcomes would not provide further useful information for identifying the faulty candidate. Methodology validation is performed on a set of experimental results.
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停止增量功能自动诊断的正式条件
iAF2D(增量自动功能故障检测)是一种使用从测试会话中收集的数据来识别复杂系统中故障组件的方法。它是一种基于贝叶斯信念网络的增量方法,从错误的签名描述中提取待分析系统的模型。iAF2D通过从一组可用测试中逐步选择要执行的测试,减少了诊断阶段的时间、成本和工作量。本文的重点是BBN节点概率的演变,以定义一个停止准则,当额外的测试结果不能提供进一步有用的信息来识别错误的候选时,中断诊断过程。对一组实验结果进行了方法学验证。
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