A hidden Markov model-based algorithm for online fault diagnosis with partial and imperfect tests

J. Ying, T. Kirubarajan, K. Pattipati, S. Deb
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引用次数: 9

Abstract

Presents a hidden Markov model (HMM) based algorithm for online fault diagnosis in complex large-scale systems with partial and imperfect tests. The HMM-based algorithm handles test uncertainties and inaccuracies, finds the best estimate of system states and identifies the dynamic changes in system states, such as from a fault-free state to a faulty one. We also present two methods to estimate the model parameters, namely the state transition probabilities and the instantaneous probabilities of observed test outcomes, for adaptive fault diagnosis. In order to validate the adaptive parameter estimation techniques, we present simulation results with and without the knowledge of HMM parameters. In addition, the advantages of using the HMM approach over a Hamming-distance based fault diagnosis technique are quantified. Tradeoffs in complexity versus performance of the diagnostic algorithm are discussed.
基于隐马尔可夫模型的部分和不完全测试在线故障诊断算法
提出了一种基于隐马尔可夫模型(HMM)的在线故障诊断算法。基于hmm的算法处理测试的不确定性和不准确性,找到系统状态的最佳估计,并识别系统状态的动态变化,例如从无故障状态到故障状态。我们还提出了两种估计模型参数的方法,即状态转移概率和观察到的测试结果的瞬时概率,用于自适应故障诊断。为了验证自适应参数估计技术,我们给出了具有和不具有HMM参数的仿真结果。此外,还量化了HMM方法相对于基于汉明距离的故障诊断技术的优势。讨论了诊断算法的复杂性与性能之间的权衡。
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