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Markov monitoring with unknown states

机译:状态未知的马尔可夫监视

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摘要

Pattern recognition methods and hidden Markov models can be effective tools for online health monitoring of communications systems. Previous work has assumed that the states in the system model are exhaustive. This can be a significant drawback in real-world fault monitoring applications where it is difficult if not impossible to model all the possible fault states of the system in advance. In this paper a method is described for extending the Markov monitoring approach to allow for unknown or novel states which cannot be accounted for when the model is being designed. The method is described and evaluated on data from one of the Jet Propulsion Laboratory's Deep Space Network antennas. The experimental results indicate that the method is both practical and effective, allowing both discrimination between known states and detection of previously unknown fault conditions.
机译:模式识别方法和隐马尔可夫模型可以成为通信系统在线健康监控的有效工具。先前的工作假设系统模型中的状态是详尽的。这在现实世界中的故障监视应用程序中可能是一个重大缺陷,在这种情况下,即使不是不可能,也很难事先对系统的所有可能故障状态进行建模。在本文中,描述了一种扩展马尔可夫监视方法的方法,以允许在设计模型时无法考虑的未知或新颖状态。描述了该方法,并根据来自喷气推进实验室的深空网络天线之一的数据进行了评估。实验结果表明,该方法既实用又有效,既可以区分已知状态,也可以检测先前未知的故障情况。

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