Learning Chronicles Signing Multiple Scenario Instances

A. Subias, L. Travé-Massuyès, Euriell Le Corronc
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引用次数: 22

Abstract

Chronicle recognition is an efficient and robust method for fault diagnosis. The knowledge about the underlying system is gathered in a set of chronicles, then the occurrence of a fault is diagnosed by analyzing the flow of observations and matching this flow with a set of available chronicles. The chronicle approach is very efficient as it relies on the direct association of the symptom, which is in this case a complex temporal pattern, to a situation. Another advantage comes from the efficiency of recognition engines which make chronicles suitable for one-line operation. However, there is a real bottleneck for obtaining the chronicles. In this paper, we consider the problem of learning the chronicles. Because a given situation often results in several admissible event sequences, our contribution targets an extension to multiple event sequences of a chronicle discovery algorithm tailored for one single event sequence. The concepts and algorithms are illustrated with representative and easy to understand examples.
学习编年史签名多场景实例
时序识别是一种高效、鲁棒的故障诊断方法。关于底层系统的知识被收集到一组历史记录中,然后通过分析观察流并将该流与一组可用的历史记录相匹配来诊断故障的发生。编年史方法非常有效,因为它依赖于症状的直接联系,在这种情况下,症状是一种复杂的时间模式。另一个优势来自于识别引擎的效率,它使得编年史适合一行操作。然而,获取编年史有一个真正的瓶颈。在本文中,我们考虑了学习编年史的问题。由于给定的情况通常会导致几个可接受的事件序列,因此我们的贡献目标是扩展为单个事件序列量身定制的历史记录发现算法的多个事件序列。用具有代表性和易于理解的例子说明了这些概念和算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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