机器诊断的动态贝叶斯网络:层次隐马尔可夫模型与竞争学习

F. Camci, R. Chinnam
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引用次数: 30

摘要

机械系统的失效机制通常包括几种退化的健康状态。跟踪机器的健康状态(即使机器正常工作)对于检测、识别和定位故障(即诊断)以及估计组件/机器的剩余使用寿命(即预测)以进行适当维护非常关键。隐马尔可夫模型(HMM)为我们提供了一个利用可观测传感器信号估计这些不可观测健康状态的机会。分层HMM以分层的方式由子HMM组成,为复杂系统的建模提供了超越HMM的功能。基于HMM的模型作为动态贝叶斯网络(DBN)的实现有助于紧凑的表示以及关于模型结构的额外灵活性。本文采用规则和分层hmm来在线估计钻头在数控钻床上使用时的健康状态。在常规HMM的情况下,每个HMM(是委员会的一部分)竞争代表不同的健康状态,并通过竞争学习进行学习。在分层hmm的情况下,健康状态表示为层次结构顶部的不同节点。本文报道了规则hmm和分层hmm的详细结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Bayesian networks for machine diagnostics: hierarchical hidden Markov models vs. competitive learning
The failure mechanisms of mechanical systems usually involve several degraded health states. Tracking the health state of a machine, even if the machine is working properly, is very critical for detecting, identifying, and localizing the failure (i.e., diagnosis) and estimating the remaining-useful-life of the component/machine (i.e., prognosis) for carrying out proper maintenance. Hidden Markov models (HMM) present us an opportunity to estimate these unobservable health states using observable sensor signals. Hierarchical HMM is composed of sub-HMMs in a hierarchical fashion, providing functionality beyond a HMM for modeling complex systems. Implementation of HMM based models as dynamic Bayesian networks (DBN) facilitates compact representation as well as additional flexibility with regard to model structure. Regular and hierarchical HMMs are employed here to estimate on-line the health state of drill-bits as they deteriorate with use on a CNC drilling machine. In the case of regular HMMs, each HMM (that is part of a committee) competes to represent a distinct health state and learns through competitive learning. In the case of hierarchical HMMs, health states are represented as distinct nodes in the top of the hierarchy. Detailed results from regular and hierarchical HMMs are very promising and are reported in this paper.
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