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Fuzzy transition probability: a new method for monitoring progressive faults. Part 1: the theory

机译:模糊转移概率:一种监测渐进式故障的新方法。第1部分:理论

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This paper presents a new method for condition monitoring, especially for monitoring progressive faults such as wear and fatigue. Based on the literature survey, the existing condition monitoring methods are based on either probability or fuzzy logic. The new method, called the fuzzy transition probability (FTP), combines the transition probability (Markov process) as well as the fuzzy set. From a theoretical point of view, the new method uses the available information from the training samples to the maximum extent (finding both the transition probability and the fuzzy membership) and hence, is more effective than the existing methods. This paper is the first part of a two-part paper. It presents the basic theory and shows how to compute the transition probability from the available training samples step by step. A simple demonstration example is also included. The second part of the paper presents two practical applications: one is material tensile strength testing and the other is tool condition monitoring in boring. Based on the testing results, the new method outperforms the popular artificial neural networks. Future research and applications are also discussed.
机译:本文提出了一种状态监测的新方法,特别是用于监测渐进式故障(例如磨损和疲劳)的方法。根据文献调查,现有的状态监视方法基于概率或模糊逻辑。这种称为模糊转移概率(FTP)的新方法结合了转移概率(马尔可夫过程)和模糊集。从理论上讲,新方法最大程度地利用了训练样本中的可用信息(同时找到了转移概率和模糊隶属度),因此比现有方法更有效。本文是两部分的第一部分。它介绍了基本理论,并说明了如何逐步从可用的训练样本中计算过渡概率。还包括一个简单的演示示例。本文的第二部分介绍了两种实际应用:一种是材料抗拉强度测试,另一种是镗孔中的刀具状态监控。根据测试结果,该新方法优于流行的人工神经网络。还讨论了未来的研究和应用。

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