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Study of Fault Diagnosis Based On Manifold Learning

机译:基于流形学习的故障诊断研究

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Characteristic signals in rotating machinery fault diagnosis with the issues of complex and difficult to deal with, while the use of non-linear manifold learning method can effectively extract low-dimensional manifold characteristics embedded in the high-dimensional non-linear data. It greatly maintains the overall geometric structure of the signals and improves the efficiency and reliability of the rotating machinery fault diagnosis. According to the development prospects of manifold learning, this paper describes four classical manifold learning methods and each advantages and disadvantages. It reviews the research status and application of fault diagnosis based on manifold learning, as well as future direction of researches in the field of manifold learning fault diagnosis.
机译:旋转机械故障诊断的特征信号与复杂且难以处理的问题,而非线性歧管学习方法的使用可以有效地提取嵌入在高维非线性数据中的低维歧管特性。它极大地保持了信号的整体几何结构,提高了旋转机械故障诊断的效率和可靠性。根据流形学习的发展前景,本文介绍了四种经典的流形学习方法和每个优点和缺点。基于流形学习的故障诊断研究现状和应用,以及歧管学习故障诊断领域的未来研究方向。

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