基于序列概率比检验的齿轮裂纹故障诊断

Hanxin Chen, Yunfei Shang, Chanli Ke, Kui Sun
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引用次数: 1

摘要

提出了一种基于序列假设检验的故障状态识别新方法,该方法可以使识别系统利用现有数据自适应智能地查询传播信道。利用测量数据在时域的峰度来设计故障状态识别传播通道中的数据波形。序贯假设检验框架是在有足够信心做出艰难决策时提出的。通道识别的显著特征是它在一个闭环中运行,并根据其对通道的不断变化的理解进行不断优化。齿轮箱故障状态识别是基于实测数据更新多个目标假设/类别,随着类别概率的变化定制波形,并在对传播通道有充分了解后得出结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault diagnosis of gear crack based on sequential probability ratio test
A novel method for the fault condition recognition in which the recognition system may adaptively and intelligently interrogate a propagation channel by using the available data is proposed based on sequential hypothesis testing. The waveform of the data in the propagation channel for the fault condition recognition is designed with the Kurtosis of the measured data in time domain. The sequential hypothesis testing framework is proposed when hard decisions are made with adequate confidence. The distinguished characteristic of the channel recognition is that it operates in a closed loop and makes constant optimization in response to its changing understanding of the channel. The fault condition recognition of the gearbox is to update the multiple target hypothesis/class based on the measured data, customize waveform as the class probabilities changes, and make conclusion when the sufficient understanding of the propagation channel is achieved.
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