An intelligent fault diagnosis method for rotating machinery under time-varying speed

A technology for rotating machinery and fault diagnosis, which is applied in the testing of mechanical components, testing of machine/structural components, instruments, etc. It can solve problems such as fault diagnosis that cannot be solved by deep learning methods, and achieve the effect of improving generalization ability

Active Publication Date: 2022-01-28
江苏天沃重工科技有限公司
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Problems solved by technology

[0002] In the current research on fault diagnosis of rotating machinery, machine learning methods are mainly used for intelligent adaptive diagnosis. In recent years, the deep learning method has been widely used with stronger fault classification performance, but the existing intelligent adaptive diagnosis method It has a good application mainly in the fault diagnosis of rotating machinery under constant working conditions, but there are few related studies on the fault diagnosis of rotating machinery under variable speed conditions, especially under the condition of irregular speed and time-varying, the deep learning method cannot solve the problem. Troubleshooting Problems

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  • An intelligent fault diagnosis method for rotating machinery under time-varying speed
  • An intelligent fault diagnosis method for rotating machinery under time-varying speed
  • An intelligent fault diagnosis method for rotating machinery under time-varying speed

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Embodiment Construction

[0076] The present invention will be further described below in conjunction with the accompanying drawings.

[0077] Such as figure 1 As shown, the intelligent fault diagnosis method for rotating machinery under time-varying speed combines keyless phase order tracking with deep learning methods to realize self-adaptive intelligent fault diagnosis and identification of rotating machinery under variable speed conditions, which specifically includes the following steps:

[0078] Step 1: Use the acceleration sensor to collect the vibration signal of the bearing;

[0079] Step 2: Perform Gabor expansion on the collected signal to obtain a Gabor time-frequency diagram;

[0080] Step 3: Select an obvious order component in the Gabor time-frequency diagram, place control points on its ridge line, connect the control points with a straight line, obtain the filter center frequency line by linear interpolation, and calculate the filter neighborhood;

[0081] Step 4: Obtain the Gabor co...

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Abstract

The invention discloses a method for intelligent fault diagnosis of rotating machinery under time-varying rotational speed. By resampling the time-domain vibration signal of a rolling bearing in the angular domain, the non-stationary time-domain signal is converted into a stable angular-domain signal, which can eliminate the variation of the rotational speed. The impact on the analysis of vibration signals; the Gabor transform that can well describe the transient characteristics of the sharply changing signal is used for the speed estimation method based on time-spectrum ridge fitting; the keyless phase order tracking without installing the speed sensor is adopted The method can be applied to occasions where the speed sensor cannot be installed; the LSTM model that can adaptively extract time series features without expert experience and domain knowledge is used, and the existence of the BN generalization layer can speed up the convergence of the model and prevent overfitting and improve the model. Its generalization ability realizes self-adaptive intelligent fault diagnosis and identification of rotating machinery under variable speed conditions.

Description

technical field [0001] The invention relates to a mechanical fault diagnosis method, in particular to an intelligent fault diagnosis method for rotating machinery under time-varying rotating speed conditions lacking expert experience and prior domain knowledge, and belongs to the technical field of mechanical fault detection and diagnosis. Background technique [0002] In the current research on fault diagnosis of rotating machinery, machine learning methods are mainly used for intelligent adaptive diagnosis. In recent years, the deep learning method has been widely used with stronger fault classification performance, but the existing intelligent adaptive diagnosis method It has a good application mainly in the fault diagnosis of rotating machinery under constant working conditions, but there are few related studies on the fault diagnosis of rotating machinery under variable speed conditions, especially under the condition of irregular speed and time-varying, the deep learnin...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G01M13/028
CPCG01M13/028
Inventor 王鹏李庆孙益群王忠利孙晋明
Owner 江苏天沃重工科技有限公司
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