Air valve fault diagnosis method based on HHT and neural network

A fault diagnosis and neural network technology, applied in biological neural network models, neural architectures, testing of mechanical components, etc., can solve the problem of inability to analyze video characteristics such as instantaneous amplitude and instantaneous frequency, and difficulty in obtaining time-frequency information and frequency amplitude. information, it is difficult to reflect the time-varying and non-stationary characteristics of the signal, etc.

Inactive Publication Date: 2018-04-13
UNIV OF ELECTRONICS SCI & TECH OF CHINA
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Problems solved by technology

However, FFT is only suitable for the analysis of stationary signals, and it is difficult to obtain time-frequency information, frequency and amplitude information, including some instantaneous frequency information, when analyzing non-stationary signals.
But in fact, transient vibration is very common in the vibration test signals of reciprocating compressors, so the traditional time-frequency analysis method cannot analyze video characteristics such as instantaneous amplitude and instantaneous frequency, making it difficult to carry out effective fault diagnosis
Therefore, when performing condition monitoring and fault diagnosis for reciprocating compressors, it is difficult to extract signal fault features.
Traditional signal analysis techniques, such as spectrum analysis and wavelet analysis based on Fourier transform, are difficult to reflect the time-varying and non-stationary characteristics of the signal.

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  • Air valve fault diagnosis method based on HHT and neural network
  • Air valve fault diagnosis method based on HHT and neural network
  • Air valve fault diagnosis method based on HHT and neural network

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Embodiment Construction

[0017] In order to make the object, technical solution and advantages of the present invention more clear, the present invention will be further described below in conjunction with the accompanying drawings and specific embodiments.

[0018] A kind of compressor valve fault diagnosis method based on HHT feature extraction and RBF neural network provided by the present invention, the flow chart of this method is as follows figure 1 shown, including the following steps:

[0019] Step 1: Use the truncated matrix singular value decomposition method to perform noise reduction preprocessing on the collected vibration signals of the compressor valve under normal and fault conditions. The noise reduction results of one cycle (0.12s) in four working states of the air valve are as follows: figure 2 shown. The specific process is as follows:

[0020] Step 1.1: Select the vibration data of the reciprocating compressor, including normal working state data and three common fault state d...

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Abstract

The invention discloses a compressor air valve fault diagnosis method based on HHT (Hilbert-Huang Transformation) and an RBF (radial basis function) neural network. Based on preprocessing of a vibration signal through interceptive matrix singular value decomposition, HHT is utilized to perform decomposition and time-frequency analysis on the signal, and then the RBF network is utilized to train and recognize fault sample features. The method comprises the steps that 1, interceptive matrix singular value decomposition is utilized to perform denoising preprocessing on vibration signals generatedwhen an air valve is in a normal state and in a fault state; 2, an HHT algorithm is utilized to obtain EMD (Empirical Mode Decomposition) results and Hilbert marginal spectra under various states after denoising; 3, based on the EMD results and the Hilbert marginal spectra, feature vectors of the air valve under all the operating states are extracted, and normalization processing is performed; and 4, the RBF network is utilized to train feature samples under all the states. Test samples are recognized, and the effectiveness of the method on air valve fault diagnosis is verified.

Description

technical field [0001] The invention relates to a gas valve fault diagnosis technology of a reciprocating compressor, in particular to a gas valve fault diagnosis method based on HHT and RBF neural network. Background technique [0002] The reciprocating mechanical structure is complex, and its pistons, connecting rods, air valves and other components are prone to failures, among which the failures of the air valves are frequent and there are many types of failures. Taking a reciprocating compressor as an example, the healthy operation of the valve directly affects the displacement, power consumption and reliability of the compressor. The air valve can be divided into suction valve and exhaust valve. Every time the piston reciprocates up and down, the suction valve and the exhaust valve are opened and closed once, so that the compressor can complete the working process of suction, compression, and exhaust. Because the air valve moves a lot and bears complex force during the...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F17/50G06N3/04G01M13/00
CPCG01M13/00G06F30/20G06N3/045
Inventor 邵继业谢昭灵
Owner UNIV OF ELECTRONICS SCI & TECH OF CHINA
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