Hydraulic pump fault diagnosing method based on LMD-SVD and IG-SVM

A technology of IG-SVM and fault diagnosis, which is applied in the direction of pump testing, liquid variable displacement machinery, machine/engine, etc., can solve the problems that the SVM classification effect is greatly affected, the data type cannot be predicted, and the theoretical guidance is lacking, so as to make up for it. Kernel function type and its parameters are over-dependent, improving classification accuracy, and the effect of high-accuracy fault classification

Inactive Publication Date: 2015-02-25
BEIHANG UNIV
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Problems solved by technology

However, the performance of SVM depends on the choice of kernel function and its parameter setting, and inappropriate kernel function has a great influence on the classification effect of SVM
However, since people cannot predict the type of data in practical applications, the selection of kernel functions mainly depends on subjective experience, lacking systematic and objective theoretical guidance.

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  • Hydraulic pump fault diagnosing method based on LMD-SVD and IG-SVM
  • Hydraulic pump fault diagnosing method based on LMD-SVD and IG-SVM
  • Hydraulic pump fault diagnosing method based on LMD-SVD and IG-SVM

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Embodiment Construction

[0029] The present invention will be further described below in conjunction with the accompanying drawings and specific embodiments.

[0030] A kind of hydraulic pump fault diagnosis method based on LMD-SVD and IG-SVM of the present invention, specifically as follows:

[0031] 1. Local Mean Decomposition

[0032] Local mean decomposition (local mean decomposition, LMD) is a new adaptive time-frequency analysis method proposed by Smith and 2005, which can adaptively decompose nonlinear and non-stationary vibration signals into a series of product functions (product functions) ,PFs), where each PF is the product of an envelope signal and a pure FM signal with instantaneous physical meaning, the envelope signal is the instantaneous amplitude of the PF component, and the PF component can be obtained by using the pure FM signal The instantaneous frequency of , so as to obtain the complete time-frequency distribution of the original signal. Based on a moving average method, LMD sm...

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Abstract

The invention discloses a hydraulic pump fault diagnosing method based on local mean decomposition (LMD), singular value decomposition (SVD) and information-geometric support vector machine (IG-SVM) so as to improve fault diagnosing accuracy in the case of small samples. The LMD, serving as a self-adaptive signal processing method, can decompose original vibration signals of a hydraulic pump into a limited number of signal components in a self-adaptive mode; then, the signal components are processed through the SVD, the data size of the signal components is compressed, and simpler and more stable fault feature vectors are extracted; finally, the fault states of the hydraulic pump are classified through the IG-SVM, and the fault diagnosing accuracy in the case of the small samples is improved. By the adoption of the fault diagnosing method based on the LMD-SVD-IG-SVM, a complete and effective fault diagnosing scheme in the case of the small samples is provided for the hydraulic pump, and the method has good actual engineering application value.

Description

technical field [0001] The present invention relates to the technical field of hydraulic pump fault diagnosis, in particular to a support vector machine (information-geometric support) based on local mean decomposition (local mean decomposition, LMD), singular value decomposition (singular value decomposition, SVD) and information-geometric support Vector machine, IG-SVM) hydraulic pump fault diagnosis method under small sample conditions. Background technique [0002] The hydraulic pump is a key component of the hydraulic system, which has a very important impact on the stable operation of the entire system. Therefore, an efficient hydraulic pump fault diagnosis method is urgently needed. Since the occurrence of hydraulic pump faults is often accompanied by changes in vibration signals, the diagnostic method based on vibration signals is very important and has become one of the hotspots of related research at home and abroad. However, in practical applications, due to the ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): F04B51/00
Inventor 吕琛田野马剑
Owner BEIHANG UNIV
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