Partial discharge ultrahigh frequency signal blind source separation denoising method based on principal component analysis

A technology of principal component analysis and partial discharge, which is applied in the direction of measuring electricity, measuring electrical variables, and testing dielectric strength, etc., can solve the problems of state recognition accuracy, wavelet basis function, difficulty in determining the number of decomposition layers, and denoising signals that affect the detection effect. Distortion and other problems, to meet the requirements of GIS partial discharge identification and diagnosis, suppress modal aliasing effect, and improve accuracy

Pending Publication Date: 2020-12-01
ELECTRIC POWER RES INST OF STATE GRID ANHUI ELECTRIC POWER
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Problems solved by technology

Due to the complex environment of GIS operation site and the rapid development of communication technology, the obtained UHF signal contains a large amount of environmental white noise, periodic communication noise and random pulse interference noise caused by the action of switching devices, which seriously affects the detection effect and status. Accuracy of recognition
In the existing UHF signal denoising methods, filter methods such as fast Fourier transform, threshold filter and adaptive filter have the problem of denoising signal distortion and loss of important features, and wavelet transform methods have the problem of wavelet Difficult to determine the basis function, the number of decomposition layers, etc., the empirical mode decomposition method has the modal aliasing effect that affects the time-frequency distribution of the signal, and the sparse matrix method has the problem of excessive calculation caused by a large number of matrix operations

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  • Partial discharge ultrahigh frequency signal blind source separation denoising method based on principal component analysis
  • Partial discharge ultrahigh frequency signal blind source separation denoising method based on principal component analysis
  • Partial discharge ultrahigh frequency signal blind source separation denoising method based on principal component analysis

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Embodiment

[0062] Such as figure 1 As shown, a method for blind source separation and denoising of partial discharge UHF signals based on principal component analysis of the present invention comprises the following steps:

[0063] (1) Use the UHF detection method to detect the partial discharge of the gas insulated switchgear, and obtain the original partial discharge UHF signal;

[0064] (2) Perform Ensemble Empirical Mode Decomposition (EEMD) on the partial discharge UHF single-channel detection signal to obtain a limited number of Intrinsic Mode Function (IMF) components;

[0065] (3) Using Principal Component Analysis (PCA) method to perform spatial transformation on the matrix composed of intrinsic mode function components, obtain its eigenvalues ​​and arrange them in order from large to small;

[0066] (4) Analyze the change trend of eigenvalues. When the sum of the current N eigenvalues ​​accounts for more than 98% of the total eigenvalues, it is determined that the number of so...

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Abstract

The invention discloses a partial discharge ultrahigh-frequency signal blind source separation and denoising method based on principal component analysis. The method comprises the following implementation steps of: performing partial discharge detection on gas insulated switchgear by using an ultrahigh-frequency detection method to obtain original partial discharge ultrahigh-frequency signals; performing ensemble empirical mode decomposition on single-channel ultrahigh frequency signals to obtain limited intrinsic mode function components; performing spatial transformation on a matrix formed by the intrinsic mode function components by utilizing principal component analysis to obtain eigenvalues of the intrinsic mode function components, and arranging the eigenvalues from large to small; determining the number of source signals and constructing multi-channel detection signals in a new feature space by analyzing the variation trend of the eigenvalues; and carrying out blind source separation by using a FastICA algorithm based on independent component analysis, and obtaining denoised ultrahigh frequency signals. According to the method, environmental white noise and periodic communication noise can be effectively removed, the denoised signals are closer to noise-free source signals, the calculation amount is small, and the diagnosis accuracy is improved.

Description

technical field [0001] The invention belongs to the technical field of state monitoring and fault diagnosis of electric equipment, and in particular relates to a method for blind source separation and denoising of partial discharge UHF signals based on principal component analysis. Background technique [0002] With the development of power system and technological progress of power equipment, gas insulated switchgear (GIS) has been widely used due to its advantages of compact structure, small footprint and high reliability. According to statistics, insulation faults account for nearly one-half of GIS faults, while other types of faults are often related to insulation aging. When there are insulation defects in GIS, the local electric field near the defects will be distorted and partial discharge will occur, and the insulation aging will be further aggravated. Therefore, it is of great significance to detect partial discharge in GIS. [0003] The UHF method is currently the...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01R31/12G06K9/62
CPCG01R31/1254G06F18/2134G06F18/2135
Inventor 杨为朱太云田宇柯艳国朱胜龙张国宝赵恒阳蔡梦怡陈忠罗沙谢佳李坚林秦少瑞赵常威秦金飞宋东波杨海涛钱宇骋吴杰吴正阳
Owner ELECTRIC POWER RES INST OF STATE GRID ANHUI ELECTRIC POWER
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