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Recognition Method of Partial Discharge Types Based on Synchronous Squeeze Wavelet Transform

A technology of synchronous squeezing wavelet and type identification, which is applied in the direction of measuring electricity, measuring electrical variables, testing dielectric strength, etc., and can solve problems such as unfavorable classification and identification, sub-band spectral aliasing, and poor frequency resolution in high-frequency parts.

Inactive Publication Date: 2021-02-09
WUHAN UNIV OF SCI & TECH
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Problems solved by technology

However, since the wavelet transform only further decomposes the low frequency part, the frequency resolution of the high frequency part is poor
After the PD signal is decomposed by wavelet transform, there are interlaced frequency bands in the amplitude-frequency response curve, and there are often serious spectrum aliasing and energy leakage between the sub-bands. Therefore, the multi-scale feature parameters extracted from the sub-bands decomposed by wavelet transform often cannot accurately describe the PD signal. Time-frequency information is not conducive to subsequent classification and identification

Method used

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  • Recognition Method of Partial Discharge Types Based on Synchronous Squeeze Wavelet Transform
  • Recognition Method of Partial Discharge Types Based on Synchronous Squeeze Wavelet Transform
  • Recognition Method of Partial Discharge Types Based on Synchronous Squeeze Wavelet Transform

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Embodiment Construction

[0058] The specific implementation manners of the present invention will be described below in conjunction with the accompanying drawings.

[0059] Step 1. Decompose 4 typical partial discharge signals of transformers by using synchrosqueezing wavelet transform. Using synchrosqueezing wavelet transform SWT can divide the time-frequency plane accurately and meticulously, and decompose the obtained sub-band signals

[0060] The time-varying signal f(t) can generally be decomposed into a superposition of multiple eigenfunctions, that is, the signal f(t) can be expressed as

[0061]

[0062] In the formula: A k (t) is the instantaneous amplitude of the kth component; A k (t) is the instantaneous amplitude of the kth component, φ k (t) is the instantaneous phase of the kth component; r(t) is noise or error, and K represents the number of components of the signal. The synchro-squeezing wavelet transform effectively extracts the amplitude factor A of each component by refining ...

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Abstract

The present invention provides a partial discharge type identification method based on synchronous squeeze wavelet transform. The purpose is to propose an identification method for partial discharge signals of transformers to realize the identification of transformer partial discharge signals. First, use synchronous squeeze wavelet transform to identify typical The partial discharge signal of the transformer is decomposed; then, using the difference in energy and complexity of the partial discharge signal at different decomposition scales, the multi-scale permutation entropy is used as the feature quantity for the discharge type identification; finally, the extracted feature quantity is classified by the support vector machine The device conducts discharge pattern recognition. The average recognition accuracy rate of the partial discharge signal of the patented method is higher than 90%, which is obviously superior to other commonly used transformer partial discharge recognition methods.

Description

technical field [0001] The invention relates to a partial discharge type identification method based on synchronous squeeze wavelet transform and the field of power system signal processing. Background technique [0002] The power transformer is one of the most critical equipment in the power system, and its safety performance affects the safe and effective operation of the power grid. Partial Discharge (PD) is the main cause of insulation damage to large high-voltage equipment such as power transformers, and different types of partial discharge have different degrees of insulation damage, and their formation mechanisms are also different. Therefore, quickly and accurately identifying different transformer partial discharge types not only provides a solid and powerful basis for subsequent fault location identification, but also has important guiding significance for maintaining the stable and effective operation of the power system. [0003] At present, the methods for dete...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G01R31/12
CPCG01R31/1227
Inventor 王文波晋云雨狄奇赵彦超
Owner WUHAN UNIV OF SCI & TECH
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