EEMD-based multi-scale fuzzy entropy OLTC fault diagnosis method

A technology of fault diagnosis and fuzzy entropy, applied in character and pattern recognition, testing of mechanical components, testing of machine/structural components, etc., can solve the problem of affecting the operation of transformers, consuming a lot of manpower, material and financial resources, and finding mechanical faults in time and other problems, to achieve the effect of high accuracy rate of diagnosing mechanical faults, good anti-noise and anti-interference ability, and good fault diagnosis effect

Inactive Publication Date: 2019-08-20
HOHAI UNIV
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Problems solved by technology

The power outage maintenance period of on-load tap-changers is often long, and it is difficult to detect early mechanical failures in time. Failures and damages often occur before power outage maintenance, and power outage maintenance affects the normal operation of the transformer, which requires a lot of manpower, material and financial resources
On-line monitoring methods mainly include thermal noise-based diagnosis method and vibration-based on-line monitoring, etc. The thermal noise-based diagnosis is that the thermal noise generated by the heat generated after the transformer tap-changer breaks down spreads to the outside of the transformer, and is detected by installing a noise sensor on the transformer shell. To diagnose the fault of the tap changer, but when the thermal noise is transmitted to the sensor, the energy loss is too large, and various noises interfere with the engineering application, which is difficult to realize

Method used

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  • EEMD-based multi-scale fuzzy entropy OLTC fault diagnosis method
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  • EEMD-based multi-scale fuzzy entropy OLTC fault diagnosis method

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Embodiment Construction

[0059] Hereinafter, the present invention will be further described in detail with reference to the accompanying drawings.

[0060] In this example, the CMⅢ-500-63B-10193W type on-load decomposition switch produced by a company is selected as the research object, and the experiment focuses on simulating various faults in the OLTC switching process.

[0061] like figure 1 As shown, an OLTC fault diagnosis method based on EEMD multi-scale fuzzy entropy includes the following steps:

[0062] (1) Put the acceleration vibration sensor on the top cover of the on-load tap-changer (OLTC), and collect the normal state of the on-load tap-changer, the loose contact state, the contact wear state, and the contact burnout state. vibration signals, and 150 groups of vibration signals were collected in each state; the collected vibration signals under normal working conditions are as follows: figure 2 shown.

[0063] (2) Perform EEMD decomposition on the original vibration signal to obtai...

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Abstract

The invention discloses an EEMD-based multi-scale fuzzy entropy OLTC fault diagnosis method. The method comprises steps: (1) an accelerating vibration sensor is placed on the top cover of an on-load tap changer, the vibration signals generated during the action process of the on-load tap changer in a normal state, a contact loose state, a contact wear state and a contact burnout state are acquiredrespectively, and multiple groups of vibration signals under each state are collected respectively; (2) the original vibration signals are subjected to EEMD to obtain IMF components; (3) first multiple IMF components are selected, and the fuzzy entropy of the selected IMF components is calculated; and (4) the calculated fuzzy entropy is used as a feature vector and is inputted to an SVM for training, an SVM classifier is obtained, and the SEn value of an IMF component of a test sample is inputted to the SVM classifier for working state recognition. The method can monitor the working state ofthe transformer on-load tap changer in real time, and the requirements of OLTC real-time fault diagnosis are met.

Description

technical field [0001] The invention relates to a fault diagnosis method for electric power equipment, in particular to an OLTC fault diagnosis method based on EEMD multi-scale fuzzy entropy. Background technique [0002] On-load tap-changer (OLTC) is an important part of power transformer, and its operation status is directly related to the stability and safety of transformer and system. OLTC is one of the components with the highest failure rate of transformers. Its failure not only directly affects the operation of the transformer, but also affects the quality of the power grid and the operation of the power grid. According to the statistics of the data in the trench, the accidents caused by OLTC faults account for about 28% of the total transformer accidents, and the types of faults are basically mechanical faults, such as contact looseness, contact falling off, mechanism jam, sliding gear, refusal to move, etc. Mechanical failures can directly damage the OLTC and the t...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01M13/00G01H17/00G06K9/62
CPCG01M13/00G01H17/00G06F18/24G06F18/214
Inventor 马宏忠陈明刘宝稳陈冰冰许洪华
Owner HOHAI UNIV
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