Ultra-high-frequency partial discharge signal identification method for gas insulated switchgear (GIS)

A discharge signal and recognition method technology, applied in the direction of testing dielectric strength, etc., can solve problems such as low reliability and accuracy, slow training time, and slow convergence speed

Inactive Publication Date: 2012-12-05
SOUTH CHINA UNIV OF TECH
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Problems solved by technology

At present, the BP neural network is the most widely used neural network in practical applications. However, due to the gradient descent method used in the algorithm of the BP neural network, there are inevitably problems such as long training time, slow convergence speed, and easy to fall into local minimum values. It is reliable. low accuracy

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  • Ultra-high-frequency partial discharge signal identification method for gas insulated switchgear (GIS)
  • Ultra-high-frequency partial discharge signal identification method for gas insulated switchgear (GIS)
  • Ultra-high-frequency partial discharge signal identification method for gas insulated switchgear (GIS)

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Embodiment

[0057] figure 1 Shown is the forward three-layer BP neural network structure that the present invention adopts, input layer is the discharge feature of the kth sample, the output layer is the corresponding discharge fault type, and the BP neural network structure is determined according to the number of input and output parameters.

[0058] Such as figure 2 As shown, a GIS UHF partial discharge signal identification method includes the model training process and defect identification process.

[0059] The model training process includes the following steps:

[0060] (1-1) Input four kinds of GIS UHF partial discharge signals with class labels as training samples, in which the fixed particle discharge signal is marked as (1,0,0,0), and the free particle discharge signal is marked as (0, 1,0,0), the floating electrode discharge signal is marked as (0,0,1,0), and the insulation defect discharge signal is marked as (0,0,0,1);

[0061] (1-2) Preprocessing the GIS UHF partial ...

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Abstract

The invention discloses an ultra-high-frequency partial discharge signal identification method for gas insulated switchgear (GIS). The method comprises a model training process and a defect identification process, and specifically comprises the following steps of: reprocessing partial discharge signals of the GIS; extracting discharge characteristic parameters such as average discharge amplitude, discharge amplitude standard deviation, discharge phase distribution, discharge polarity, discharge time interval mean, discharge time interval standard deviation; optimizing a weight and a threshold value of a back propagation (BP) neural network by utilizing a genetic simulated annealing tool; training samples by utilizing a BP neural network tool; establishing a corresponding gas statistic algorithm (GSA)-BP model; preprocessing the partial discharge signals to be identified of the GIS; and identifying the samples to be measured in a classified way according to the GSA-BP model after extracting the corresponding characteristic parameters. By the method, the efficiency and the accuracy of partial discharge fault diagnosis of the GIS are improved effectively; and the method is critical to evaluate the insulation state of the GIS and formulate a reasonable maintenance strategy.

Description

technical field [0001] The invention relates to the technical field of electrical equipment insulation detection, in particular to a GIS ultra-high frequency partial discharge signal recognition method based on a BP neural network of a genetic simulated annealing algorithm (GSA). Background technique [0002] With the rapid development of my country's power industry construction, the modern power system is developing in the direction of large power grids, large units, ultra-high voltage, and large capacity. In order to ensure the stability and reliability of the power system, more safety requirements for power equipment are also proposed high demands. As one of the most important equipment in the substation, the enclosed combined electrical equipment (GIS) is widely used in the field of high-voltage power transmission due to its high reliability and small footprint. The impact and loss are huge. So before GIS breaks down, it is especially important to detect and judge its i...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01R31/12
Inventor 田立斌肖人岳赵丽何珊珊
Owner SOUTH CHINA UNIV OF TECH
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