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A fault prediction method based on characteristic quantity optimization and a wavelet kernel function LSSVM

A technology of wavelet kernel function and fault prediction, which is applied in genetic models, character and pattern recognition, instruments, etc., to achieve the effects of improving accuracy, ensuring safe and stable operation, and realizing effectiveness and simplicity

Inactive Publication Date: 2019-06-21
GUANGXI UNIV
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AI Technical Summary

Problems solved by technology

Since the gas produced by different faults is different, the corresponding transformer fault can be judged according to the content of dissolved gas in the oil, but the content of dissolved gas in these oils will also be affected by factors such as temperature and moisture in the transformer

Method used

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  • A fault prediction method based on characteristic quantity optimization and a wavelet kernel function LSSVM
  • A fault prediction method based on characteristic quantity optimization and a wavelet kernel function LSSVM
  • A fault prediction method based on characteristic quantity optimization and a wavelet kernel function LSSVM

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Embodiment

[0128] This example uses 118 sets of IEC TC 10 fault data for testing, because to some extent the types of transformer faults can be divided into low energy discharge (L-D), high energy discharge (H-D), medium and low temperature overheating (L-T), high temperature overheating (H-T) and Normal state (N-C), the data are shown in Table 1.

[0129] Table 1 Transformer fault samples

[0130]

[0131] Due to the increase of aging time of oil-immersed transformers, the transformer insulating oil and insulating paper (board) will decompose and produce gases such as H2, CH4, C2H2, C2H4, C2H6, CO and CO2. DGA with 118 sets of IEC TC 10 fault data is preferred feature quantities, optimize them 100 times, and finally select a set of optimal feature quantities. The concentration ratios of the 28 gases are shown in Table 2.

[0132] Table 2 Dissolved gas ratio in oil

[0133]

[0134]

[0135] The collected 118 sets of DGA data were normalized and preprocessed to obtain the nor...

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Abstract

The invention discloses a fault prediction method based on characteristic quantity optimization and a wavelet kernel function LSSVM, and relates to the technical field of fault prediction of power transformers. The method comprises the following steps: firstly, acquiring a ratio of DGA characteristic quantity, secondly, establishing a support vector machine model, and selecting a radial basis function as a kernel function of a classification model; Then, encoding the candidate characteristic quantity and the penalty factor c kernel parameter of the SVM classification model to the same chromosome, optimizing the chromosome by adopting a genetic algorithm, wherein the optimal characteristic quantity is the optimal chromosome selected from the genetic algorithm; taking the optimal feature combination as the input of the next fault prediction and diagnosis function; establishing a wavelet kernel function-least squares support vector machine prediction model; And optimizing the penalty factor of the prediction model and the kernel parameters of the wavelet kernel function by using an imperialism competition algorithm to obtain an optimal parameter combination, and constructing an optimal prediction model based on the parameter combination. Operation state analysis and fault prediction of the transformer at a future moment are realized.

Description

technical field [0001] The invention belongs to the technical field of electrical equipment fault diagnosis and prediction methods, and in particular relates to a fault prediction method based on feature quantity optimization and wavelet kernel function LSSVM. Background technique [0002] At present, the large-capacity transformers in the power grid are generally oil-immersed transformers, and the stable operation of the transformer is related to the safe and stable operation of the power system. Therefore, there should be corresponding technology for on-line monitoring of oil-immersed transformers, and by analyzing the corresponding data to evaluate the operating status of the transformer or the aging status of the oil-paper insulation, this will greatly reduce unnecessary maintenance costs and meet economical requirements. sustainable development. [0003] At present, dissolved gas analysis (DGA) is a common transformer fault diagnosis technology. Its main principle is: ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/62G06N3/12
Inventor 刘捷丰张镱议郑含博张恒房加珂任广为廖昌义徐凯杭颖
Owner GUANGXI UNIV
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