Fault diagnosis method for oil immersed reactor based on IFOA optimized SVM model

A technology of fault diagnosis and fault diagnosis model, applied in the directions of instruments, electrical testing/monitoring, control/regulation systems, etc., can solve the problems of randomness and blindness of model parameter selection, influence of diagnosis results, etc., to avoid local optimum Problems, strong global optimization ability, and the effect of large search space

Inactive Publication Date: 2018-12-21
STATE GRID JIANGSU ELECTRIC POWER CO LTD MAINTENANCE BRANCH +1
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AI Technical Summary

Problems solved by technology

In the establishment of the SVM classifier, the selection of the kernel function g and the penalty factor C has a great impact on the diagnosis results, and there is randomness and blindness in the selection of model parameters

Method used

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  • Fault diagnosis method for oil immersed reactor based on IFOA optimized SVM model
  • Fault diagnosis method for oil immersed reactor based on IFOA optimized SVM model
  • Fault diagnosis method for oil immersed reactor based on IFOA optimized SVM model

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Embodiment 1

[0084] 200 sets of dissolved gas content data in oil-immersed reactor oil collected at a project site are selected as sample data, the first 140 sets of sample data are used as training sets, and the last 60 sets are used as test sets.

[0085] According to the characteristics of the on-line monitoring data of the project site, select H 2 、CH 4 、C 2 h 6 、C 2 h 4 、C 2 h 2 The content values ​​of these five characteristic gases are used as the input of the support vector machine.

[0086] The state of the reactor is divided into seven types: normal state, high temperature overheating, medium temperature overheating, low temperature overheating, low energy discharge, partial discharge, and arc discharge as the output of the support vector machine.

[0087] In order to improve the classification performance of support vector machine and avoid calculation imbalance when dealing with data of different magnitudes, the normalization method is used to process the sample data.

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Abstract

The invention discloses a fault diagnosis method for an oil immersed reactor based on an IFOA optimized SVM model. The method comprises the following steps: preprocessing fault diagnosis data of the reactor, constructing training samples and test samples; establishing a fault diagnosis model of the reactor based on a support vector machine; improving a fruit fly algorithm; establishing a fault diagnosis model of the oil immersed reactor based on IFOA-SVM; and substituting sample data into the fault diagnosis model to achieve fault diagnosis of the reactor. The fault diagnosis method for the oil immersed reactor based on the IFOA optimized SVM model proposed by the invention is suitable for training of small data set of samples. The improved fruit fly algorithm realizes dynamic balance between the global search capability and the local optimization ability, and can effectively avoid the problem of local optimum. The improved fruit fly algorithm is applied to the selection of a penalty parameter C and a kernel function g of the support vector machine, which can realize the optimal selection and adaptive selection of parameters.

Description

technical field [0001] The invention belongs to the field of state detection and fault diagnosis of electric equipment, and in particular relates to a fault diagnosis method for an oil-immersed reactor based on an IFOA optimized SVM model. Background technique [0002] Reactor is an important power equipment in the power system to improve the power frequency voltage distribution of the line and improve the reactive power distribution of the line. The occurrence and operation reliability of its faults affect the safety and service life of the entire power system. Therefore, oil-immersed reactors It has important practical application value for fault diagnosis. [0003] In recent years, relevant research has applied many intelligent algorithms to reactor fault diagnosis, such as fuzzy clustering, genetic algorithm, artificial neural network, etc., but these algorithms require a large amount of fault sample data. Support vector machine (support vector machine, SVM) is a machin...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G05B23/02
CPCG05B23/0262G05B2219/24065
Inventor 田涛朱超陈昊郝宝欣李义峰赵若妤马宏忠吴书煜
Owner STATE GRID JIANGSU ELECTRIC POWER CO LTD MAINTENANCE BRANCH
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