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Photoacoustic spectroscopy-based transformer fault diagnosis method employing parameter optimization SVM (support vector machine)

A support vector machine and transformer fault technology, applied in the direction of color/spectral characteristic measurement, instrument, electrical digital data processing, etc., can solve the problems of cumbersome operation, long detection cycle, consumption of gas to be measured and carrier gas, etc. Consumption of carrier gas, short detection cycle, high stability and sensitivity

Active Publication Date: 2015-04-29
湖州优研知识产权服务有限公司
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Problems solved by technology

[0005] The purpose of the embodiments of the present invention is to provide a transformer fault diagnosis method based on photoacoustic spectroscopy using parameter optimization support vector machine, aiming to solve the problems of cumbersome operation and consumption of gas to be tested in the fault diagnosis of transformer gas chromatography analysis And carrier gas, long detection cycle and other issues

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  • Photoacoustic spectroscopy-based transformer fault diagnosis method employing parameter optimization SVM (support vector machine)
  • Photoacoustic spectroscopy-based transformer fault diagnosis method employing parameter optimization SVM (support vector machine)

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[0019] In order to make the object, technical solution and advantages of the present invention more clear, the present invention will be further described in detail below in conjunction with the examples. It should be understood that the specific embodiments described here are only used to explain the present invention, not to limit the present invention.

[0020] The application principle of the present invention will be further described below in conjunction with the accompanying drawings and specific embodiments.

[0021] In the embodiment of the present invention, considering the influence of factors such as transformer type, capacity, and operating environment, a total of 160 groups of transformers produced by different manufacturers and operating in different transformer factories were collected and sorted out at the Transformer Factory of Beihua University, Fengman Power Plant, and Jilin Provincial Electric Power Research Institute. The transformer oil samples under the...

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Abstract

The invention discloses a photoacoustic spectroscopy-based transformer fault diagnosis method employing a parameter optimization SVM (support vector machine). According to the photoacoustic spectroscopy, contents of five characteristic gases of transformer oil are detected and calculated; 5 SVMs and 4 kernel functions are subjected to cross combination, and 20 SVM models are formed; the heuristic algorithm is adopted to perform parameter optimization on values of penalty factors c and g, and accordingly the SVM model highest in transformer fault diagnosis accuracy and operation speed is established. The experimental result shows that the SVM model composed of a C-SVC (C-support vector classification) model, an RBF (radial basis function) and the genetic algorithm optimization is highest in transformer fault diagnosis accuracy, with test set of 97.5% and training set of 98.3333%, and the optimizing speed of the genetic algorithm is faster than the particle swarm optimization by double. The photoacoustic spectroscopy-based transformer fault diagnosis method has the advantages such as simple operation, non-contact measurement, no consumption of carrier gas, short detection period, stability and high sensitivity.

Description

technical field [0001] The invention belongs to the field of transformer fault diagnosis, and in particular relates to a transformer fault diagnosis method based on photoacoustic spectroscopy using a parameter optimization support vector machine. Background technique [0002] The reliable operation of power transformers is the key to ensuring the safety of power systems. The improved three-ratio method recommended by the Electric Power Industry Standard of the People's Republic of China "Guidelines for the Analysis and Judgment of Dissolved Gases in Transformer Oil DL / T 722-2000" is the current domestic and foreign analysis of transformer latent One of the most effective measures for permanent faults is to determine the transformer fault type by measuring the characteristic gas content in the transformer oil and according to the characteristic gas ratio C2H2 / C2H4, CH4 / H2, C2H4 / C2H6. Characteristic gas detection mainly uses gas chromatography, but it has disadvantages such as...

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Application Information

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IPC IPC(8): G06F19/00G01N21/25
Inventor 张玉欣白晶牛国成浦铁成胡冬梅
Owner 湖州优研知识产权服务有限公司
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