Разработка нечеткой нейронной сети для интерпретации результатов анализа растворенных в масле газов

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НТУ "ХПИ"

Abstract

Unlike similar studies in the training of the neural network, the membership functions of linguistic terms were chosen taking into account the functions gas concentrations density distribution transformers with various diagnoses, allowing to consider a particular gas content of oils that are typical of a leaky transformer, and the operating conditions of the equipment. Practical value. Developed fuzzy neural network allows to perform diagnostics of power transformers on the basis of the result of the analysis of gases dissolved in oil, with a high level of reliability.

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Бондаренко В. Е. Разработка нечеткой нейронной сети для интерпретации результатов анализа растворенных в масле газов / В. Е. Бондаренко, О. В. Шутенко // Електротехніка і Електромеханіка = Electrical engineering & Electromechanics. – 2017. – № 2. – С. 49-56.

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