Fault Prediction using a Grey-Markov Model from the Dissolved Gases Contents in Transformer Oils

A novel method to predict transformer fault by forecasting the variation trend of the dissolved gases content is proposed. After the content of each feature gas, such as hydrogen and methane, is obtained by the proposed forecasting model, the fault type can be diagnosed by the dissolved gas analysis...

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Main Authors: Liu Yang, Du Yu, Wang Zhiwu, Feng Guangming, Rao Shaowei, Zou Guoping, Yang Shiyou
Format: Article
Language:English
Published: EDP Sciences 2021-01-01
Series:E3S Web of Conferences
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2021/32/e3sconf_posei2021_01038.pdf
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spelling doaj-a019632737814ca3931f1313e9b2522c2021-05-28T12:41:51ZengEDP SciencesE3S Web of Conferences2267-12422021-01-012560103810.1051/e3sconf/202125601038e3sconf_posei2021_01038Fault Prediction using a Grey-Markov Model from the Dissolved Gases Contents in Transformer OilsLiu Yang0Du Yu1Wang Zhiwu2Feng Guangming3Rao Shaowei4Zou Guoping5Yang Shiyou6Equipment Management Centre, Suzhou Nuclear Power Research InstituteEquipment Management Centre, Suzhou Nuclear Power Research InstituteEquipment Management Centre, Suzhou Nuclear Power Research InstituteEquipment Management Centre, Suzhou Nuclear Power Research InstituteCollege of Electrical Engineering, Zhejiang UniversityCollege of Electrical Engineering, Zhejiang UniversityCollege of Electrical Engineering, Zhejiang UniversityA novel method to predict transformer fault by forecasting the variation trend of the dissolved gases content is proposed. After the content of each feature gas, such as hydrogen and methane, is obtained by the proposed forecasting model, the fault type can be diagnosed by the dissolved gas analysis (DGA) technologies. Firstly, the GM (1,1) grey model with unequal time interval is introduced to generate a general forecasting model for each feature gas. The introduced grey model with unequal time interval will enforce no constrain on the historical measurement data. Consequently, the time intervals of the two adjacent measuring points can be either constant or variant. To address the deficiency that the existing grey model is unable to describe the fluctuation of the predicted object in time domain, the Markov chain is introduced to improve the accuracy of the grey forecasting model. An adaptive method to automatically divide the state space based on the number of states and the relative error of the grey model is presented by using Fibonacci sequences. Practical measurements are used to verify the accuracy of the proposed forecasting model. The numerical results show that there is high probability (86%) that the proposed grey-Markov model acquires a smaller prediction residual as compared to the original GM(1,1) grey model.https://www.e3s-conferences.org/articles/e3sconf/pdf/2021/32/e3sconf_posei2021_01038.pdf
collection DOAJ
language English
format Article
sources DOAJ
author Liu Yang
Du Yu
Wang Zhiwu
Feng Guangming
Rao Shaowei
Zou Guoping
Yang Shiyou
spellingShingle Liu Yang
Du Yu
Wang Zhiwu
Feng Guangming
Rao Shaowei
Zou Guoping
Yang Shiyou
Fault Prediction using a Grey-Markov Model from the Dissolved Gases Contents in Transformer Oils
E3S Web of Conferences
author_facet Liu Yang
Du Yu
Wang Zhiwu
Feng Guangming
Rao Shaowei
Zou Guoping
Yang Shiyou
author_sort Liu Yang
title Fault Prediction using a Grey-Markov Model from the Dissolved Gases Contents in Transformer Oils
title_short Fault Prediction using a Grey-Markov Model from the Dissolved Gases Contents in Transformer Oils
title_full Fault Prediction using a Grey-Markov Model from the Dissolved Gases Contents in Transformer Oils
title_fullStr Fault Prediction using a Grey-Markov Model from the Dissolved Gases Contents in Transformer Oils
title_full_unstemmed Fault Prediction using a Grey-Markov Model from the Dissolved Gases Contents in Transformer Oils
title_sort fault prediction using a grey-markov model from the dissolved gases contents in transformer oils
publisher EDP Sciences
series E3S Web of Conferences
issn 2267-1242
publishDate 2021-01-01
description A novel method to predict transformer fault by forecasting the variation trend of the dissolved gases content is proposed. After the content of each feature gas, such as hydrogen and methane, is obtained by the proposed forecasting model, the fault type can be diagnosed by the dissolved gas analysis (DGA) technologies. Firstly, the GM (1,1) grey model with unequal time interval is introduced to generate a general forecasting model for each feature gas. The introduced grey model with unequal time interval will enforce no constrain on the historical measurement data. Consequently, the time intervals of the two adjacent measuring points can be either constant or variant. To address the deficiency that the existing grey model is unable to describe the fluctuation of the predicted object in time domain, the Markov chain is introduced to improve the accuracy of the grey forecasting model. An adaptive method to automatically divide the state space based on the number of states and the relative error of the grey model is presented by using Fibonacci sequences. Practical measurements are used to verify the accuracy of the proposed forecasting model. The numerical results show that there is high probability (86%) that the proposed grey-Markov model acquires a smaller prediction residual as compared to the original GM(1,1) grey model.
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2021/32/e3sconf_posei2021_01038.pdf
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