2018
DOI: 10.3390/en11071880
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Prediction Method for Power Transformer Running State Based on LSTM_DBN Network

Abstract: It is of great significance to accurately get the running state of power transformers and timely detect the existence of potential transformer faults. This paper presents a prediction method of transformer running state based on LSTM_DBN network. Firstly, based on the trend of gas concentration in transformer oil, a long short-term memory (LSTM) model is established to predict the future characteristic gas concentration. Then, the accuracy and influencing factors of the LSTM model are analyzed with examples. T… Show more

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Cited by 34 publications
(13 citation statements)
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“…et al proposed a nonlinear autoregressive neural network model combined with discrete wavelet transform to predict the concentration of dissolved gas, which shows better prediction results compared with the current prediction models and the commonly used time series techniques [11]. Lin et al proposed a transformer operation state prediction method based on long short-term memory and deep belief network (LSTM_DBN), which predicted the dissolved gas concentration by developing a long short term memory (LSTM) model [12]. On the basis of radial basis function neural network (RBFNN), back propagation neural network (BPNN), LSSVM of two different kernel functions and grey model, Liu et al proposed a combined prediction model based on cross entropy, in which the weight coefficient of each algorithm is determined by cross entropy theory, and analyzed its application [13].…”
Section: Introductionmentioning
confidence: 99%
“…et al proposed a nonlinear autoregressive neural network model combined with discrete wavelet transform to predict the concentration of dissolved gas, which shows better prediction results compared with the current prediction models and the commonly used time series techniques [11]. Lin et al proposed a transformer operation state prediction method based on long short-term memory and deep belief network (LSTM_DBN), which predicted the dissolved gas concentration by developing a long short term memory (LSTM) model [12]. On the basis of radial basis function neural network (RBFNN), back propagation neural network (BPNN), LSSVM of two different kernel functions and grey model, Liu et al proposed a combined prediction model based on cross entropy, in which the weight coefficient of each algorithm is determined by cross entropy theory, and analyzed its application [13].…”
Section: Introductionmentioning
confidence: 99%
“…Besides, as one of the essential pieces of equipment in the power system, power and distribution transformers can directly influence the stability and safety of the entire power grid (Badune et al, 2013;Kimment and Matevosyan, 2018). If the transformer fails in operation, it will cause power to turn off and cause damage to the transformer itself and the power system, which may result in more considerable damage (Lin et al, 2018). Lifetime data analysis of power and distribution transformers are essential for a cost-efficient and risk minimized maintenance process (Badune et al, 2013).…”
Section: Introductionmentioning
confidence: 99%
“…Devidoà necessidade de se melhorar a segurança operacional no ambiente industrial, diversas abordagens de detecção e identificação de falhas (Fault Detection and Identification -FDI) foram desenvolvidas e aplicadas, com o objetivo de auxiliar os operadores no controle e observação dos processos industriais (Yu et al, 2015;Zhou et al, 2004;Verron et al, 2010). Dentre estas abordagens, destacamse as metodologias com base em técnicas de aprendizagem de máquina (Lin et al, 2018;Chen et al, 2015;Liu et al, 2018). O diagnóstico de falhasé uma importante atividade na prevenção de acidentes, então, um bom sistema de FDI pode ser considerado crítico para o funcionamento desejado do processo.…”
Section: Introductionunclassified