Detection and Classification of Incipient Faults in Three-Phase Power Transformer Using DGA Information and Rule-based Machine Learning Method

被引:0
作者
Mohsen Savari Katooli
Amangaldi Koochaki
机构
[1] Islamic Azad University,Department of Electrical Engineering, Aliabad Katoul Branch
来源
Journal of Control, Automation and Electrical Systems | 2020年 / 31卷
关键词
BWO; Fuzzy rules; Item selection; Learning algorithm; Transformer;
D O I
暂无
中图分类号
学科分类号
摘要
Three-phase transformers (TPT) play a significant and crucial function in the power networks in order to connect the sub-systems and deliver the electrical energy to final customers. The TPT are one of the most high-priced equipment in modern power networks, and therefore their working condition should be constantly monitored to prevent their breakdown, power outages and huge financial damage. Accordingly, this paper presents a hybrid method for detection and classification of incipient faults in TPT using dissolved gas analysis techniques (DGAT) information and rule-based machine learning method. In the developed method, the most informative and important items of DGAT data out of 14 items selected by association rules mining technique (ARMT) are employed as the input of adaptive neuro-fuzzy inference system (ANFIS). The ARMT is implemented to select the items, which have maximum information and can train the ANFIS more accurately. Furthermore, in order to enhance the accuracy of ANFIS and improve its robustness in different implementations, black widow optimization algorithm is applied for ANFIS training. In order to evaluate the performance of developed method on real issues, two industrial data collections obtained from Iran-Transfo Company chemical laboratory and Damavand power substations are used. The obtained results through MATLAB simulations proved that the developed method has high fault detection and classification accuracy, robust function in different implementations, short run time and simple structure.
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页码:1251 / 1266
页数:15
相关论文
共 121 条
[1]  
Barbosa F(2012)Application of an artificial neural network in the use of physicochemical properties as a low cost proxy of power transformers DGA data IEEE Transactions on Dielectrics and Electrical Insulation 19 239-246
[2]  
Almeida O(2007)Feature selection for high-dimensional data—A Pearson redundancy based filter Advances in Soft Computing 45 242-249
[3]  
Braga A(2020)Fuzzy observer stabilization for discrete-time takagi-sugeno uncertain systems with k-samples variations Journal of Control, Automation and Electrical Systems 31 574-587
[4]  
Amora M(2018)A novel hybrid genetic algorithm with granular information for feature selection and optimization Applied Soft Computing 65 33-46
[5]  
Cartaxo S(1989)Dissolved gas analysis: It can save your transformer IEEE Electrical Insulation Magazine 5 22-27
[6]  
Biesiada J(2001)Interpretation of gas-in-oil analysis using new iec publication 60599 and IEC TC 10 databases IEEE Electrical Insulation Magazine 17 31-41
[7]  
Duch W(2018)A three-phase comprehensive methodology to analyze short circuits, open circuits and internal faults of transformers based on the compensation theorem International Journal of Electrical Power & Energy Systems 96 238-252
[8]  
Bouyahya A(2019)Speed control of a separately excited DC motor using new proposed fuzzy neural algorithm based on FOPID controller Journal of Control, Automation and Electrical Systems 30 728-740
[9]  
Manai Y(2020)Adaptive fuzzy control of robot manipulators with asymptotic tracking performance Journal of Control, Automation and Electrical Systems 31 52-61
[10]  
Haggège J(2009)Fault diagnosis of power transformer based on support vector machine with genetic algorithm Expert Systems with Applications 36 11352-11357