Only using single feature information as input feature cannot fully reflect the transformer fault classification and improve the accuracy of transformer fault diagnosis. To address the above problem, the convolution neural networks’ model is applied for transformer fault assessment designed to implement an end-to-end “different space feature extraction + transformer state diagnosis classification” to enable information from possibly heterogeneous sources to be integrated. This method integrates various feature information of the power transformer operation state to form the isomeric feature, and the model can be used to automatically extract different feature spaces’ information from isomeric feature quantity using its unique one-dimensiona...
Fast and accurate fault diagnosis of strongly coupled, time-varying, multivariable complex industria...
According to the characteristics and current situation of power transformer fault diagnosis , inform...
A transformer is an important part of the power system. Existing transformer fault diagnosis methods...
This paper studies the latest advances made in Deep Learning (DL) methods utilized for transformer i...
Vibration signature analysis is considered as an advanced and economical methods to evaluate transfo...
Abstract To increase the classification accuracy of a protection scheme for power transformer, an ef...
The ultimate goal of this research is to develop an online, non-destructive, incipient fault detecti...
Analysis of dissolved gases in transformer oil is one of the practical methods for identifying the d...
Aiming at the problem of lack of training samples and low accuracy in transformer early winding faul...
Diagnosing incipient faults in transformers is a major challenge because it is very difficult to def...
The power system on the offshore platform is of great importance since it is the power source for oi...
Undesirable operation of a distant relay at the occurrence of stressed conditions is a reason for bl...
Transformer faults have many types and fault information is uncertain, in response to these problems...
The random vector functional link (RVFL) network is suitable for solving nonlinear problems from tra...
An artificial neural networks (ANN) system was developed for distribution transformer's failure diag...
Fast and accurate fault diagnosis of strongly coupled, time-varying, multivariable complex industria...
According to the characteristics and current situation of power transformer fault diagnosis , inform...
A transformer is an important part of the power system. Existing transformer fault diagnosis methods...
This paper studies the latest advances made in Deep Learning (DL) methods utilized for transformer i...
Vibration signature analysis is considered as an advanced and economical methods to evaluate transfo...
Abstract To increase the classification accuracy of a protection scheme for power transformer, an ef...
The ultimate goal of this research is to develop an online, non-destructive, incipient fault detecti...
Analysis of dissolved gases in transformer oil is one of the practical methods for identifying the d...
Aiming at the problem of lack of training samples and low accuracy in transformer early winding faul...
Diagnosing incipient faults in transformers is a major challenge because it is very difficult to def...
The power system on the offshore platform is of great importance since it is the power source for oi...
Undesirable operation of a distant relay at the occurrence of stressed conditions is a reason for bl...
Transformer faults have many types and fault information is uncertain, in response to these problems...
The random vector functional link (RVFL) network is suitable for solving nonlinear problems from tra...
An artificial neural networks (ANN) system was developed for distribution transformer's failure diag...
Fast and accurate fault diagnosis of strongly coupled, time-varying, multivariable complex industria...
According to the characteristics and current situation of power transformer fault diagnosis , inform...
A transformer is an important part of the power system. Existing transformer fault diagnosis methods...