In this paper, an intelligent identification method for winding deformation fault is proposed. The proposed method is composed of principal components of transfer function characteristics and an artificial neural network (ANN). A sequence of simulative deformation faults with different types, locations and extents are set on the winding of a 10kV transformer. The corresponding status transfer function is acquired with a winding deformation test method excited by M-Sequence. Zeros, poles and the variations of the transfer function are considered to be the features of the winding mechanical status. The principal components of feature are extracted and then used as input to a back-propagation ANN for fault recognition. The winding deformation ...
Abstract- This paper presents a new algorithm for the use of Artificial Neural Network (ANN) to esti...
With the expansion of the use of frequency response analysis (FRA) as a reliable tool for fault dete...
The paper presents the possibility of using neural networks in the detection of stator and rotor ele...
Power transformers are among the most critical of assets for electric utilities, in the financial im...
This paper presents a new differential protection scheme based on Artificial Neural Network (ANN), w...
In this work, a new model of transformer wind-ing is developed. The components in the model are dete...
Summarization: This paper introduces the Wavelet Transform (WT) and Artificial Neural Networks (ANN)...
Summarization: This paper introduces the Wavelet Transform (WT) and Artificial Neural Networks (ANN)...
Transformer protection is critical issue in power system as the issue lies in the accurate and rapid...
The paper presents application of the radial neural network for detection of faults in induction mot...
Winding fault is one of the most common types of transformer faults. The frequency response method i...
Nowadays the demand of electricity transmission is increasing and the problems from natural disaster...
Summarization: This paper exploits the Wavelet Transform (WT) analysis along with Artificial Neural ...
Aiming at the problem of lack of training samples and low accuracy in transformer early winding faul...
As an important part of power system, power transformer plays an irreplaceable role in the process o...
Abstract- This paper presents a new algorithm for the use of Artificial Neural Network (ANN) to esti...
With the expansion of the use of frequency response analysis (FRA) as a reliable tool for fault dete...
The paper presents the possibility of using neural networks in the detection of stator and rotor ele...
Power transformers are among the most critical of assets for electric utilities, in the financial im...
This paper presents a new differential protection scheme based on Artificial Neural Network (ANN), w...
In this work, a new model of transformer wind-ing is developed. The components in the model are dete...
Summarization: This paper introduces the Wavelet Transform (WT) and Artificial Neural Networks (ANN)...
Summarization: This paper introduces the Wavelet Transform (WT) and Artificial Neural Networks (ANN)...
Transformer protection is critical issue in power system as the issue lies in the accurate and rapid...
The paper presents application of the radial neural network for detection of faults in induction mot...
Winding fault is one of the most common types of transformer faults. The frequency response method i...
Nowadays the demand of electricity transmission is increasing and the problems from natural disaster...
Summarization: This paper exploits the Wavelet Transform (WT) analysis along with Artificial Neural ...
Aiming at the problem of lack of training samples and low accuracy in transformer early winding faul...
As an important part of power system, power transformer plays an irreplaceable role in the process o...
Abstract- This paper presents a new algorithm for the use of Artificial Neural Network (ANN) to esti...
With the expansion of the use of frequency response analysis (FRA) as a reliable tool for fault dete...
The paper presents the possibility of using neural networks in the detection of stator and rotor ele...