The random vector functional link (RVFL) network is suitable for solving nonlinear problems from transformer fault symptoms and different fault types due to its simple structure and strong generalization ability. However, the RVFL network has a disadvantage in that the network structure, and parameters are basically determined by experiences. In this paper, we proposed a method to improve the RVFL neural network algorithm by introducing the concept of hidden node sensitivity, classify each hidden layer node, and remove nodes with low sensitivity. The simplified network structure could avoid interfering nodes and improve the global search capability. The five characteristic gases produced by transformer faults are divided into two groups. A ...
The fault diagnosis of power transformers is of great significance to improve the reliability of pow...
According to the characteristics and current situation of power transformer fault diagnosis , inform...
The ultimate goal of this research is to develop an online, non-destructive, incipient fault detecti...
This paper discuss the application of artificial neural network-based algorithms to identify differe...
A transformer is an important part of the power system. Existing transformer fault diagnosis methods...
This paper presents a machine learning-based approach to power transformer fault diagnosis based on ...
With the widely application of electronic transformers in smart grids, transformer faults have becom...
Power transformer is one of the most important equipment in power system. In order to predict the po...
On-line monitoring of electric power transformers can provide a clear indication of their status and...
Analysis of dissolved gases in transformer oil is one of the practical methods for identifying the d...
A new method of transformer fault diagnosis based on relevance vector machine (RVM) is proposed. Bay...
Continuity of power supply is of utmost importance to the consumers and is only possible by coordina...
Most of the proposed neural networks for fault diagnosis of systems are multilayer perceptrons (MLP)...
Abstract. This paper introduces an artificial neural network (ANN) based fault diagnosis system (FDS...
This paper studies the latest advances made in Deep Learning (DL) methods utilized for transformer i...
The fault diagnosis of power transformers is of great significance to improve the reliability of pow...
According to the characteristics and current situation of power transformer fault diagnosis , inform...
The ultimate goal of this research is to develop an online, non-destructive, incipient fault detecti...
This paper discuss the application of artificial neural network-based algorithms to identify differe...
A transformer is an important part of the power system. Existing transformer fault diagnosis methods...
This paper presents a machine learning-based approach to power transformer fault diagnosis based on ...
With the widely application of electronic transformers in smart grids, transformer faults have becom...
Power transformer is one of the most important equipment in power system. In order to predict the po...
On-line monitoring of electric power transformers can provide a clear indication of their status and...
Analysis of dissolved gases in transformer oil is one of the practical methods for identifying the d...
A new method of transformer fault diagnosis based on relevance vector machine (RVM) is proposed. Bay...
Continuity of power supply is of utmost importance to the consumers and is only possible by coordina...
Most of the proposed neural networks for fault diagnosis of systems are multilayer perceptrons (MLP)...
Abstract. This paper introduces an artificial neural network (ANN) based fault diagnosis system (FDS...
This paper studies the latest advances made in Deep Learning (DL) methods utilized for transformer i...
The fault diagnosis of power transformers is of great significance to improve the reliability of pow...
According to the characteristics and current situation of power transformer fault diagnosis , inform...
The ultimate goal of this research is to develop an online, non-destructive, incipient fault detecti...