Probabilistic neural network has successfully solved all kinds of engineering problems in various fields since it is proposed. In probabilistic neural network, Spread has great influence on its performance, and probabilistic neural network will generate bad prediction results if it is improperly selected. It is difficult to select the optimal manually. In this article, a variant of probabilistic neural network with self-adaptive strategy, called self-adaptive probabilistic neural network, is proposed. In self-adaptive probabilistic neural network, Spread can be self-adaptively adjusted and selected and then the best selected Spread is used to guide the self-adaptive probabilistic neural network train and test. In addition, two simplified st...
This paper presents a new differential protection scheme based on Artificial Neural Network (ANN), w...
Nowadays the demand of electricity transmission is increasing and the problems from natural disaster...
Power transformers are considered as one of the essential elements in electrical networks. Power tra...
A transformer is an important part of the power system. Existing transformer fault diagnosis methods...
With the development of computer science and technology, and increasingly intelligent industrial pro...
This paper presents a machine learning-based approach to power transformer fault diagnosis based on ...
AbstractOil-immersed power transformer is one of the key devices in power system. And the reliabilit...
This article presents a classification methodology based on probabilistic neural networks. To automa...
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...
This paper discuss the application of artificial neural network-based algorithms to identify differe...
The fault diagnosis of power transformers is a challenging problem. The massive multisource fault is...
The fault diagnosis of power transformers is of great significance to improve the reliability of pow...
We propose a self–adaptive probabilistic neural network model, which incorporates optimization algor...
This paper presents an evolutionary Bayesian fusion method for transformer fault detection. It adopt...
This paper presents a new differential protection scheme based on Artificial Neural Network (ANN), w...
Nowadays the demand of electricity transmission is increasing and the problems from natural disaster...
Power transformers are considered as one of the essential elements in electrical networks. Power tra...
A transformer is an important part of the power system. Existing transformer fault diagnosis methods...
With the development of computer science and technology, and increasingly intelligent industrial pro...
This paper presents a machine learning-based approach to power transformer fault diagnosis based on ...
AbstractOil-immersed power transformer is one of the key devices in power system. And the reliabilit...
This article presents a classification methodology based on probabilistic neural networks. To automa...
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...
This paper discuss the application of artificial neural network-based algorithms to identify differe...
The fault diagnosis of power transformers is a challenging problem. The massive multisource fault is...
The fault diagnosis of power transformers is of great significance to improve the reliability of pow...
We propose a self–adaptive probabilistic neural network model, which incorporates optimization algor...
This paper presents an evolutionary Bayesian fusion method for transformer fault detection. It adopt...
This paper presents a new differential protection scheme based on Artificial Neural Network (ANN), w...
Nowadays the demand of electricity transmission is increasing and the problems from natural disaster...
Power transformers are considered as one of the essential elements in electrical networks. Power tra...