Applications of neural networks to power system fault diagnosis have provided positive results and shown advantages in process speed over conventional approaches. This paper describes the application of a Kohonen neural network to fault detection and classification using the fundamental components of currents and voltages. The Electromagnetic Transients Program is used to obtain fault patterns for the training and testing of neural networks. Accurate classifications are obtained for all types of possible short circuit faults on test systems representing high voltage transmission lines. Short training time makes the Kohonen network suitable for on-line power system fault diagnosis. The method introduced in the paper can be easily extended to...
ABSTRACT In this paper an approach for fault location based on online neural network is designed. Th...
<p>With increasing demands and competitive business environment, the structure of power system has b...
Recent developments indicate that Artificial Neural Networks (ANNs) may be appropriate for assisting...
In power distribution technique it is essential to minimize transients, line voltage dips and spikes...
Real time fault detection and diagnosis (FDD) is an important area of research interest in knowledge...
The medium term goal of the research reported in this paper was the development of a major in-house ...
This paper describes the development of a fast, efficient, artificial neural network (ANN) based fau...
Fault Detection on transmission lines forms an important part of monitoring the health of the power...
This dissertation introduces advanced artificial intelligence based algorithm for detecting and clas...
The occurrence of faults in any operational power system network is inevitable, and many of the caus...
Contemporary power systems are associated with serious issues of faults on high voltage transmission...
Electrical winding faults, namely stator short-circuits and rotor bar damage, in total constitute ar...
Electric power distribution networks are exposed to the environment due to their length, for this re...
This study proposes an intelligent protection relay design that uses artificial neural networks to s...
The fault types and location in a power transmission line are detected based on the voltage and curr...
ABSTRACT In this paper an approach for fault location based on online neural network is designed. Th...
<p>With increasing demands and competitive business environment, the structure of power system has b...
Recent developments indicate that Artificial Neural Networks (ANNs) may be appropriate for assisting...
In power distribution technique it is essential to minimize transients, line voltage dips and spikes...
Real time fault detection and diagnosis (FDD) is an important area of research interest in knowledge...
The medium term goal of the research reported in this paper was the development of a major in-house ...
This paper describes the development of a fast, efficient, artificial neural network (ANN) based fau...
Fault Detection on transmission lines forms an important part of monitoring the health of the power...
This dissertation introduces advanced artificial intelligence based algorithm for detecting and clas...
The occurrence of faults in any operational power system network is inevitable, and many of the caus...
Contemporary power systems are associated with serious issues of faults on high voltage transmission...
Electrical winding faults, namely stator short-circuits and rotor bar damage, in total constitute ar...
Electric power distribution networks are exposed to the environment due to their length, for this re...
This study proposes an intelligent protection relay design that uses artificial neural networks to s...
The fault types and location in a power transmission line are detected based on the voltage and curr...
ABSTRACT In this paper an approach for fault location based on online neural network is designed. Th...
<p>With increasing demands and competitive business environment, the structure of power system has b...
Recent developments indicate that Artificial Neural Networks (ANNs) may be appropriate for assisting...