ABSTRACT A computational model for self-recovery of electricity distribution network was developed to simulate it, emulated by the IEEE 123 node model. The electrical system considered has automatic switches capable of identifying a momentary failure in the line and finding the best reconfiguration for its reclosing. An artificial neural network (ANN), backpropagation, was used to classify the type of failure and determine the best reconfiguration of the distribution network. Initially, five power failure scenarios were simulated in certain different parts of the power grid, and power flow analysis via OpenDSS was performed. Next, the most suitable switching was observed within the shortest time interval to restore the power supply. With th...
This research presents a new approach to analyze harmonics in electrical power distribution network ...
Electrical networks are composed of stages of generation, transmission, and distribution of energy. ...
This paper presents a back propagation (BP) neural network method to identify fault types and phases...
ABSTRACT A computational model for self-recovery of electricity distribution network was developed t...
A tool was developed to assist in the self-recovery of the electricity distribution network, with th...
Network reconfiguration of distribution systems is an operation in configuration management that det...
Electric power distribution networks are exposed to the environment due to their length, for this re...
One objective of the feeder reconfiguration problem in distribution systems is to minimize the power...
The proposed algorithm contributes towards an automated power distribution system, which optimally r...
Includes bibliographical references (pages 15-15)Electrical power systems in any part of the world a...
This paper presents the application of artificial neural networks (ANN) for analysis of power losses...
The proposed algorithm contributes towards an automated power distribution system, which optimally r...
The occurrence of faults in any operational power system network is inevitable, and many of the caus...
The occurrence of faults in any operational power system network is inevitable, and many of the caus...
In power distribution technique it is essential to minimize transients, line voltage dips and spikes...
This research presents a new approach to analyze harmonics in electrical power distribution network ...
Electrical networks are composed of stages of generation, transmission, and distribution of energy. ...
This paper presents a back propagation (BP) neural network method to identify fault types and phases...
ABSTRACT A computational model for self-recovery of electricity distribution network was developed t...
A tool was developed to assist in the self-recovery of the electricity distribution network, with th...
Network reconfiguration of distribution systems is an operation in configuration management that det...
Electric power distribution networks are exposed to the environment due to their length, for this re...
One objective of the feeder reconfiguration problem in distribution systems is to minimize the power...
The proposed algorithm contributes towards an automated power distribution system, which optimally r...
Includes bibliographical references (pages 15-15)Electrical power systems in any part of the world a...
This paper presents the application of artificial neural networks (ANN) for analysis of power losses...
The proposed algorithm contributes towards an automated power distribution system, which optimally r...
The occurrence of faults in any operational power system network is inevitable, and many of the caus...
The occurrence of faults in any operational power system network is inevitable, and many of the caus...
In power distribution technique it is essential to minimize transients, line voltage dips and spikes...
This research presents a new approach to analyze harmonics in electrical power distribution network ...
Electrical networks are composed of stages of generation, transmission, and distribution of energy. ...
This paper presents a back propagation (BP) neural network method to identify fault types and phases...