This paper proposes the method of applying Artificial Neural Network (ANN) with Back Propagation (BP) algorithm in combination or hybrid with Genetic Algorithm (GA) to propose load shedding strategies in the power system. The Genetic Algorithm is used to support the training of Back Propagation Neural Networks (BPNN) to improve regression ability, minimize errors and reduce the training time. Besides, the Relief algorithm is used to reduce the number of input variables of the neural network. The minimum load shedding with consideration of the primary and secondary control is calculated to restore the frequency of the electrical system. The distribution of power load shedding at each load bus of the system based on the phase electrical dista...
Prediction of the electrical load schedule of an electrical system is an important aspect for determ...
In this work particle swarm optimization algorithm has been hybridized with Back propagation neural ...
For generating and distributing an economic load scheduling approach, artificial neural network (ANN...
This paper proposes an under-frequency load shedding (UFLS) method by using the optimization techniq...
AbstractIn this paper, a hybrid method is proposed for reducing the amount of load shedding and volt...
Load shedding plays a key part in the avoidance of the power system outage. The frequency and voltag...
This paper is intended to present an approach to decision making in the operation of electrical powe...
The first part of this two part paper has proposed a novel strategy for frequency response modelling...
Optimal load shedding is a very critical issue in power systems. It plays a vital role, especially i...
Dimirovski, Georgi M. (Dogus Author) -- Conference full title: 2010 14th International Power Electro...
This paper describes an application of optimization and machine learning to load restoration in a ge...
A blackout is usually the result of load increasing beyond the transmission capacity of the power sy...
There exist nonlinear and high redundancy between the power load factors, and the traditional method...
BP neural network (Back-Propagation Neural Network, BP-NN) is one of the most widely neural network ...
This work introduces an efficient load scheduling method for handling the day-to-day power supply ne...
Prediction of the electrical load schedule of an electrical system is an important aspect for determ...
In this work particle swarm optimization algorithm has been hybridized with Back propagation neural ...
For generating and distributing an economic load scheduling approach, artificial neural network (ANN...
This paper proposes an under-frequency load shedding (UFLS) method by using the optimization techniq...
AbstractIn this paper, a hybrid method is proposed for reducing the amount of load shedding and volt...
Load shedding plays a key part in the avoidance of the power system outage. The frequency and voltag...
This paper is intended to present an approach to decision making in the operation of electrical powe...
The first part of this two part paper has proposed a novel strategy for frequency response modelling...
Optimal load shedding is a very critical issue in power systems. It plays a vital role, especially i...
Dimirovski, Georgi M. (Dogus Author) -- Conference full title: 2010 14th International Power Electro...
This paper describes an application of optimization and machine learning to load restoration in a ge...
A blackout is usually the result of load increasing beyond the transmission capacity of the power sy...
There exist nonlinear and high redundancy between the power load factors, and the traditional method...
BP neural network (Back-Propagation Neural Network, BP-NN) is one of the most widely neural network ...
This work introduces an efficient load scheduling method for handling the day-to-day power supply ne...
Prediction of the electrical load schedule of an electrical system is an important aspect for determ...
In this work particle swarm optimization algorithm has been hybridized with Back propagation neural ...
For generating and distributing an economic load scheduling approach, artificial neural network (ANN...