The application of a spiking neural network (SNN) and a multi-layer perceptron (MLP) for online identification of generator dynamics in a multimachine power system are compared in this paper. An integrate-and-fire model of an SNN which communicates information via the inter-spike interval is applied. The neural network identifiers are used to predict the speed and terminal voltage deviations one time-step ahead of generators in a multimachine power system. The SNN is developed in two steps: (i) neuron centers determined by offline k-means clustering and (ii) output weights obtained by online training. The sensitivity of the SNN to the neuron centers determined in the first step is evaluated on generators of different ratings and parameters....
A new approach to identify the nonlinear model of an induction machine using two generalized neurons...
Backpropagation algorithm is the most commonly used algorithm for training artificial neural network...
In the paper, neural network (NN) models for gas turbine diagnostics are studied and developed. The ...
This paper presents the application of a spiking neural network for online identification of generat...
The increasing complexity of a modern power grid highlights the need for advanced system identificat...
Artificial neural networks (ANNs) have been developed as adaptable, robust function approximators fo...
This paper provides a new technique for nonlinear identification of multiple turbogenerators in a fi...
This paper compares the performances of a multilayer perceptron neural network (MLPN) and a radial b...
The electric power system is a complex nonlinear time varying system that needs advanced intelligent...
This paper provides a novel method for nonlinear identification of multiple turbogenerators in a fiv...
This paper proposes a new and a novel technique based on Artificial Neural Networks (ANNs) for nonli...
The increasing complexity of modern power systems highlights the need for effective system identific...
This paper describes an on-line identification technique for modelling a turbogenerator system. The ...
In the past few decades, the rapid development of the United States power system has led to the cont...
This paper illustrates a new application of artificial neural network (ANN) observers in identifying...
A new approach to identify the nonlinear model of an induction machine using two generalized neurons...
Backpropagation algorithm is the most commonly used algorithm for training artificial neural network...
In the paper, neural network (NN) models for gas turbine diagnostics are studied and developed. The ...
This paper presents the application of a spiking neural network for online identification of generat...
The increasing complexity of a modern power grid highlights the need for advanced system identificat...
Artificial neural networks (ANNs) have been developed as adaptable, robust function approximators fo...
This paper provides a new technique for nonlinear identification of multiple turbogenerators in a fi...
This paper compares the performances of a multilayer perceptron neural network (MLPN) and a radial b...
The electric power system is a complex nonlinear time varying system that needs advanced intelligent...
This paper provides a novel method for nonlinear identification of multiple turbogenerators in a fiv...
This paper proposes a new and a novel technique based on Artificial Neural Networks (ANNs) for nonli...
The increasing complexity of modern power systems highlights the need for effective system identific...
This paper describes an on-line identification technique for modelling a turbogenerator system. The ...
In the past few decades, the rapid development of the United States power system has led to the cont...
This paper illustrates a new application of artificial neural network (ANN) observers in identifying...
A new approach to identify the nonlinear model of an induction machine using two generalized neurons...
Backpropagation algorithm is the most commonly used algorithm for training artificial neural network...
In the paper, neural network (NN) models for gas turbine diagnostics are studied and developed. The ...