his paper looks at the selection of some of the design parameters which are crucially important for the training of a valid artificial neural network (ANN) model of processes with strong nonlinearities. Arbitrary selection of data sample time and network structure can result in an ANN model with unacceptable prediction errors. Useful guidelines concerning data sample time and model structure can be obtained by studying local linear models. The Akaike's final prediction error (AFPE) and Akaike's information criterion (AIC) penalise overparameterised networks and are therefore useful indicators of model parsimony. They can be used in conjunction with correlation analysis for model selection and validation
This paper discussed about the neural network models at nonlinear autoregressive process which is ap...
A biological neurone receives inputs from many sources, combines and presents them as a non-linear o...
Neural network is a web of million numbers of inter-connected neurons which executes parallel proces...
his paper looks at the selection of some of the design parameters which are crucially important for ...
The emergence of Artificial Neural Networks (ANNs) has rekindled interest in nonlinear control theor...
Although the non-linear modelling capability of neural networks is widely accepted there remain many...
Artificial neural network (ANN) is one of the most widely used methods to develop accurate predictiv...
NoThe purpose of this study was to determine whether artificial neural network (ANN) programs implem...
Neural networks can be viewed as nonlinear models, where the weights are parameters to be estimated....
This paper reviews the model structures and learning rules of four commonly used artificial neural n...
Automated recognition of process variation patterns using an artificial neural network (ANN) model c...
Artificial neural networks are empirical models which adjust their internal parameters, using a suit...
Artificial neuron network (ANN) is non linear mapping structures based on the function of human inte...
The analysis of a time series is a problem well known to statisticians. Neural networks form the bas...
ABSTRACT - Traditional statistical models as tools for summarizing patterns and regularities in obse...
This paper discussed about the neural network models at nonlinear autoregressive process which is ap...
A biological neurone receives inputs from many sources, combines and presents them as a non-linear o...
Neural network is a web of million numbers of inter-connected neurons which executes parallel proces...
his paper looks at the selection of some of the design parameters which are crucially important for ...
The emergence of Artificial Neural Networks (ANNs) has rekindled interest in nonlinear control theor...
Although the non-linear modelling capability of neural networks is widely accepted there remain many...
Artificial neural network (ANN) is one of the most widely used methods to develop accurate predictiv...
NoThe purpose of this study was to determine whether artificial neural network (ANN) programs implem...
Neural networks can be viewed as nonlinear models, where the weights are parameters to be estimated....
This paper reviews the model structures and learning rules of four commonly used artificial neural n...
Automated recognition of process variation patterns using an artificial neural network (ANN) model c...
Artificial neural networks are empirical models which adjust their internal parameters, using a suit...
Artificial neuron network (ANN) is non linear mapping structures based on the function of human inte...
The analysis of a time series is a problem well known to statisticians. Neural networks form the bas...
ABSTRACT - Traditional statistical models as tools for summarizing patterns and regularities in obse...
This paper discussed about the neural network models at nonlinear autoregressive process which is ap...
A biological neurone receives inputs from many sources, combines and presents them as a non-linear o...
Neural network is a web of million numbers of inter-connected neurons which executes parallel proces...