Smith C, Doherty J, Jin Y. Multi-objective evolutionary recurrent neural network ensemble for prediction of computational fluid dynamic simulations. In: 2014 IEEE Congress on Evolutionary Computation (CEC). IEEE; 2014: 2609-2616.Using a surrogate model to evaluate the expensive fitness of candidate solutions in an evolutionary algorithm can significantly reduce the overall computational cost of optimization tasks. In this paper we present a recurrent neural network ensemble that is used as a surrogate for the long-term prediction of computational fluid dynamic simulations. A hybrid multi-objective evolutionary algorithm that trains and optimizes the structure of the recurrent neural networks is introduced. Selection and combination of ind...
The conventional ways of constructing artificial neural network (ANN) for a problem generally presum...
The multi-scale nature of gaseous flows poses tremendous difficulties for theoretical and numerical ...
Evolutionary neural networks combine two of the most powerful areas of computing, evolutionary algor...
Smith C, Doherty J, Jin Y. Recurrent neural network ensembles for convergence prediction in surrogat...
Smith C, Jin Y. Evolutionary multi-objective generation of recurrent neural network ensembles for ti...
Automatic optimisers can play a vital role in the design and development of engineering systems and ...
In this thesis, artificial neural networks (ANNs) are used for prediction of financial and macroecon...
The modeling of complex physical and biological phenomena has long been the domain of computational ...
To predict the 100 missing values from a time series of 5000 data points, given for the IJCNN 2004 t...
To predict the 100 missing values from the time series consisting of 5000 data given for the IJCNN 2...
Computational fluid dynamic (CFD) simulations present numerous challenges in the domain of artificia...
Recurrent Neural Networks (RNNs) and Long Short-Term Memory (LSTM) networks are utilized to capture ...
In contemporary practices, Computational Fluid Dynamics (CFD) based tools are increasingly applied t...
In many modeling problems that are based on input–output data, information about a plethora of varia...
A convolution neural network (CNN)-based approach for the construction of reduced order surrogate mo...
The conventional ways of constructing artificial neural network (ANN) for a problem generally presum...
The multi-scale nature of gaseous flows poses tremendous difficulties for theoretical and numerical ...
Evolutionary neural networks combine two of the most powerful areas of computing, evolutionary algor...
Smith C, Doherty J, Jin Y. Recurrent neural network ensembles for convergence prediction in surrogat...
Smith C, Jin Y. Evolutionary multi-objective generation of recurrent neural network ensembles for ti...
Automatic optimisers can play a vital role in the design and development of engineering systems and ...
In this thesis, artificial neural networks (ANNs) are used for prediction of financial and macroecon...
The modeling of complex physical and biological phenomena has long been the domain of computational ...
To predict the 100 missing values from a time series of 5000 data points, given for the IJCNN 2004 t...
To predict the 100 missing values from the time series consisting of 5000 data given for the IJCNN 2...
Computational fluid dynamic (CFD) simulations present numerous challenges in the domain of artificia...
Recurrent Neural Networks (RNNs) and Long Short-Term Memory (LSTM) networks are utilized to capture ...
In contemporary practices, Computational Fluid Dynamics (CFD) based tools are increasingly applied t...
In many modeling problems that are based on input–output data, information about a plethora of varia...
A convolution neural network (CNN)-based approach for the construction of reduced order surrogate mo...
The conventional ways of constructing artificial neural network (ANN) for a problem generally presum...
The multi-scale nature of gaseous flows poses tremendous difficulties for theoretical and numerical ...
Evolutionary neural networks combine two of the most powerful areas of computing, evolutionary algor...