In a particular case of behavioural model reduction by ANNs, a validity domain shortening has been found. In mechanics, as in other domains, the notion of validity domain allows the engineer to choose a valid model for a particular analysis or simulation. In the study of mechanical behaviour for a cantilever beam (using linear and non-linear models), Multi-Layer Perceptron (MLP) Backpropagation (BP) networks have been applied as model reduction technique. This reduced model is constructed to be more efficient than the non-reduced model. Within a less extended domain, the ANN reduced model estimates correctly the non-linear response, with a lower computational cost. It has been found that the neural network model is not able to approximate t...
© 2005 EUCENTRE. All rights reserved. An artificial neural network (ANN) model was developed using p...
A method is developed to incorporate neural network model based upon the Backpropagation algorithm f...
The nonlinear modelling ability of neural networks has been widely recognised as an effective tool t...
International audienceThis paper presents the study of a neural network-based technique used to crea...
This paper investigates the utilisution of back propagation neural networlu (NNs) for modelling flex...
Applicability of artificial neural networks is examined in determining the natural frequencies of in...
A back propagation artificialneuralnetwork (BP ANN) is proposed as a tool for numerical modelling of...
Mathematical models of physical systems are used, among other purposes, to improve our understanding...
The paper presents a technique for generating concise neural network models of physical systems. The...
The use of continuum models for the analysis of discrete built-up complex aerospace structures is an...
An artificial neural network (ANN) model was developed using past experimental data on shear failure...
Abstract—In this study, natural frequencies of the prismatical steel beams with various geometrical ...
Abstract – Neural networks are used for identification and solving the coupled equations of motion o...
Recently optimization of structural parameters like stiffness coefficient and damping coefficient, u...
This study investigates the efficiency of artificial neural networks (ANNs) in health monitoring of ...
© 2005 EUCENTRE. All rights reserved. An artificial neural network (ANN) model was developed using p...
A method is developed to incorporate neural network model based upon the Backpropagation algorithm f...
The nonlinear modelling ability of neural networks has been widely recognised as an effective tool t...
International audienceThis paper presents the study of a neural network-based technique used to crea...
This paper investigates the utilisution of back propagation neural networlu (NNs) for modelling flex...
Applicability of artificial neural networks is examined in determining the natural frequencies of in...
A back propagation artificialneuralnetwork (BP ANN) is proposed as a tool for numerical modelling of...
Mathematical models of physical systems are used, among other purposes, to improve our understanding...
The paper presents a technique for generating concise neural network models of physical systems. The...
The use of continuum models for the analysis of discrete built-up complex aerospace structures is an...
An artificial neural network (ANN) model was developed using past experimental data on shear failure...
Abstract—In this study, natural frequencies of the prismatical steel beams with various geometrical ...
Abstract – Neural networks are used for identification and solving the coupled equations of motion o...
Recently optimization of structural parameters like stiffness coefficient and damping coefficient, u...
This study investigates the efficiency of artificial neural networks (ANNs) in health monitoring of ...
© 2005 EUCENTRE. All rights reserved. An artificial neural network (ANN) model was developed using p...
A method is developed to incorporate neural network model based upon the Backpropagation algorithm f...
The nonlinear modelling ability of neural networks has been widely recognised as an effective tool t...