Neural networks are increasingly popular in geophysics. Because they are universal approximators, these tools can approximate any continuous function with an arbitrary precision. Hence, they may yield important contributions to finding solutions to a variety of geophysical applications. However, knowledge of many methods and techniques recently developed to increase the performance and to facilitate the use of neural networks does not seem to be widespread in the geophysical community. Therefore, the power of these tools has not yet been explored to their full extent. In this paper, techniques are described for faster training, better overall performance, i.e., generalization,and the automatic estimation of network size and arch...
The focus of this paper is on the neural network modelling approach that has gained increasing recog...
Neural networks are powerful and elegant computational tools that can be used in the analysis of geo...
The inversion of most geophysical data sets is complex due to the inherent non-linearity of the inv...
Artificial neural networks are computational models widely used in geospatial analysis for data clas...
study their time evolution in years. In order to find the best NN for the time predictions, we teste...
International audienceNumerical models are used to simulate the evolution of atmosphere or ocean dyn...
Artificial neural networks (ANN) have been used in a variety of problems in the fields of science an...
Published as Open Access article.Artificial neural networks (ANNs) are a form of artificial intellig...
The main objectives of geosciences is to find the current state of the Earth -- i.e., solve the corr...
Neural networks have emerged as a powerful computational technique for modeling nonlinear multivaria...
Despite the increasingly successful application of neural networks to many problems in the geoscienc...
Artificial Neural Networks (ANNs) are used in numerous engineering and scientific disciplines as an ...
AbstractThe applications of intelligent techniques have increased exponentially in recent days to st...
The focus of this paper is on the neural network modelling approach that has gained increasing recog...
Artificial neural networks are an interesting method for modelling phenomena, including spatial phen...
The focus of this paper is on the neural network modelling approach that has gained increasing recog...
Neural networks are powerful and elegant computational tools that can be used in the analysis of geo...
The inversion of most geophysical data sets is complex due to the inherent non-linearity of the inv...
Artificial neural networks are computational models widely used in geospatial analysis for data clas...
study their time evolution in years. In order to find the best NN for the time predictions, we teste...
International audienceNumerical models are used to simulate the evolution of atmosphere or ocean dyn...
Artificial neural networks (ANN) have been used in a variety of problems in the fields of science an...
Published as Open Access article.Artificial neural networks (ANNs) are a form of artificial intellig...
The main objectives of geosciences is to find the current state of the Earth -- i.e., solve the corr...
Neural networks have emerged as a powerful computational technique for modeling nonlinear multivaria...
Despite the increasingly successful application of neural networks to many problems in the geoscienc...
Artificial Neural Networks (ANNs) are used in numerous engineering and scientific disciplines as an ...
AbstractThe applications of intelligent techniques have increased exponentially in recent days to st...
The focus of this paper is on the neural network modelling approach that has gained increasing recog...
Artificial neural networks are an interesting method for modelling phenomena, including spatial phen...
The focus of this paper is on the neural network modelling approach that has gained increasing recog...
Neural networks are powerful and elegant computational tools that can be used in the analysis of geo...
The inversion of most geophysical data sets is complex due to the inherent non-linearity of the inv...