An extensive analysis of the strong ground motion Mexican data base was conducted using Soft Computing (SC) techniques. A Neural Network NN is used to estimate both orthogonal components of the horizontal (PGAh) and vertical (PGAv) peak ground accelerations measured at rock sites during Mexican subduction zone earthquakes. The work discusses the development, training, and testing of this neural model. Attenuation phenomenon was characterized in terms of magnitude, epicentral distance and focal depth. Neural approximators were used instead of traditional regression techniques due to their flexibility to deal with uncertainty and noise. NN predictions follow closely measured responses exhibiting forecasting capabilities better than those of m...
This research aims at deriving a simple yet powerful ground motion prediction model for the Himalaya...
Soutenue à l'université de Tlemcen (Algérie)The main purpose of this works is to analyze the ability...
This thesis is devoted to an in-depth analysis of the ability of "Artificial Neural Networks" (ANN) ...
AbstractThe use of Artificial Neural Networks (ANN) is explored to predict peak ground accelerations...
. This paper present proposed new attenuation relations at rock sites for peak ground acceleration f...
An attenuation relationship model belonging to a region with a high earthquake hazard is important. ...
Recording of ground motions with high amplitudes of acceleration and velocity play a key role for d...
This paper aims to predict ground acceleration, speed, and maximum displacement using Artificial Neu...
A new model is derived to predict the peak ground acceleration (PGA) utilizing a hybrid method coupl...
AbstractA new model is derived to predict the peak ground acceleration (PGA) utilizing a hybrid meth...
Abstract—Recording of ground motions with high amplitudes of acceleration and velocity play a key ro...
A deep learning model is developed for the Next Generation Attenuation – Subduction database for pre...
AbstractThis paper presents and discusses the use of neural networks to determine strong ground moti...
It may not be possible to collect adequate records of strong ground motions in a short period of tim...
Hemos implementado una red neuronal de tres capas escondidas con 40 neuronas por capa para ser usada...
This research aims at deriving a simple yet powerful ground motion prediction model for the Himalaya...
Soutenue à l'université de Tlemcen (Algérie)The main purpose of this works is to analyze the ability...
This thesis is devoted to an in-depth analysis of the ability of "Artificial Neural Networks" (ANN) ...
AbstractThe use of Artificial Neural Networks (ANN) is explored to predict peak ground accelerations...
. This paper present proposed new attenuation relations at rock sites for peak ground acceleration f...
An attenuation relationship model belonging to a region with a high earthquake hazard is important. ...
Recording of ground motions with high amplitudes of acceleration and velocity play a key role for d...
This paper aims to predict ground acceleration, speed, and maximum displacement using Artificial Neu...
A new model is derived to predict the peak ground acceleration (PGA) utilizing a hybrid method coupl...
AbstractA new model is derived to predict the peak ground acceleration (PGA) utilizing a hybrid meth...
Abstract—Recording of ground motions with high amplitudes of acceleration and velocity play a key ro...
A deep learning model is developed for the Next Generation Attenuation – Subduction database for pre...
AbstractThis paper presents and discusses the use of neural networks to determine strong ground moti...
It may not be possible to collect adequate records of strong ground motions in a short period of tim...
Hemos implementado una red neuronal de tres capas escondidas con 40 neuronas por capa para ser usada...
This research aims at deriving a simple yet powerful ground motion prediction model for the Himalaya...
Soutenue à l'université de Tlemcen (Algérie)The main purpose of this works is to analyze the ability...
This thesis is devoted to an in-depth analysis of the ability of "Artificial Neural Networks" (ANN) ...