A probabilistic seismic demand model that relates ground motion intensity measures (IMs) to the structural demand measures is a useful tool for reliability analysis of structures. It is common to utilize the scalar seismic parameters or a vector of a few seismic parameters to reveal ground motion uncertainty. However, for the qualification of an IM for representing the ground motion uncertainty, a larger vector of greater seismic component is required. This study aims to use more parameters as vector IMs in the demand model to achieve better estimation of the ground motion uncertainty. In this study, three-layer feed forward neural network was used to predict the seismic demand model of the mid-rise reinforced concrete buildings for pulse-l...
ABSTRACT: A neural network based approach to model the seismic response of multi-story frame buildin...
This research aims at deriving a simple yet powerful ground motion prediction model for the Himalaya...
This paper aims to predict ground acceleration, speed, and maximum displacement using Artificial Neu...
A probabilistic seismic demand model that relates ground motion intensity measures (IMs) to the stru...
This study utilizes Artificial Neural Networks to predict the structural responses multi-story reinf...
Fragility function that defines the probability of exceedance of a damage state given a ground motio...
The objective of this study is to reveal the sufficiency of neural networks (NN) as a securer, quick...
Nonstructural components (NSCs) are the systems that are attached to the floors of a building struct...
In this paper, logical analysis of data (LAD) is used to predict the seismic response of building st...
Ground-motion prediction equations (GMPEs) are used to express seismic intensity mea-sures as a func...
In this study, an Artificial Neural Networks (ANN) model is built and verified for quick estimation ...
SummaryIn this study, an Artificial Neural Networks (ANN) model is built and verified for quick esti...
The strong motion earthquake could cause the building damage in case of the building not considered ...
Recordings from recent earthquakes have provided evidence that ground motions in the near field of a...
Artificial Neural Network (ANN) method is a prediction tool which is widely used in various fields o...
ABSTRACT: A neural network based approach to model the seismic response of multi-story frame buildin...
This research aims at deriving a simple yet powerful ground motion prediction model for the Himalaya...
This paper aims to predict ground acceleration, speed, and maximum displacement using Artificial Neu...
A probabilistic seismic demand model that relates ground motion intensity measures (IMs) to the stru...
This study utilizes Artificial Neural Networks to predict the structural responses multi-story reinf...
Fragility function that defines the probability of exceedance of a damage state given a ground motio...
The objective of this study is to reveal the sufficiency of neural networks (NN) as a securer, quick...
Nonstructural components (NSCs) are the systems that are attached to the floors of a building struct...
In this paper, logical analysis of data (LAD) is used to predict the seismic response of building st...
Ground-motion prediction equations (GMPEs) are used to express seismic intensity mea-sures as a func...
In this study, an Artificial Neural Networks (ANN) model is built and verified for quick estimation ...
SummaryIn this study, an Artificial Neural Networks (ANN) model is built and verified for quick esti...
The strong motion earthquake could cause the building damage in case of the building not considered ...
Recordings from recent earthquakes have provided evidence that ground motions in the near field of a...
Artificial Neural Network (ANN) method is a prediction tool which is widely used in various fields o...
ABSTRACT: A neural network based approach to model the seismic response of multi-story frame buildin...
This research aims at deriving a simple yet powerful ground motion prediction model for the Himalaya...
This paper aims to predict ground acceleration, speed, and maximum displacement using Artificial Neu...