This poster presents a New Zealand-specific simulation-based ground motion model (GMM) developed using an artificial neural network (ANN). The rationale behind the model development is to leverage the advantages of physics-based ground motion simulations in a manner that is computationally tractable for use in probabilistic seismic hazard analysis (PSHA), when a large number of seismic sources are considered, principally in the representation of background, area, and distributed seismicity sources; as well as another means for synthesis of simulation results. We demonstrate the development of such a model using simulation data from both validation of historical events (Lee et al. (2020); approximately 1000 simulations), as well as future p...
This paper aims to predict ground acceleration, speed, and maximum displacement using Artificial Neu...
Motivation Densification of strong-motion station networks, their increased sensitivity, and the de...
Ground-motion prediction equations (GMPEs) are used to express seismic intensity mea-sures as a func...
Probabilistic seismic hazard analysis (PSHA) based on physics-based simulations offers many advanta...
Accurately characterizing ground motions is crucial for estimating probabilistic seismic hazard and ...
Accurate description of ground motion characteristics is a vital step in probabilistic seismic hazar...
Ground-motion models have gained foremost attention during recent years for being capable of predict...
This poster presents the computational workflow and results of version 18.6 of probabilistic seismic...
This paper is concerned with modelling and simulation of near-source earthquake ground motion. Recen...
Cette thèse est consacrée à une analyse approfondie de la capacité des "réseaux de neurones artifici...
This paper presents the computational workflow and preliminary results of probabilistic seismic haz...
In this article, a novel strategy to generate broadband earthquake ground motions from the results o...
This research aims at deriving a simple yet powerful ground motion prediction model for the Himalaya...
A deep learning model is developed for the Next Generation Attenuation – Subduction database for pre...
Earthquake-induced ground motions can be altered by various factors that are associated with the cha...
This paper aims to predict ground acceleration, speed, and maximum displacement using Artificial Neu...
Motivation Densification of strong-motion station networks, their increased sensitivity, and the de...
Ground-motion prediction equations (GMPEs) are used to express seismic intensity mea-sures as a func...
Probabilistic seismic hazard analysis (PSHA) based on physics-based simulations offers many advanta...
Accurately characterizing ground motions is crucial for estimating probabilistic seismic hazard and ...
Accurate description of ground motion characteristics is a vital step in probabilistic seismic hazar...
Ground-motion models have gained foremost attention during recent years for being capable of predict...
This poster presents the computational workflow and results of version 18.6 of probabilistic seismic...
This paper is concerned with modelling and simulation of near-source earthquake ground motion. Recen...
Cette thèse est consacrée à une analyse approfondie de la capacité des "réseaux de neurones artifici...
This paper presents the computational workflow and preliminary results of probabilistic seismic haz...
In this article, a novel strategy to generate broadband earthquake ground motions from the results o...
This research aims at deriving a simple yet powerful ground motion prediction model for the Himalaya...
A deep learning model is developed for the Next Generation Attenuation – Subduction database for pre...
Earthquake-induced ground motions can be altered by various factors that are associated with the cha...
This paper aims to predict ground acceleration, speed, and maximum displacement using Artificial Neu...
Motivation Densification of strong-motion station networks, their increased sensitivity, and the de...
Ground-motion prediction equations (GMPEs) are used to express seismic intensity mea-sures as a func...