Within moments following an earthquake event, observations collected from the affected area can be used to define a picture of expected losses and to provide emergency services with accurate information. A Bayesian Network framework could be used to update the prior loss estimates based on ground-motion prediction equations and fragility curves, considering various field observations (i.e., evidence). While very appealing in theory, Bayesian Networks pose many challenges when applied to real-world infrastructure systems, especially in terms of scalability. The present study explores the applicability of approximate Bayesian inference, based on Monte-Carlo Markov-Chain sampling algorithms, to a real-world network of roads and built areas whe...
Bayesian Networks (BNs) have the ability to perform inference on uncertain variables given evidence ...
This study proposes a probabilistic framework for near real-time seismic damage assessment that expl...
The insurance industry relies on both commercial and in-house software packages to quantify financia...
Within moments following an earthquake event, observations collected from the affected area can be u...
International audienceWithin moments following an earthquake event, observations collected from the ...
International audienceThe loss assessment of infrastructure systems has emerged as an essential aspe...
International audienceThe loss assessment of infrastructure systems has emerged as an essential aspe...
This paper presents an approach for the rapid seismic loss assessment of infrastructure systems, whe...
This study proposes a probabilistic framework for near real-time seismic damage assessment that expl...
A Bayesian network methodology is developed for performing infrastructure seismic risk assessment an...
Natural and human-made disasters can disrupt infrastructures even if they are designed to be hazard ...
Bayesian Networks (BNs) have the ability to perform inference on uncertain variables given evidence ...
Natural and human-made disasters can disrupt infrastructures even if they are designed to be hazard ...
Natural and human-made disasters can disrupt infrastructures even if they are designed to be hazard ...
Bayesian Networks (BNs) have the ability to perform inference on uncertain variables given evidence ...
Bayesian Networks (BNs) have the ability to perform inference on uncertain variables given evidence ...
This study proposes a probabilistic framework for near real-time seismic damage assessment that expl...
The insurance industry relies on both commercial and in-house software packages to quantify financia...
Within moments following an earthquake event, observations collected from the affected area can be u...
International audienceWithin moments following an earthquake event, observations collected from the ...
International audienceThe loss assessment of infrastructure systems has emerged as an essential aspe...
International audienceThe loss assessment of infrastructure systems has emerged as an essential aspe...
This paper presents an approach for the rapid seismic loss assessment of infrastructure systems, whe...
This study proposes a probabilistic framework for near real-time seismic damage assessment that expl...
A Bayesian network methodology is developed for performing infrastructure seismic risk assessment an...
Natural and human-made disasters can disrupt infrastructures even if they are designed to be hazard ...
Bayesian Networks (BNs) have the ability to perform inference on uncertain variables given evidence ...
Natural and human-made disasters can disrupt infrastructures even if they are designed to be hazard ...
Natural and human-made disasters can disrupt infrastructures even if they are designed to be hazard ...
Bayesian Networks (BNs) have the ability to perform inference on uncertain variables given evidence ...
Bayesian Networks (BNs) have the ability to perform inference on uncertain variables given evidence ...
This study proposes a probabilistic framework for near real-time seismic damage assessment that expl...
The insurance industry relies on both commercial and in-house software packages to quantify financia...