Vulnerability of human beings exposed to a catastrophic disaster is affected by multiple factors that include hazard intensity, environment, and individual characteristics. The traditional approach to vulnerability assessment, based on the aggregate-area method and unsupervised learning, cannot incorporate spatial information; thus, vulnerability can be only roughly assessed. In this article, we propose Bayesian network (BN) and spatial analysis techniques to mine spatial data sets to evaluate the vulnerability of human beings. In our approach, spatial analysis is leveraged to preprocess the data; for example, kernel density analysis (KDA) and accumulative road cost surface modeling (ARCSM) are employed to quantify the influence of geofeatu...
Hazards, disasters cause insecurity for people and society. Critical infrastructure plays an importa...
NSFC [40601077/D0120, 40471111/D0120]; MOST [2007AA12Z233, O88RA204SA]; PolyU [H-ZG20
This paper describes an investigation on the usefulness of Bayesian Networks in the safety assessmen...
Prediction of natural disasters and their consequences is difficult due to the uncertainties and com...
Prediction of natural disasters and their consequences is difficult due to the uncertainties and com...
One of the most important applications of spatial data regards the ability to inform decision makers...
This article presents a novel methodology to assess flood risk to people by integrating people's vul...
Emergency management and long-term planning in coastal areas depend on detailed assessments (meter s...
Avalanche disasters are associated with significant monetary losses. It is thus crucial that avalanc...
A Bayesian network methodology is developed for performing infrastructure seismic risk assessment an...
Abstract. Avalanche disasters are associated with significant monetary losses. It is thus crucial th...
AbstractThe current assessment index of the geological hazard vulnerability assessment for mountain ...
The impacts of earthquakes and secondary disasters on ecosystems and the environment are attracting ...
A spatial and causal probabilistic methodology is introduced for risk assessment based on the coupli...
This paper describes an investigation on the usefulness of Bayesian Networks in the safety assessmen...
Hazards, disasters cause insecurity for people and society. Critical infrastructure plays an importa...
NSFC [40601077/D0120, 40471111/D0120]; MOST [2007AA12Z233, O88RA204SA]; PolyU [H-ZG20
This paper describes an investigation on the usefulness of Bayesian Networks in the safety assessmen...
Prediction of natural disasters and their consequences is difficult due to the uncertainties and com...
Prediction of natural disasters and their consequences is difficult due to the uncertainties and com...
One of the most important applications of spatial data regards the ability to inform decision makers...
This article presents a novel methodology to assess flood risk to people by integrating people's vul...
Emergency management and long-term planning in coastal areas depend on detailed assessments (meter s...
Avalanche disasters are associated with significant monetary losses. It is thus crucial that avalanc...
A Bayesian network methodology is developed for performing infrastructure seismic risk assessment an...
Abstract. Avalanche disasters are associated with significant monetary losses. It is thus crucial th...
AbstractThe current assessment index of the geological hazard vulnerability assessment for mountain ...
The impacts of earthquakes and secondary disasters on ecosystems and the environment are attracting ...
A spatial and causal probabilistic methodology is introduced for risk assessment based on the coupli...
This paper describes an investigation on the usefulness of Bayesian Networks in the safety assessmen...
Hazards, disasters cause insecurity for people and society. Critical infrastructure plays an importa...
NSFC [40601077/D0120, 40471111/D0120]; MOST [2007AA12Z233, O88RA204SA]; PolyU [H-ZG20
This paper describes an investigation on the usefulness of Bayesian Networks in the safety assessmen...