期刊论文详细信息
Proceedings of the International Conference on Coastal Engineering
APPLICATION OF BAYESIAN NETWORK AS A TOOL FOR COASTAL FLOODING IMPACT PREDICTION AT VARNA BAY (BULGARIA, WESTERN BLACK SEA)
Nikolay Valchev1  Bogdan Prodanov1  Petya Eftimova1  Nataliya Andreeva1 
[1]Institute of Oceanology - Bulgarian Academy of Sciences
关键词: coastal storms;    coastal hazards;    flooding;    impact assessment;    Bayesian network;   
DOI  :  10.9753/icce.v35.management.14
学科分类:建筑学
来源: Coastal Engineering Research Council
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【 摘 要 】
Storms and related disasters are one of the most important phenomena producing coastal hazards and endangering human life and occupation. While coastal response to extreme forcing conditions can be evaluated using numerical models, there is increasing need for less computationally expensive probability tools that can quickly produce results thus contributing to more effective coastal risk management. A possible response to this demand is a Bayesian Network, which relates near-shore storm conditions to their onshore flood potential and ultimately translates them to relevant impact (consequences) expressed as damage to various receptor groups. Bayesian Network can constitute a module in an early warning system or can be used as a planning tool to evaluate the long-term vulnerability due to multiple coastal hazards, under various climate-related scenarios. The present study describes the application of a Bayesian Network for Varna Bay building on developments made in the framework of the RISC-KIT (Resilience-Increasing Strategies for Coasts – toolKIT) project. Moreover, several alternatives involving disaster risk reduction measures were examined both in present and future climate conditions. It was found that the analysis of results through the prism of the Bayesian Network provides a useful insight of the problems at the study site making it a reliable coastal impact prediction tool.
【 授权许可】

CC BY   

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