Seismic human loss estimation for an earthquake disaster using neural network

被引:0
作者
H. Aghamohammadi
M. S. Mesgari
A. Mansourian
D. Molaei
机构
[1] KNToosi University of Technology,Department of Geospatial Information System Engineering
来源
International Journal of Environmental Science and Technology | 2013年 / 10卷
关键词
Back propagation; Building damage; Injuries; Rescue operation;
D O I
暂无
中图分类号
学科分类号
摘要
In Iran, earthquakes cause enormous damage to the people and economy. If there is a proper estimation of human losses in an earthquake disaster, it could be appropriately responded and its impacts and losses will be decreased. Neural networks can be trained to solve problems involving imprecise and highly complex nonlinear data. Based on the different earthquake scenarios and diverse kind of constructions, it is difficult to estimate the number of injured people. With respect to neural network’s capabilities, this paper describes a back propagation neural network method for modeling and estimating the severity and distribution of human loss as a function of building damage in the earthquake disaster. Bam earthquake data in 2003 were used to train this neural network. The final results demonstrate that this neural network model can reveal much more accurate estimation of fatalities and injuries for different earthquakes in Iran and it can provide the necessary information required to develop realistic mitigation policies, especially in rescue operation.
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收藏
页码:931 / 939
页数:8
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