WANG Zhijun, GU Chongshi, ZHANG Zhijun. Evaluation Method of Loss-of-life Caused by Dam Breach Based on GIS and Neural Networks Optimized by Genetic Algorithms[J]. Geomatics and Information Science of Wuhan University, 2010, 35(1): 64-68.
Citation: WANG Zhijun, GU Chongshi, ZHANG Zhijun. Evaluation Method of Loss-of-life Caused by Dam Breach Based on GIS and Neural Networks Optimized by Genetic Algorithms[J]. Geomatics and Information Science of Wuhan University, 2010, 35(1): 64-68.

Evaluation Method of Loss-of-life Caused by Dam Breach Based on GIS and Neural Networks Optimized by Genetic Algorithms

Funds: 国家科技支撑计划资助项目(2006BAC14B03);国家自然科学基金资助项目(50539010,50579010,50539030,50539110);中国水电工程顾问集团公司科技资助项目(CHC-KJ-2007-02)
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  • Received Date: November 11, 2009
  • Revised Date: November 11, 2009
  • Published Date: January 04, 2010
  • Considering many geographical spatial objects and influence factors in the process of loss-of-life evaluation caused by dam breach,an evaluation method of loss-of-life caused by dam breach based on GIS and neural networks optimized by genetic algorithms is proposed.The calculation model for estimating loss-of-life caused by dam breach is established based on GIS spatial information grid model.The influence factors of loss-of-life caused by dam breach were analyzed.The evaluation index system is established by grey relation degree model.A fast evaluation system of loss-of-life caused by dam breach based on GIS is implemented.Scheme and GIS technologies for the system were analyzed.Application shows accuracies and good effects of the evaluated method.
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