The research on structural damage identification using rough set and integrated neural network

Frontiers of Mechanical Engineering - Tập 8 - Trang 305-310 - 2013
Juelong Li1, Hairui Li2, Jianchun Xing2, Qiliang Yang2
1Naval-port Airport Barracks Department of Navy Logistics, Beijing, China
2PLA University of Science & Technology, Nanjing, China

Tóm tắt

A huge amount of information and identification accuracy in large civil engineering structural damage identification has not been addressed yet. To efficiently solve this problem, a new damage identification method based on rough set and integrated neural network is first proposed. In brief, rough set was used to reduce attributes so as to decrease spatial dimensions of data and extract effective features. And then the reduced attributes will be put into the sub-neural network. The sub-neural network can give the preliminary diagnosis from different aspects of damage. The decision fusion network will give the final damage identification results. The identification examples show that this method can simplify the redundant information to reduce the neural network model, making full use of the range of information to effectively improve the accuracy of structural damage identification.

Tài liệu tham khảo

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