Prediction of building damage induced by tunnelling through an optimized artificial neural network

被引:0
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作者
S. Moosazadeh
E. Namazi
H. Aghababaei
A. Marto
H. Mohamad
M. Hajihassani
机构
[1] Sahand University of Technology,Faculty of Mining Engineering
[2] COWI,Department of Geotechnics and Transportation
[3] Universiti Teknologi Malaysia,Civil and Environmental Engineering Department
[4] Universiti Teknologi Petronas,Department of Mining Engineering
[5] Urmia University,undefined
来源
关键词
Building damage; Ground movement; Tunnelling; Artificial neural network; Particle swarm optimization;
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学科分类号
摘要
Ground surface movement due to tunnelling in urban areas imposes strains to the adjacent buildings through distortion and rotation, and may consequently cause structural damage. The methods of building damage estimation are generally based on a two-stage procedure in which ground movement in the greenfield condition is estimated empirically, and then, a separate method based on structural mechanic principles is used to assess the damage. This paper predicts the building damage based on a model obtained from artificial neural network and a particle swarm optimization algorithm. To develop the model, the input and output parameters were collected from Line No. 2 of the Karaj Urban Railway Project in Iran. Accordingly, two case studies of damaged buildings were used to assess the ability of this model to predict the damage. Comparison with the measured data indicated that the model achieved the satisfactory results.
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页码:579 / 591
页数:12
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