Non-ductile, concentrically braced frames are a common lateral force-resisting system used in low-to-moderate seismic regions in the USA. However, their dynamic responses to earthquake ground motions have not been well examined. Structural engineers usually design them conservatively as brittle structures with a small response-modification factor, while building codes restrict their use to low-rise buildings. In this paper, seismic responses of two typical non-ductile concentrically braced frames, one of three storeys and one of nine storeys, were predicted through a neural network model. Twelve input parameters, covering non-linear features from structural components and the uncertain nature of earthquake ground motions, were used in the modelling. Numerical results extracted from thousands of non-linear time-history analyses under one set of moderate ground motions were used to develop the model. Sensitivity analyses were conducted to evaluate the impacts of input parameters on the peak inter-storey drift ratio, designed as an output parameter in the model. The results are shown to be promising considering the uncertainties in both ground motions and the characteristics of structures.
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March 2017
Research Article|
December 08 2016
Neural network model for seismic response of braced buildings Available to Purchase
Bilge Doran, PhD;
Bilge Doran, PhD
Associate Professor
Department of Civil Engineering, Faculty of Civil Engineering, Yıldız Technical University, Istanbul, Turkey
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Jiehua ‘Jay’ Shen, PhD;
Jiehua ‘Jay’ Shen, PhD
Associate Professor
Department of Civil, Construction and Environmental Engineering, Iowa State University, Ames, IO, USA
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Rou Wen, PhD;
Rou Wen, PhD
Civil Engineer
Sharma & Associates, Inc., Countryside, IL, USA
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Bulent Akbas, PhD;
Bulent Akbas, PhD
Professor
Department of Civil Engineering, Gebze Technical University, Kocaeli, Turkey
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Ali Bozer, PhD
Ali Bozer, PhD
Assistant Professor
Department of Civil Engineering, Faculty of Engineering, Nuh Naci Yazgan University, Kayseri, Turkey (corresponding author: bozerali@gmail.com; abozer@nny.edu.tr)
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Publisher: Emerald Publishing
Received:
January 25 2016
Accepted:
November 09 2016
Online ISSN: 1751-7702
Print ISSN: 0965-0911
ICE Publishing: All rights reserved
2016
Proceedings of the Institution of Civil Engineers - Structures and Buildings (2017) 170 (3): 159–167.
Article history
Received:
January 25 2016
Accepted:
November 09 2016
Citation
Doran B, Shen J‘, Wen R, Akbas B, Bozer A (2017), "Neural network model for seismic response of braced buildings". Proceedings of the Institution of Civil Engineers - Structures and Buildings, Vol. 170 No. 3 pp. 159–167, doi: https://doi.org/10.1680/jstbu.16.00020
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