Most of the methods developed for the prediction of bridge afflux are generally based on either energy or momentum equations. Recent studies have shown that the energy method, which is one of the four bridge subroutines within the commonly used program HEC-RAS for computing water surface profiles along rivers, produced more accurate results than three other methods (momentum, WSPRO and Yarnell's methods) when applied to bridge afflux data obtained from experiments conducted in a two-stage channel. This work developed three artificial intelligence models (the radial basis neural network, the multi-layer perceptron and the adaptive neuro-fuzzy inference system) as alternatives to the energy method. Multiple linear and multiple non-linear regression models were also used in the analysis. The results showed that the performance of the adaptive neuro fuzzy inference system in predicting bridge afflux was superior to the other models.
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June 2011
Research Article|
June 01 2011
Bridge afflux estimation using artificial intelligence systems Available to Purchase
Galip Seckin, MSc, PhD;
Galip Seckin, MSc, PhD
Associate Professor
Department of Civil Engineering, Cukurova University, Balcali/Adana, Turkey
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Murat Cobaner, MSc, PhD;
Murat Cobaner, MSc, PhD
Assistant Professor
Department of Civil Engineering, Erciyes University, Talas/Kayseri, Turkey
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Hatice Ozmen-Cagatay, MSc, PhD;
Hatice Ozmen-Cagatay, MSc, PhD
Assistant Professor
Department of Civil Engineering, Cukurova University, Balcali/Adana, Turkey
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Serter Atabay, MSc, PhD;
Serter Atabay, MSc, PhD
Assistant Professor
Department of Civil Engineering, American University of Sharjah, Sharjah, United Arab Emirates
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Kutsi S. Erduran, MSc, PhD
Kutsi S. Erduran, MSc, PhD
Associate Professor
Department of Civil Engineering, Nigde University, Nigde, Turkey
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Publisher: Emerald Publishing
Revision Received:
September 16 2010
Accepted:
February 23 2011
Online ISSN: 1751-7729
Print ISSN: 1741-7589
ICE Publishing: All rights reserved
2011
Proceedings of the Institution of Civil Engineers - Water Management (2011) 164 (6): 283–293.
Article history
Revision Received:
September 16 2010
Accepted:
February 23 2011
Citation
Seckin G, Cobaner M, Ozmen-Cagatay H, Atabay S, Erduran KS (2011), "Bridge afflux estimation using artificial intelligence systems". Proceedings of the Institution of Civil Engineers - Water Management, Vol. 164 No. 6 pp. 283–293, doi: https://doi.org/10.1680/wama.2011.164.6.283
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