Author | Senouci, Ahmed B. |
Author | Abdul-Salam, M. Ayman |
Available date | 2009-11-25T13:04:40Z |
Publication Date | 1998 |
Publication Name | Engineering Journal of Qatar University |
Citation | Engineering Journal of Qatar University, 1998, Vol. 11, Pages 117-132. |
URI | http://hdl.handle.net/10576/7890 |
Abstract | This paper discusses the development and the implementation of a neural network for the depth prediction of singly-reinforced rectangular concrete beams. The procedure of the American Concrete Institute (ACI-318 1995) was used as the basis for the development of the proposed network. A training set of 56 cases was used to train the network. The network adequately learned the training examples with an average training error of 3.0 percent. A testing set of 19 cases was used to validate the network. The network was able to predict the correct beam depth with an average error of 6.8 percent. A case study, where 878 new design cases were considered, was conducted to demonstrate the system's generalization and fault-tolerance properties. The network showed good generalization and fault-tolerance properties since it was able to predict the correct beam depths with an average error of 9.2 percent |
Language | en |
Publisher | Qatar University |
Subject | Engineering: Research Papers
|
Title | Prediction Of Reinforced Concrete Beam Depth Using Neural Networks |
Type | Article |
Pagination | 117-132 |
Volume Number | 11 |
dc.accessType
| Open Access |