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    Neural network modelling for shear strength of concrete members reinforced with FRP bars

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    Publication date
    2012-12
    Author
    Bashir, Rizwan
    Ashour, Ashraf F.
    Keyword
    Concrete; Fibre reinforced polymer (FRP) bars; Shear; Strength; Prediction; Computational modelling; Neural network modelling; Statistical properties; Statistical methods
    Rights
    © 2012 Elsevier. Reproduced in accordance with the publisher's self-archiving policy.
    Peer-Reviewed
    yes
    
    Metadata
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    Abstract
    This paper investigates the feasibility of using artificial neural networks (NNs) to predict the shear capacity of concrete members reinforced longitudinally with fibre reinforced polymer (FRP) bars, and without any shear reinforcement. An experimental database of 138 test specimens failed in shear is created and used to train and test NNs as well as to assess the accuracy of three existing shear design methods. The created NN predicted to a high level of accuracy the shear capacity of FRP reinforced concrete members. Garson index was employed to identify the relative importance of the influencing parameters on the shear capacity based on the trained NNs weightings. A parametric analysis was also conducted using the trained NN to establish the trend of the main influencing variables on the shear capacity. Many of the assumptions made by the shear design methods are predicted by the NN developed; however, few are inconsistent with the NN predictions.
    URI
    http://hdl.handle.net/10454/7515
    Version
    Accepted Manuscript
    Citation
    Bashir R and Ashour AF (2012) Neural network modelling for shear strength of concrete members reinforced with FRP bars. Composites: Part B: Engineering, 43 (8): 3198-3207.
    Link to publisher’s version
    http://dx.doi.org/10.1016/j.compositesb.2012.04.011
    Type
    Article
    Collections
    Engineering and Informatics Publications

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