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    Load-settlement modelling of axially loaded drilled shafts using CPT-based recurrent neural networks

    212584_212584.pdf (1.435Mb)
    Access Status
    Open access
    Authors
    Shahin, Mohamed
    Date
    2014
    Type
    Journal Article
    
    Metadata
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    Citation
    Shahin, M. 2014. Load-settlement modelling of axially loaded drilled shafts using CPT-based recurrent neural networks. International Journal of Geomechanics. 14 (6): pp. 06014012 (7 p.).
    Source Title
    International Journal of Geomechanics
    DOI
    10.1061/(ASCE)GM.1943-5622.0000370
    ISSN
    1532-3641
    School
    Department of Civil Engineering
    URI
    http://hdl.handle.net/20.500.11937/17899
    Collection
    • Curtin Research Publications
    Abstract

    The design of pile foundations requires good estimation of the pile load-carrying capacity and settlement. Design for bearing capacity and design for settlement have been traditionally carried out separately. However, soil resistance and settlement are influenced by each other, and the design of pile foundations should thus consider the bearing capacity and settlement inseparably. This requires the full load–settlement response of piles to be well predicted. However, it is well known that the actual load–settlement response of pile foundations can be obtained only by load tests carried out in situ, which are expensive and time-consuming. In this paper, recurrent neural networks (RNNs) were used to develop a prediction model that can resemble the full load–settlement response of drilled shafts (bored piles) subjected to axial loading. The developed RNN model was calibrated and validated using several in situ full-scale pile load tests, as well as cone penetration test (CPT) data. The results indicate that the developed RNN model has the ability to reliably predict the load–settlement response of axially loaded drilled shafts and can thus be used by geotechnical engineers for routine design practice.

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