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Earth Sciences Research Journal

versão impressa ISSN 1794-6190

Resumo

MOMENI, Ehsan; NAZIR, Ramli; ARMAGHANI, Danial Jahed  e  MAIZIR, Harnedi. Application of Artificial Neural Network for Predicting Shaft and Tip Resistances of Concrete Piles. Earth Sci. Res. J. [online]. 2015, vol.19, n.1, pp.85-93. ISSN 1794-6190.  https://doi.org/10.15446/esrj.v19n1.38712.

Axial bearing capacity (ABC) of piles is usually determined by static load test (SLT). However, conducting SLT is costly and time-consuming. High strain dynamic pile testing (HSDPT) which is provided by pile driving analyzer (PDA) is a more recent approach for predicting the ABC of piles. In comparison to SLT, PDA test is quick and economical. Implementing feed forward back-propagation artificial neural network (ANN) for solving geotechnical problems has recently gained attention mainly due to its ability in finding complex nonlinear relationships among different parameters. In this study, an ANN-based predictive model for estimating ABC of piles and its distribution is proposed. For network construction purpose, 36 PDA tests were performed on various concrete piles in different project sites. The PDA results, pile geometrical characteristics as well as soil investigation data were used for training the ANN models. Findings indicate the feasibility of ANN in predicting ultimate, shaft and tip bearing resistances of piles. The coefficients of determination, R², equal to 0.941, 0.936, and 0.951 for testing data reveal that the shaft, tip and ultimate bearing capacities of piles predicted by ANN-based model are in close agreement with those of HSDPT. By using sensitivity analysis, it was found that the length and area of the piles are dominant factors in the proposed predictive model.

Palavras-chave : Axial bearing capacity; artificial neural network; high strain dynamic testing; pile shaft resistance; pile tip resistance.

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