2018
DOI: 10.1051/matecconf/201714902025
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Neural networks and principle component analysis approaches to predict pile capacity in sand

Abstract: Abstract. Determination of pile bearing capacity from the in-situ tests has developed considerably due to the significant development of their technology. The project presented in this paper is a combination of two approaches, artificial neural networks and main component analyses that allow the development of a neural network model that provides a more accurate prediction of axial load bearing capacity based on the SPT test data. The retropropagation multi-layer perceptron with Bayesian regularization (RB) wa… Show more

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