Prediction of Soil Composition from CPT Data Using General Regression Neural Network

Soil type is typically inferred from the information collected during a cone penetration test (CPT) using one of the many available soil classification methods. In this study, a general regression neural network (GRNN) was developed for predicting soil composition from CPT data. Measured values of c...

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Bibliographic Details
Published inJournal of computing in civil engineering Vol. 20; no. 4; pp. 281 - 289
Main Authors Kurup, Pradeep U, Griffin, Erin P
Format Journal Article
LanguageEnglish
Published Reston, VA American Society of Civil Engineers 01.07.2006
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ISSN0887-3801
1943-5487
DOI10.1061/(ASCE)0887-3801(2006)20:4(281)

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Summary:Soil type is typically inferred from the information collected during a cone penetration test (CPT) using one of the many available soil classification methods. In this study, a general regression neural network (GRNN) was developed for predicting soil composition from CPT data. Measured values of cone resistance and sleeve friction obtained from CPT soundings, together with grain-size distribution results of soil samples retrieved from adjacent standard penetration test boreholes, were used to train and test the network. The trained GRNN model was tested by presenting it with new, previously unseen CPT data, and the model predictions were compared with the reference particle-size distribution and the results of two existing CPT soil classification methods. The profiles of soil composition estimated by the GRNN generally compare very well with the actual grain-size distribution profiles, and overall the neural network had an 86% success rate at classifying soils as coarse grained or fine grained.
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ISSN:0887-3801
1943-5487
DOI:10.1061/(ASCE)0887-3801(2006)20:4(281)