Skip to main content
To KTH's start page

An artificial neural network

based model to predict spatial soil type distribution using piezocone penetration test data (CPTu)

Published Nov 15, 2018

New Jornal paper: Ghaderi, A., Shahri, A. and Larsson, S. (2018) An artificial neural network based model to predict spatial soil type distribution using piezocone penetration test data (CPTu). Bulletin of Engineering Geology and the Environment . doi.org/10.1007/s10064-018-1400-9

In this paper, a new optimized multi-output generalized feed forward neural network GFNN structure using piezocone penetration tests for producing a digital soil types map in the southwest of Sweden is developed. The results show that the predictability of the GFNN system offers a valuable tool for the purpose of soil type pattern classifications and providing soil profiles. The paper is published open access .

Page responsible:admin@byv.kth.se
Belongs to: Department of Civil and Architectural Engineering
Last changed: Nov 15, 2018