Litcius/Paper detail

Prediction of Permeability Coefficient k in Sandy Soils Using ANN

Grzegorz Wrzesiński, Anna Markiewicz

2022Sustainability20 citationsDOIOpen Access PDF

Abstract

The paper presents a method of application of an ANN (Artificial Neural Network) to predict the permeability coefficient k in sandy soils: FSa, MSa, CSa. To develop an ANN the results of permeability coefficients from pumping and consolidation tests were applied. The proposed ANN with an architecture 6-8-1 predicts the value of permeability coefficient k based on the following parameters: soil type, relative density ID, void ratio e and effective soil diameter d10. The mean relative error and single maximum value of the relative error for the proposed ANN are following: Mean RE = ±4%, Max RE = 7.59%. The use of the ANN to predict the soil permeability coefficient allows the reduction of the costs and time needed to conduct laboratory or field tests to determine this parameter.

Topics & Concepts

Consolidation (business)Soil waterPermeability (electromagnetism)Soil scienceArtificial neural networkApproximation errorVoid ratioMathematicsCorrelation coefficientGeotechnical engineeringEnvironmental scienceStatisticsEngineeringComputer scienceArtificial intelligenceChemistryBiochemistryBusinessAccountingMembraneGrouting, Rheology, and Soil MechanicsGeophysical Methods and ApplicationsGeotechnical Engineering and Analysis