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Learning decision boundaries for cone penetration test classification

Georg H. Erharter, Simon Oberhollenzer, Anna Fankhauser, Roman Marte, Thomas Marcher

2021Computer-Aided Civil and Infrastructure Engineering19 citationsDOIOpen Access PDF

Abstract

In geotechnical field investigations, cone penetration tests (CPT) are increasingly used for ground characterization of fine-grained soils. Test results are different parameters that are typically visualized in CPT based data interpretation charts. In this paper we propose a novel methodology which is based on supervised machine learning that permits a redefinition of the boundaries within these charts to account for unique soil conditions. We train ensembles of randomly generated artificial neural networks to classify six soil types based on a database of hundreds of CPT tests from Austria and Norway. After training we combine the multiple unique solutions for this classification problem and visualize the new decision boundaries in between the soil types. The generated boundaries between soil types are comprehensible and are a step towards automatically adjusted CPT interpretation charts for specific local conditions.

Topics & Concepts

Cone penetration testComputer scienceArtificial intelligencePenetration testMachine learningArtificial neural networkGeotechnical engineeringGeologySubgradeLandslides and related hazardsGeotechnical Engineering and AnalysisGeotechnical Engineering and Underground Structures
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