A data mining approach for predicting jet grouting geomechanical parameters

Data Mining (DM) techniques is a useful tool to explore complex relations between data with implicit information. It is than a potential tool to apply when a huge data is available and also to discover knowledgement. In this case DM techniques were applied to predict geomechanical properties of labo...

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Bibliographic Details
Main Author: Tinoco, Joaquim Agostinho Barbosa (author)
Other Authors: Correia, A. Gomes (author), Cortez, Paulo (author)
Format: conferencePaper
Language:eng
Published: 2011
Subjects:
Online Access:http://hdl.handle.net/1822/14504
Country:Portugal
Oai:oai:repositorium.sdum.uminho.pt:1822/14504
Description
Summary:Data Mining (DM) techniques is a useful tool to explore complex relations between data with implicit information. It is than a potential tool to apply when a huge data is available and also to discover knowledgement. In this case DM techniques were applied to predict geomechanical properties of laboratory formulations of soil-cement mixtures used in Jet Grouting (JG) geotechnical works for the improvement of ground, mainly soft soils. These properties (uniaxial compressive strength (qu) and Elastic Young Modulus (E0)) are essential to design geotechnical structures against ultimate limit state (ULS) and the serviceability limit state (SLS). In this paper, three DM models, i.e. Artificial Neural Networks (ANN), Support Vector Machines (SVM) and Functional Networks (FN), are applied for qu and E0 predictions and the results compared with Eurocode 2 predictive formula. In order to understand how DM models work, a sensitive analysis procedure was applied to quantify the effect of the key parameters. Furthermore, several experiments were held, by applying of DM techniques in order to estimate E0 normalized by qu over time. The obtained results give a new contribution to understand the behavior of JG material that improves the construction control process of JG columns and reduces the costs of laboratory formulations.