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Development of Predictive Models for Cement Stabilized Soils

Authors :
Abir Al-Tabbaa
Rakshya Shrestha
Source :
Grouting and Deep Mixing 2012.
Publication Year :
2012
Publisher :
American Society of Civil Engineers, 2012.

Abstract

Factors that affect the engineering properties of cement stabilized soils such as strength are discussed in this paper using data on these factors. The selected factors studied in this paper are initial soil water content, grain size distribution, organic matter content, binder dosage, age and curing temperature, which has been collated from a number of international deep mixing projects. Some resulting correlations from this data are discussed and presented. The concept of Artificial Neural Networks and its applicability in developing predictive models for deep mixed soils is presented and discussed using a subset of the collated data. The results from the neural network model were found to emulate the known trends and reasonable estimates of strength as a function of the selected variables were obtained. © 2012 American Society of Civil Engineers.

Details

Database :
OpenAIRE
Journal :
Grouting and Deep Mixing 2012
Accession number :
edsair.doi...........ef735e5a731ec68b5a6c54aaa506c911