Predicting the Grouting Ability of Sandy Soils by Artificial Neural Networks Based On Experimental Tests

In this paper, the grouting ability of sandy soils is investigated by artificial neural networks based on the results of chemical grout injection tests. In order to evaluate the soil grouting potential, experimental samples were prepared and then injected. The sand samples with three different parti...

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Main Authors: Mahmoud Hassanlourad, Maryam Vosoughi, Arash Sarrafi
Format: Article
Language:English
Published: University of Tehran Press 2014-12-01
Series:Civil Engineering Infrastructures Journal
Subjects:
Online Access:http://ceij.ut.ac.ir/article_40871_ff2a7d20b4aa1dd5b20819215fb06a95.pdf
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spelling doaj-fc1bdc9f1aab498789a746853ed9c89f2020-11-24T21:07:31ZengUniversity of Tehran Press Civil Engineering Infrastructures Journal2322-20932423-66912014-12-0147223925310.7508/ceij.2014.02.00740871Predicting the Grouting Ability of Sandy Soils by Artificial Neural Networks Based On Experimental TestsMahmoud Hassanlourad0Maryam Vosoughi1Arash Sarrafi2Assistant Professor, Faculty of Engineering, Imam Khomeini International University, Qazvin, Iran.M.Sc. Student, Faculty of Engineering, Imam Khomeini International University, Qazvin, Iran.M.Sc. Student, Faculty of Engineering, Imam Khomeini International University, Qazvin, Iran.In this paper, the grouting ability of sandy soils is investigated by artificial neural networks based on the results of chemical grout injection tests. In order to evaluate the soil grouting potential, experimental samples were prepared and then injected. The sand samples with three different particle sizes (medium, fine, and silty) and three relative densities (%30, %50, and %90) were injected with the sodium silicate grout with three different concentrations (water to sodium silicate ratio of 0.33, 1, and 2). A multi-layer Perceptron type of the artificial neural network was trained and tested using the results of 138 experimental tests. The multi-layer Perceptron included one input layer, two hidden layers and one output layer. The input parameters consisted of initial relative densities of grouted samples, the average size of particles (D50), the ratio of the grout water to sodium silicate and the grout pressure. The output parameter was the grout injection radius. The results of the experimental tests showed that the radius of grout injection is a complicated function of the mentioned parameters. In addition, the results of the trained artificial neural network showed to be reasonably consistent with the experimental results.http://ceij.ut.ac.ir/article_40871_ff2a7d20b4aa1dd5b20819215fb06a95.pdfartificial neural networkChemical GroutGrout-AbilitySandy Soil
collection DOAJ
language English
format Article
sources DOAJ
author Mahmoud Hassanlourad
Maryam Vosoughi
Arash Sarrafi
spellingShingle Mahmoud Hassanlourad
Maryam Vosoughi
Arash Sarrafi
Predicting the Grouting Ability of Sandy Soils by Artificial Neural Networks Based On Experimental Tests
Civil Engineering Infrastructures Journal
artificial neural network
Chemical Grout
Grout-Ability
Sandy Soil
author_facet Mahmoud Hassanlourad
Maryam Vosoughi
Arash Sarrafi
author_sort Mahmoud Hassanlourad
title Predicting the Grouting Ability of Sandy Soils by Artificial Neural Networks Based On Experimental Tests
title_short Predicting the Grouting Ability of Sandy Soils by Artificial Neural Networks Based On Experimental Tests
title_full Predicting the Grouting Ability of Sandy Soils by Artificial Neural Networks Based On Experimental Tests
title_fullStr Predicting the Grouting Ability of Sandy Soils by Artificial Neural Networks Based On Experimental Tests
title_full_unstemmed Predicting the Grouting Ability of Sandy Soils by Artificial Neural Networks Based On Experimental Tests
title_sort predicting the grouting ability of sandy soils by artificial neural networks based on experimental tests
publisher University of Tehran Press
series Civil Engineering Infrastructures Journal
issn 2322-2093
2423-6691
publishDate 2014-12-01
description In this paper, the grouting ability of sandy soils is investigated by artificial neural networks based on the results of chemical grout injection tests. In order to evaluate the soil grouting potential, experimental samples were prepared and then injected. The sand samples with three different particle sizes (medium, fine, and silty) and three relative densities (%30, %50, and %90) were injected with the sodium silicate grout with three different concentrations (water to sodium silicate ratio of 0.33, 1, and 2). A multi-layer Perceptron type of the artificial neural network was trained and tested using the results of 138 experimental tests. The multi-layer Perceptron included one input layer, two hidden layers and one output layer. The input parameters consisted of initial relative densities of grouted samples, the average size of particles (D50), the ratio of the grout water to sodium silicate and the grout pressure. The output parameter was the grout injection radius. The results of the experimental tests showed that the radius of grout injection is a complicated function of the mentioned parameters. In addition, the results of the trained artificial neural network showed to be reasonably consistent with the experimental results.
topic artificial neural network
Chemical Grout
Grout-Ability
Sandy Soil
url http://ceij.ut.ac.ir/article_40871_ff2a7d20b4aa1dd5b20819215fb06a95.pdf
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AT maryamvosoughi predictingthegroutingabilityofsandysoilsbyartificialneuralnetworksbasedonexperimentaltests
AT arashsarrafi predictingthegroutingabilityofsandysoilsbyartificialneuralnetworksbasedonexperimentaltests
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