PREDICTION OF UNRAINED SHEAR STRENGTH AND CHARACTERISTICS OF CONSOLIDATION INDONESIAN CLAY SOIL USING MACHINE LEARNING

The soil compression index (Cc) is a very important parameter to know the magnitude of soil decline, egitu also undrained shear strength (Su) to find out the carrying capacity of the soil with. Cc is obtained from the oedometer test and Su is obtained from triaxial, Direct Shear, and Unconfined Comp...

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Main Author: Maulana, Rizal
Format: Theses
Language:Indonesia
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Online Access:https://digilib.itb.ac.id/gdl/view/64143
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:64143
spelling id-itb.:641432022-03-31T11:28:28ZPREDICTION OF UNRAINED SHEAR STRENGTH AND CHARACTERISTICS OF CONSOLIDATION INDONESIAN CLAY SOIL USING MACHINE LEARNING Maulana, Rizal Teknik sipil Indonesia Theses compression index, undrained shear strength, artificial neural network INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/64143 The soil compression index (Cc) is a very important parameter to know the magnitude of soil decline, egitu also undrained shear strength (Su) to find out the carrying capacity of the soil with. Cc is obtained from the oedometer test and Su is obtained from triaxial, Direct Shear, and Unconfined Compressive Strength tests where the data is not yet available in the early stages of design so it is necessary to predict its value. This paper discusses the latest correlation model to predict the Cc and Su compression index of its properties index. The soil data used in the study came from various locations in Java, Sumatra, Kalimantan, and Papua. Many research reSults found a relationship between Cc clay soil and index properties Such as water content, liquid limit, and pore numbers while Su has a relationship with the SPT value or with the plasticity index. Cc used for this study has a strong correlation with its moisture content so it is used as a major predictor. Su used for this study has a strong correlation with N SPT so it is used as a major predictor. The analysis was conducted using simple regression and artificial neural network (ANN). As a result of the analysis, the moisture content can predict Cc as much as 73% and has a root mean square error of 0.12. The Cc value prediction equation from the ANN analysis results is recommended to be used at a moisture content of less than 60%. The SPT value can predict Su at most 69% and has a fairly large root mean square error. The Su value prediction equation from the ANN analysis results is recommended to be used on N60 less than 20. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
topic Teknik sipil
spellingShingle Teknik sipil
Maulana, Rizal
PREDICTION OF UNRAINED SHEAR STRENGTH AND CHARACTERISTICS OF CONSOLIDATION INDONESIAN CLAY SOIL USING MACHINE LEARNING
description The soil compression index (Cc) is a very important parameter to know the magnitude of soil decline, egitu also undrained shear strength (Su) to find out the carrying capacity of the soil with. Cc is obtained from the oedometer test and Su is obtained from triaxial, Direct Shear, and Unconfined Compressive Strength tests where the data is not yet available in the early stages of design so it is necessary to predict its value. This paper discusses the latest correlation model to predict the Cc and Su compression index of its properties index. The soil data used in the study came from various locations in Java, Sumatra, Kalimantan, and Papua. Many research reSults found a relationship between Cc clay soil and index properties Such as water content, liquid limit, and pore numbers while Su has a relationship with the SPT value or with the plasticity index. Cc used for this study has a strong correlation with its moisture content so it is used as a major predictor. Su used for this study has a strong correlation with N SPT so it is used as a major predictor. The analysis was conducted using simple regression and artificial neural network (ANN). As a result of the analysis, the moisture content can predict Cc as much as 73% and has a root mean square error of 0.12. The Cc value prediction equation from the ANN analysis results is recommended to be used at a moisture content of less than 60%. The SPT value can predict Su at most 69% and has a fairly large root mean square error. The Su value prediction equation from the ANN analysis results is recommended to be used on N60 less than 20.
format Theses
author Maulana, Rizal
author_facet Maulana, Rizal
author_sort Maulana, Rizal
title PREDICTION OF UNRAINED SHEAR STRENGTH AND CHARACTERISTICS OF CONSOLIDATION INDONESIAN CLAY SOIL USING MACHINE LEARNING
title_short PREDICTION OF UNRAINED SHEAR STRENGTH AND CHARACTERISTICS OF CONSOLIDATION INDONESIAN CLAY SOIL USING MACHINE LEARNING
title_full PREDICTION OF UNRAINED SHEAR STRENGTH AND CHARACTERISTICS OF CONSOLIDATION INDONESIAN CLAY SOIL USING MACHINE LEARNING
title_fullStr PREDICTION OF UNRAINED SHEAR STRENGTH AND CHARACTERISTICS OF CONSOLIDATION INDONESIAN CLAY SOIL USING MACHINE LEARNING
title_full_unstemmed PREDICTION OF UNRAINED SHEAR STRENGTH AND CHARACTERISTICS OF CONSOLIDATION INDONESIAN CLAY SOIL USING MACHINE LEARNING
title_sort prediction of unrained shear strength and characteristics of consolidation indonesian clay soil using machine learning
url https://digilib.itb.ac.id/gdl/view/64143
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