Machine learning methods to predict and analyse unconfined compressive strength of stabilised soft soil with polypropylene columns

In this study, several machine learning approaches are used for the prediction of the unconfined compressive strength (UCS) of polypropylene-stabilised soft soil. This research work generates new data and applies several machine learning algorithms for the analysis of UCS. Fifty-two samples are in o...

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Main Authors: Hoque, Md. Ikramul, Muzamir, Hasan, Islam, Md Shofiqul, Houda, Moustafa, Abdallah, Mirvat, Sobuz, Md. Habibur Rahman
Format: Article
Language:English
Published: Taylor & Francis 2023
Subjects:
Online Access:http://umpir.ump.edu.my/id/eprint/37830/
http://umpir.ump.edu.my/id/eprint/37830/1/Machine%20Learning%20Methods%20to%20Predict%20and%20Analyse.pdf
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author Hoque, Md. Ikramul
Muzamir, Hasan
Islam, Md Shofiqul
Houda, Moustafa
Abdallah, Mirvat
Sobuz, Md. Habibur Rahman
author_facet Hoque, Md. Ikramul
Muzamir, Hasan
Islam, Md Shofiqul
Houda, Moustafa
Abdallah, Mirvat
Sobuz, Md. Habibur Rahman
author_sort Hoque, Md. Ikramul
building UMP Institutional Repository
collection Online Access
description In this study, several machine learning approaches are used for the prediction of the unconfined compressive strength (UCS) of polypropylene-stabilised soft soil. This research work generates new data and applies several machine learning algorithms for the analysis of UCS. Fifty-two samples are in our generated data. In our generated data, five input features are used: Column Reinforcement Type, Column Diameter, Area replacement ratio,Column Penetration Ratio and Max_Deviator Stress. On the other hand, the output consists of three target stress class. Our experimental result shows that Random Forest (RF) provides good prediction result of unconfined compressive test (UCT) and that is satisfied. RF model gets result of mean absolute error of 0.0625, mean square root error of 0.0625, root mean sqrt error of 0.2500, r2 value of 0.8942 and accuracy of 0.9375. In addition, the sequential model got training loss of 0.2535, training accuracy of 0.9024, validation loss of 0.4056 and validation accuracy: 0.9091. The results showed that the suggested RF and sequential model performs excellently in predicting the UCS of stabilised soft soil with polypropylene. Our technique is more practical and time-consuming than arduous laboratory work. In the future, we will do the experiment with various soft soil characteristics to develop high-performing machine and deep learning models.
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spelling ump-378302023-06-19T04:43:05Z http://umpir.ump.edu.my/id/eprint/37830/ Machine learning methods to predict and analyse unconfined compressive strength of stabilised soft soil with polypropylene columns Hoque, Md. Ikramul Muzamir, Hasan Islam, Md Shofiqul Houda, Moustafa Abdallah, Mirvat Sobuz, Md. Habibur Rahman TA Engineering (General). Civil engineering (General) In this study, several machine learning approaches are used for the prediction of the unconfined compressive strength (UCS) of polypropylene-stabilised soft soil. This research work generates new data and applies several machine learning algorithms for the analysis of UCS. Fifty-two samples are in our generated data. In our generated data, five input features are used: Column Reinforcement Type, Column Diameter, Area replacement ratio,Column Penetration Ratio and Max_Deviator Stress. On the other hand, the output consists of three target stress class. Our experimental result shows that Random Forest (RF) provides good prediction result of unconfined compressive test (UCT) and that is satisfied. RF model gets result of mean absolute error of 0.0625, mean square root error of 0.0625, root mean sqrt error of 0.2500, r2 value of 0.8942 and accuracy of 0.9375. In addition, the sequential model got training loss of 0.2535, training accuracy of 0.9024, validation loss of 0.4056 and validation accuracy: 0.9091. The results showed that the suggested RF and sequential model performs excellently in predicting the UCS of stabilised soft soil with polypropylene. Our technique is more practical and time-consuming than arduous laboratory work. In the future, we will do the experiment with various soft soil characteristics to develop high-performing machine and deep learning models. Taylor & Francis 2023-06 Article PeerReviewed pdf en cc_by_4 http://umpir.ump.edu.my/id/eprint/37830/1/Machine%20Learning%20Methods%20to%20Predict%20and%20Analyse.pdf Hoque, Md. Ikramul and Muzamir, Hasan and Islam, Md Shofiqul and Houda, Moustafa and Abdallah, Mirvat and Sobuz, Md. Habibur Rahman (2023) Machine learning methods to predict and analyse unconfined compressive strength of stabilised soft soil with polypropylene columns. Cogent Engineering, 10 (1). pp. 1-21. ISSN 2331-1916. (Published) https://doi.org/10.1080/23311916.2023.2220492 https://doi.org/10.1080/23311916.2023.2220492
spellingShingle TA Engineering (General). Civil engineering (General)
Hoque, Md. Ikramul
Muzamir, Hasan
Islam, Md Shofiqul
Houda, Moustafa
Abdallah, Mirvat
Sobuz, Md. Habibur Rahman
Machine learning methods to predict and analyse unconfined compressive strength of stabilised soft soil with polypropylene columns
title Machine learning methods to predict and analyse unconfined compressive strength of stabilised soft soil with polypropylene columns
title_full Machine learning methods to predict and analyse unconfined compressive strength of stabilised soft soil with polypropylene columns
title_fullStr Machine learning methods to predict and analyse unconfined compressive strength of stabilised soft soil with polypropylene columns
title_full_unstemmed Machine learning methods to predict and analyse unconfined compressive strength of stabilised soft soil with polypropylene columns
title_short Machine learning methods to predict and analyse unconfined compressive strength of stabilised soft soil with polypropylene columns
title_sort machine learning methods to predict and analyse unconfined compressive strength of stabilised soft soil with polypropylene columns
topic TA Engineering (General). Civil engineering (General)
url http://umpir.ump.edu.my/id/eprint/37830/
http://umpir.ump.edu.my/id/eprint/37830/
http://umpir.ump.edu.my/id/eprint/37830/
http://umpir.ump.edu.my/id/eprint/37830/1/Machine%20Learning%20Methods%20to%20Predict%20and%20Analyse.pdf