Enhancing unconfined compressive strength of stabilized soil with lime and cement prediction through a robust hybrid machine learning approach utilizing Naive Bayes Algorithm
Abstract The unconfined compressive strength (UCS) of stabilized soil with lime and cement is a crucial mechanical factor in developing accurate geomechanical models. In the past, determining UCS required laborious laboratory testing of core samples or complex well-log analysis, both of which consum...
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Format: | Article |
Language: | English |
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SpringerOpen
2024-04-01
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Series: | Journal of Engineering and Applied Science |
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Online Access: | https://doi.org/10.1186/s44147-024-00408-8 |
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author | Weiqing Wan |
author_facet | Weiqing Wan |
author_sort | Weiqing Wan |
collection | DOAJ |
description | Abstract The unconfined compressive strength (UCS) of stabilized soil with lime and cement is a crucial mechanical factor in developing accurate geomechanical models. In the past, determining UCS required laborious laboratory testing of core samples or complex well-log analysis, both of which consumed many resources. This study introduces a novel method for real-time UCS prediction while acknowledging the need for efficiency. This method makes use of Specific Naive Bayes (NB) predictive models that are strengthened by the smell agent optimization (SAO) and the Dynamic Arithmetic Optimization Algorithm (DAOA), two reliable meta-heuristic algorithms. Combining these algorithms improves prediction precision while streamlining the process. By examining UCS samples from various soil types obtained from earlier stabilization tests, these models are validated. This study identifies three different models: NBDA, NBSA, and a single NB. The individual insights each model provides work in concert to increase the overall UCS prediction accuracy. This approach represents a significant advancement in UCS prediction methodologies, revealing a quick and effective method with wide-ranging implications for various geomechanical applications. Meta-heuristic algorithms combined with particular NB models produce promising results, opening up new possibilities for real-time UCS estimation across various geological scenarios. Especially noteworthy are the NBDA model’s impressive performance metrics. The entire dataset achieves an R 2 value of 0.992 during testing. The RMSE of 108.69 for the NBDA model during the training phase also shows that it has the best performance overall. It consistently exhibits commendable generalization and predictive abilities that outperform those of the developed NB and NBSA models, highlighting its usefulness and effectiveness in practical applications. |
first_indexed | 2024-04-24T12:39:21Z |
format | Article |
id | doaj.art-61115fc329b7461a84a94cfbbdf2bcf0 |
institution | Directory Open Access Journal |
issn | 1110-1903 2536-9512 |
language | English |
last_indexed | 2024-04-24T12:39:21Z |
publishDate | 2024-04-01 |
publisher | SpringerOpen |
record_format | Article |
series | Journal of Engineering and Applied Science |
spelling | doaj.art-61115fc329b7461a84a94cfbbdf2bcf02024-04-07T11:20:06ZengSpringerOpenJournal of Engineering and Applied Science1110-19032536-95122024-04-0171112310.1186/s44147-024-00408-8Enhancing unconfined compressive strength of stabilized soil with lime and cement prediction through a robust hybrid machine learning approach utilizing Naive Bayes AlgorithmWeiqing Wan0College of Smart Industry, Jiangxi University of EngineeringAbstract The unconfined compressive strength (UCS) of stabilized soil with lime and cement is a crucial mechanical factor in developing accurate geomechanical models. In the past, determining UCS required laborious laboratory testing of core samples or complex well-log analysis, both of which consumed many resources. This study introduces a novel method for real-time UCS prediction while acknowledging the need for efficiency. This method makes use of Specific Naive Bayes (NB) predictive models that are strengthened by the smell agent optimization (SAO) and the Dynamic Arithmetic Optimization Algorithm (DAOA), two reliable meta-heuristic algorithms. Combining these algorithms improves prediction precision while streamlining the process. By examining UCS samples from various soil types obtained from earlier stabilization tests, these models are validated. This study identifies three different models: NBDA, NBSA, and a single NB. The individual insights each model provides work in concert to increase the overall UCS prediction accuracy. This approach represents a significant advancement in UCS prediction methodologies, revealing a quick and effective method with wide-ranging implications for various geomechanical applications. Meta-heuristic algorithms combined with particular NB models produce promising results, opening up new possibilities for real-time UCS estimation across various geological scenarios. Especially noteworthy are the NBDA model’s impressive performance metrics. The entire dataset achieves an R 2 value of 0.992 during testing. The RMSE of 108.69 for the NBDA model during the training phase also shows that it has the best performance overall. It consistently exhibits commendable generalization and predictive abilities that outperform those of the developed NB and NBSA models, highlighting its usefulness and effectiveness in practical applications.https://doi.org/10.1186/s44147-024-00408-8Unconfined compressive strengthMachine learningNaive BayesSmell agent optimizationDynamic arithmetic optimization algorithm |
spellingShingle | Weiqing Wan Enhancing unconfined compressive strength of stabilized soil with lime and cement prediction through a robust hybrid machine learning approach utilizing Naive Bayes Algorithm Journal of Engineering and Applied Science Unconfined compressive strength Machine learning Naive Bayes Smell agent optimization Dynamic arithmetic optimization algorithm |
title | Enhancing unconfined compressive strength of stabilized soil with lime and cement prediction through a robust hybrid machine learning approach utilizing Naive Bayes Algorithm |
title_full | Enhancing unconfined compressive strength of stabilized soil with lime and cement prediction through a robust hybrid machine learning approach utilizing Naive Bayes Algorithm |
title_fullStr | Enhancing unconfined compressive strength of stabilized soil with lime and cement prediction through a robust hybrid machine learning approach utilizing Naive Bayes Algorithm |
title_full_unstemmed | Enhancing unconfined compressive strength of stabilized soil with lime and cement prediction through a robust hybrid machine learning approach utilizing Naive Bayes Algorithm |
title_short | Enhancing unconfined compressive strength of stabilized soil with lime and cement prediction through a robust hybrid machine learning approach utilizing Naive Bayes Algorithm |
title_sort | enhancing unconfined compressive strength of stabilized soil with lime and cement prediction through a robust hybrid machine learning approach utilizing naive bayes algorithm |
topic | Unconfined compressive strength Machine learning Naive Bayes Smell agent optimization Dynamic arithmetic optimization algorithm |
url | https://doi.org/10.1186/s44147-024-00408-8 |
work_keys_str_mv | AT weiqingwan enhancingunconfinedcompressivestrengthofstabilizedsoilwithlimeandcementpredictionthrougharobusthybridmachinelearningapproachutilizingnaivebayesalgorithm |