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15(2)2025 (IN PRESS)

Machine learning techniques for cohesive soil classification in construction in Vietnam


Author - Affiliation:
Danh Thanh Tran - Ho Chi Minh City Open University, Ho Chi Minh City , Vietnam
Dinh Xuan Tran - Ho Chi Minh City Open University, Ho Chi Minh City , Vietnam
Vinh Hoang Truong - Ho Chi Minh City Open University, Ho Chi Minh City , Vietnam
Corresponding author: Danh Thanh Tran - danh.tt@ou.edu.vn
Submitted: 25-10-2024
Accepted: 17-12-2024
Published: 13-01-2025

Abstract
Accurate soil classification is imperative for determining land suitability for various construction projects in construction and geotechnical engineering. The physical and mechanical properties of soil significantly influence the design of foundations, the assessment of landslide risks, and the overall stability of structures. Recognizing the limitations of traditional soil classification methods, which are often labor-intensive and time-consuming, this research introduces machine learning as a transformative tool for enhancing soil classification processes. Utilizing K-Nearest Neighbors (KNN) and Support Vector Machine (SVM) algorithms, this study analyzes 5,869 soil samples collected from 39 construction projects in Ho Chi Minh City, Vietnam, to evaluate the efficacy of machine learning techniques in classifying construction soils. The study identifies optimal strategies that significantly improve classification accuracy through a methodical investigation that includes varying training set sizes and integrating directly obtained and indirectly derived soil features. The findings underscore the importance of incorporating liquid and plastic limits and their derived indices, with the KNN model demonstrating superior performance in specific scenarios. This research highlights the potential of machine learning to revolutionize traditional soil classification methods. It provides foundational insights for future advancements in geotechnical engineering, aiming to achieve safer, more efficient, and sustainable construction practices.

Keywords
geotechnical engineering; KNN; machine learning; soil classification; SVM

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References

Armaghani, D. J., Hajihassani, M., Yazdani, B. B., Marto, A., & Tonnizam, M. E. (2014). Indirect measure of shale shear strength parameters by means of rock index tests through an optimized artificial neural network. Measurement, 55, 87-98.


Cal, Y. (1995). Soil classification by neural network. Advances in Engineering Software, 22(2), 95-97.


Carvalho, L. O., & Ribeiro, D. B. (2019). Soil classification system from cone penetration test data applying distance-based machine learning algorithms. Soils and Rocks, 42(2), 167-178.


Casagrande, A. (1948). Classification and identification of soils. Transactions of the American Society of Civil Engineers, 113(1), 901-991.


Cong thong tin dien tu Bo Xay dung. (2012). TCVN 9362:2012 specifications for design of foundation for buildings and structures. https://moc.gov.vn/tl/tin-tuc/53185/tieu-chuan-moi-tieu-chuan-thiet-ke-nen-nha-va-cong-trinh-specifications-for-design-of-foundation-for-buildings-and-structures-tcvn-9362-2012.aspx


Das, B. M., & Sobhan, K. (2013). Principles of geotechnical engineering. Cengage Learning.


Gambill, D. R., Wall, W. A., Fulton, A. J., & Howard, H. R. (2016). Predicting USCS soil classification from soil property variables using random forest. Journal of Terramechanics, 65, 85-92.


Ghaleini, E. N., Koopialipoor, M., Momenzadeh, M., Sarafraz, M. E., Mohamad, E. T., & Gordan, B. (2018). A combination of artificial bee colony and neural network for approximating the safety factor of retaining walls. Engineering with Computers, 35, 647-658.


Goktepe, F., Arman, H., & Pala, M. (2010). A new approach for classification of clayey soil: A case study for Adapazari region Turkey. Scientific Research and Essays, 5(15), 2037-2043.


Gordan, B., Koopialipoor, M., Clementking, A., Tootoonchi, H., & Mohamad, E. T. (2019). Estimating and optimizing safety factors of retaining wall through neural network and bee colony techniques. Engineering with Computers, 35, 945-954.


Kang, T. H., Choi, S. W., Lee, C., & Chang, S. H. (2022). Soil classification by machine learning using a tunnel boring machine’s operating parameters. Applied Sciences, 12(22), Article 11480.


Karimpouli, S., & Tahmasebi, P. (2019). Image-based velocity estimation of rock using Convolutional Neural Networks. Neural Networks, 111, 89-97.


Koopialipoor, M., Fahimifar, A., Ghaleini, E. N., Momenzadeh, M., & Armaghani, D. J. (2020). Development of a new hybrid ANN for solving a geotechnical problem related to tunnel boring machine performance. Engineering with Computers, 36, 345-357.


Koopialipoor, M., Murlidhar, B. R., Hedayat, A., Armaghani, D. J., Gordan, B., & Mohamad, E. T. (2020). The use of new intelligent techniques in designing retaining walls. Engineering with Computers, 36, 283-294.


Kovačević, M., Bajat, B., & Gajić, B. (2010). Soil type classification and estimation of soil properties using support vector machines. Geoderma, 154(3/4), 340-347.


Ma, W. T. (2005). Application of support vector machine to classification of expansive soils. Rock and Soil Mechanics, 26(11), 1790-1792.


Mollahasani, A., Alavi, A. H., Gandomi, A. H., & Bazaz, J. B. (2011). A new prediction model for soil deformation modulus basedon PLT results. Proceedings of the 9th International Symposium on Computational Civil Engineering, New Approaches in Numerical Analysis in Civil Engineering (pp. 53-61). Romania.


Momeni, E., Dowlatshahi, M. B., Omidinasab, F., Maizir, H., & Armaghani, D. J. (2020). Gaussian process regression technique to estimate the pile bearing capacity. Arabian Journal for Science and Engineering, 45, 8255-67.


Nguyen, M. D., Pham, T. B., Ho, L. S., Ly, B. H., Le, T. T., Chongchong, Q., Le, V. M., Le, M. L., Indra, P., Le, S. H., & Bui, D. T. (2020). Soft-computing techniques for prediction of soils consolidation coefficient. CATENA, 195, Article 104802.


Nguyen, M. D., Romulus, C., Ho, A. S., Hassan, A., Le, H. V., Indra, P., & Pham, T. B. (2022). Novel approach for soil classification using machine learning methods. Bulletin of Engineering Geology and the Environment, 81, Article 468.


Ninić, J., Freitag, S., & Meschke, G. (2017). A hybrid finite element and surrogate modelling approach for simulation and monitoring supported TBM steering. Tunnelling and Underground Space Technology, 63, 12-28.


Pham, T. B., Mahdis, A., Nguyen, M. D., Ngo, T. Q., Nguyen, K. T., Tran, H. T., Vu, H., Bui, A. T. Q., Le, H. V., & Indra, P. (2021). Estimation of shear strength parameters of soil using optimized inference intelligence system. Vietnam Journal of Earth Sciences, 43(2), 189-198.


Pham, T. B., Nguyen, D. D., Bui, A. T. Q., Nguyen, M. D., Vu, T. T., & Indra, P. (2022). Estimation of load-bearing capacity of bored piles using machine learning models. Vietnam Journal of Earth Sciences, 44(4), 470-480.


Pham, T. B., Nguyen, M. D., Nguyen, T. T., Ho, L. S., Mohammadreza, K., Nguyen, Q. K., Danial, J., & Le, H. V. (2021). A novel approach for classification of soils based on laboratory tests using Adaboost, Tree and ANN modeling. Transportation Geotechnics, 27, Article 100508.


Pham, T. B., Pradhan, B., Bui, D. T., Prakash, I., & Dholakia, M. B. (2016). A comparative study of different machine learning methods for landslide susceptibility assessment: A case study of Uttarakhand area (India). Environmental Modelling & Software, 84, 240-250.


Pham, T. B., Singh, S. K., & Ly, B. H. (2020). Using Artificial Neural Network (ANN) for prediction of soil coefficient of consolidation. Vietnam Journal of Earth Sciences, 42(4), 311-319.


Shirzadi, A., Himan, S., Kamran, C., Bui, D. T., Pham, B. T., Kaka, S., & Baharin, B. A. (2017). A comparative study between popular statistical and machine learning methods for simulating volume of landslides. Catena, 157, 213-226.


Singh, G., & Walia, B. S. (2017). Performance evaluation of nature-inspired algorithms for the design of bored pile foundation by artificial neural networks. Neural Computing and Applications, 28(Suppl 1), 289-298.


Tran, H. T., Nguyen, P. B., & Tran, D. T. (2024). Machine learning applications in pile load capacity prediction: Advanced analysis of pile driving forces and depths in urban Ho Chi Minh City construction sites. Indian Geotechnical Journal. https://doi.org/10.1007/s40098-024-01055-9


Wang, H., Zhang, L., Yin, K., Luo, H., & Li, J. (2021). Landslide identification using machine learning. Geosci Front, 12(1), 351-364.


Xiao, L., Zhang, Y., & Peng, G. (2018). landslide susceptibility assessment using integrated deep learning algorithm along the China-Nepal highway. Sensors, 18(12), Article 4436.


Zhang, W., Li, H., Li, Y., Liu, H. , Chen, Y., & Ding, X. (2021). Application of deep learning algorithms in geotechnical engineering: A short critical review. Artificial Intelligence Review, 54, 5633-5673.


Zhang, W., Wu, C., Zhong, H., Li, Y., & Wang, L. (2021). Prediction of undrained shear strength using extreme gradient boosting and random forest based on Bayesian optimization. Geosci Front, 12(1), 469-477.


Zhou, C., Ouyang, J., Ming, W., Zhang, G., Du, Z., & Liu, Z. (2019). A stratigraphic prediction method based on machine learning. Applied Sciences, 9(17), Article 3553.


Zhou, J., Qiu, Y., Zhu, S., Armaghani, D. J., Li, C., Hoang, N., & Saffet, Y. (2021). Optimization of support vector machine through the use of metaheuristic algorithms in forecasting TBM advance rate. Engineering Applications of Artificial Intelligence, 97, Article 104015.



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