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Title: Machine learning-based modelling of soil properties for geotechnical design : review, tool development and comparison
Authors: Zhang, P 
Yin, ZY 
Jin, YF 
Issue Date: Mar-2022
Source: Archives of computational methods in engineering, Mar. 2022, v. 29, no. 2, p. 1229-1245
Abstract: Machine learning (ML) holds significant potential for predicting soil properties in geotechnical design but at the same time poses challenges, including those of how to easily examine the performance of an algorithm and how to select an optimal algorithm. This study first comprehensively reviewed the application of ML algorithms in modelling soil properties for geotechnical design. The algorithms were categorized into several groups based on their principles, and the main characteristics of these ML algorithms were summarized. After that six representative algorithms are further detailed and selected for the creation of a ML-based tool with which to easily build ML-based models. Interestingly, automatic determination of the optimal configurations of ML algorithms is developed, with an evaluation of model accuracy, application of the developed ML model to the new data and investigation of relationships between the input variables and soil properties. Furthermore, a novel ranking index is proposed for the model comparison and selection, which evaluates a ML-based model from five aspects. Soil maximum dry density is selected as an example to allow examination of the performance of different ML algorithms, the applicability of the tool and the model ranking index to determining an optimal model.
Publisher: Springer Netherlands
Journal: Archives of computational methods in engineering 
ISSN: 1134-3060
EISSN: 1886-1784
DOI: 10.1007/s11831-021-09615-5
Rights: © CIMNE, Barcelona, Spain 2021
This version of the article has been accepted for publication, after peer review (when applicable) and is subject to Springer Nature’s AM terms of use (https://www.springernature.com/gp/open-research/policies/accepted-manuscript-terms), but is not the Version of Record and does not reflect post-acceptance improvements, or any corrections. The Version of Record is available online at: http://dx.doi.org/10.1007/s11831-021-09615-5
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