2022
DOI: 10.1007/s00521-022-07764-7
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Shrink–swell index prediction through deep learning

Abstract: Growing application of artificial intelligence in geotechnical engineering has been observed; however, its ability to predict the properties and nonlinear behaviour of reactive soil is currently not well considered. Although previous studies provided linear correlations between shrink–swell index and Atterberg limits, obtained model accuracy values were found unsatisfactory results. Artificial intelligence, specifically deep learning, has the potential to give improved accuracy. This research employed deep lea… Show more

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Cited by 2 publications
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“…Taherdangkoo et al 97 developed an efficient neural network model to determine the maximum P s of clayey soils by partitioning the dataset into ratios of 70:30. Several other studies in the same field follow the same partitioning ratio 31,98,99 .…”
Section: Ai-based Analysismentioning
confidence: 92%
“…Taherdangkoo et al 97 developed an efficient neural network model to determine the maximum P s of clayey soils by partitioning the dataset into ratios of 70:30. Several other studies in the same field follow the same partitioning ratio 31,98,99 .…”
Section: Ai-based Analysismentioning
confidence: 92%