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Journal of Zhejiang University SCIENCE A

ISSN 1673-565X(Print), 1862-1775(Online), Monthly

Application of machine learning to the identification of quick and highly sensitive clays from cone penetration tests

Abstract: Geotechnical classification is vital for site characterization and geotechnical design. Field tests such as the cone penetration test with pore water pressure measurement (CPTu) are widespread because they represent a faster and cheaper alternative for sample recovery and testing. However, classification schemes based on CPTu measurements are fairly generic because they represent a wide variety of soil conditions and, occasionally, they may fail when used in special soil types like sensitive or quick clays. Quick and highly sensitive clay soils in Norway have unique conditions that make them difficult to be identified through general classification charts. Therefore, new approaches to address this task are required. The following study applies machine learning methods such as logistic regression, Naive Bayes, and hidden Markov models to classify quick and highly sensitive clays at two sites in Norway based on normalized CPTu measurements. Results showed a considerable increase in the classification accuracy despite limited training sets.

Key words: Machine learning; Classification; Quick clays; Sensitive clays

Chinese Summary  <35> 应用机器学习方法从静力触探结果中识别快黏土和高灵敏度黏土

关键词组:机器学习; 分类; 快黏土; 高灵敏度黏土


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DOI:

10.1631/jzus.A1900556

CLC number:

TU19

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On-line Access:

2020-06-10

Received:

2019-10-29

Revision Accepted:

2020-04-26

Crosschecked:

2020-05-14

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