Efficient computational techniques for predicting the California bearing ratio of soil in soaked conditions

Engineering Geology - Tập 291 - Trang 106239 - 2021
Abidhan Bardhan1, Candan Gökçeoğlu2, Avijit Burman1, Pijush Samui1, Panagiotis G. Asteris3
1Civil Engineering Department, National Institute of Technology Patna, 800005, India
2Hacettepe University, Department of Geological Engineering, 06800, Beytepe, Ankara, Turkey
3Computational Mechanics Laboratory, School of Pedagogical and Technological Education, Heraklion, GR 14121 Athens, Greece

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