Soft-computing techniques for prediction of soils consolidation coefficient

CATENA - Tập 195 - Trang 104802 - 2020
Manh Duc Nguyen1, Binh Thai Pham2,3, Lanh Si Ho2, Hai‐Bang Ly3, Tien-Thinh Le4, Chongchong Qi5, Vuong Minh Le6, Lei Lü6, Indra Prakash7, Lê Hoàng Sơn8, Dieu Tien Bui9
1University of Transport and Communications, Hanoi 100000, Viet Nam
2Civil and Environmental Engineering Program, Graduate School of Advanced Science and Engineering, Hiroshima University, 1-4-1, Kagamiyama, Higashi-Hiroshima, Hiroshima 739-8527, Japan
3University of Transport Technology, Hanoi, 100000, Viet Nam
4Institute of Research and Development, Duy Tan University, Da Nang, 550000, Viet Nam
5School of Resources and Safety Engineering, Central South University, Changsha, 410083, Hunan Province, People's Republic of China
6Faculty of Engineering, Vietnam National University of Agriculture, Gia Lam, Hanoi 100000, Viet Nam
7Bhaskarcharya Institute for Space Applications and Geo-Informatics (BISAG), Gandhinagar 382007, India
8VNU Information Technology Institute, Vietnam National University, Hanoi, Viet Nam
9Geographic Information System Group, Department of Business and IT, University of South-Eastern Norway, Bø i Telemark N-3800, Norway

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