Estimation of recompression coefficient of soil using a hybrid ANFIS-PSO machine learning model

Manh Duc Nguyen1, Dam Duc Nguyen2, Ha Nguyen Hai1, An Ho Sy1, Phuc Nguyen Quang1, Linh Nguyen Thai1, Dinh Nguyen Cong1, Indra Prakash3, Hiep Van Le2, Binh Thai Pham2
1University of Transport and Communications, Lang Thuong, Dong Da, Hanoi, Vietnam
2University of Transport and Technology, 54 Trieu Khuc, Thanh Xuan, Hanoi, Vietnam
3DDG (R) Geological Survey of India, Gandhinagar 382010, India

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