Natural soils’ shear strength prediction: A morphological data-centric approach
Maher Omar(University of Sharjah), Ali Tahmaz(University of Sharjah), Khalid A. Alshibli(University of Tennessee at Knoxville), Hussein M. Elmehdi(University of Sharjah), Emran Alotaibi(Khalifa University of Science and Technology), Abdallah Shanableh(University of Sharjah), Dima A. Hussien Malkawi(German Jordanian University), Mohamed G. Arab(Mansoura University)
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