Leveraging GIS-based AHP, remote sensing, and machine learning for susceptibility assessment of different flood types in peshawar, Pakistan
Muhammad Tayyab(University of Engineering and Technology Lahore), Bazel Al-Shaibah(Northeast Normal University), Ali R. Al-Aizari(Tianjin University), Safi Ullah(Lady Reading Hospital), Zahid Ur Rahman(Chinese Academy of Sciences), Muhammad Hussain(Northeast Normal University), Jiquan Zhang(Ministry of Education of the People's Republic of China), Zhijun Tong(Northeast Normal University)
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