Development of a new integrated flood resilience model using machine learning with GIS-based multi-criteria decision analysis
Muhammad Hussain(Northeast Normal University), Bazel Al-Shaibah(Northeast Normal University), Safi Ullah(Lady Reading Hospital), Muhammad Tayyab(University of Engineering and Technology Lahore), Kashif Ullah(Northeast Normal University), Zahid Ur Rahman(Chinese Academy of Sciences), Jiquan Zhang(Ministry of Education of the People's Republic of China)
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