Optimization of state-of-the-art fuzzy-metaheuristic ANFIS-based machine learning models for flood susceptibility prediction mapping in the Middle Ganga Plain, India
Aman Arora(Jamia Millia Islamia), Anshuman Bhardwaj(University of Aberdeen), Masood Ahsan Siddiqui(Jamia Millia Islamia), Varun Narayan Mishra(Gyan Vihar University), Manish Pandey(Chandigarh University), Dieu Tien Bui(University of South-Eastern Norway), Alireza Arabameri(Tarbiat Modares University), Uma Kant Shukla(Banaras Hindu University)
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