Machine learning applications in flood forecasting and predictions, challenges, and way-out in the perspective of changing environment
Vijendra Kumar(National Institute of Construction Management and Research), Upaka Rathnayake(Atlantic Technological University), Nikunj K. Mangukiya(Indian Institute of Technology Roorkee), Deepak Kumar Tiwari(GLA University), Kul Vaibhav Sharma(MIT World Peace University), Preeti Ramkar(Dr. D. Y. Patil Medical College, Hospital and Research Centre)
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