Prediction of droughts over Pakistan using machine learning algorithms

Advances in Water Resources - Tập 139 - Trang 103562 - 2020
Najeebullah Khan1,2, D.A. Sachindra3, Shamsuddin Shahid1, Kamal Ahmed1,2, Mohammed Sanusi Shiru1,4, Nadeem Nawaz1,2
1School of Civil Engineering, Faculty of Engineering, Universiti Teknologi Malaysia (UTM), 81310, Johor Bahru, Malaysia
2Faculty of Engineering Science and Technology, Lasbela University of Agriculture Water and Marine Sciences (LUAWMS), 90150, Uthal, Balochistan, Pakistan
3Institute for Sustainability and Innovation, College of Engineering and Science, Victoria University, P.O. Box 14428, Melbourne, Victoria 8001, Australia
4Department of Environmental Sciences, Faculty of Science, Federal University Dutse, P.M.B 7156, Dutse, Nigeria

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