Crop simulation mediated assessment of climate change impact on rice grown under temperate high-altitude valley of Kashmir

Ab. Shakoor1, S. Najeeb1, Ashaq Hussain1, Gazala H. Khan1, Mehrajuddin Sofi1, F. A. Mohiddin1, Shabir Hussain Wani1, S. S. Mehdi2, Nazir Ahmad Bhat1, Asif B. Shikari1
1Mountain Research Centre for Field Crops, Sher-E-Kashmir University of Agricultural Sciences & Technology of Kashmir, Srinagar, India
2Division of Agronomy, FoA, Wadura, Sher-E-Kashmir University of Agricultural Sciences & Technology of Kashmir, Srinagar, India

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