Satellite based integrated approaches to modelling spatial carbon stock and carbon sequestration potential of different land uses of Northeast India

Environmental and Sustainability Indicators - Tập 13 - Trang 100166 - 2022
R. Bordoloi1, B. Das1, O.P. Tripathi2, U.K. Sahoo3, A.J. Nath4, S. Deb5, D.J. Das6, A. Gupta7, N.B. Devi8, S.S. Charturvedi9, B.K. Tiwari9, A. Paul1, L. Tajo10
1Department of Forestry, North Eastern Regional Institute of Science & Technology, (Deemed to be University) Nirjuli, 791109, Arunachal Pradesh, India
2Department of Environmental Science, Mizoram University, Aizawl, 796004, Mizoram, India
3Department of Forestry, Mizoram University, Aizawl, 796004, Mizoram, India
4Department of Ecology and Environment Science, Assam University, Silchar, 788011, Assam, India
5Department of Forestry and Biodiversity, Tripura University, Suryamaninagar, Agaratala, 799022, Tripura, India
6Rain Forest Research Institute, Jorhat, 785010, Assam, India
7Department of Life Science, Manipur University, Imphal, 795003, Manipur, India
8Department of Botany, Sikkim University, Gangtok 737102, Sikkim, India
9Department of Environmental Studies, North-Eastern Hill University, Shillong, 793022, Meghalaya, India
10State Remote Sensing Agency Centre, Govt. of Arunachal Pradesh, Itanagar, Arunachal Pradesh, India

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