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Deforestation and forest degradation monitoring and assessment of biomass and carbon stock of lowland rainforest in the Analanjirofo region, Madagascar
Authors:Sandra Eckert  Harifidy Rakoto Ratsimba  Lovanirina Olivia RakotondrasoaLalanirina Gabrielle Rajoelison  Albrecht Ehrensperger
Affiliation:a Centre for Development and Environment, University of Bern, Hallerstrasse 10, CH-3012 Bern, Switzerland
b Ecole Supérieure des Sciences Agronomiques, Département des Eaux et Forêts, BP 175, Université d’Antananarivo, Madagascar
Abstract:Madagascar is currently developing a policy and strategies to enhance the sustainable management of its natural resources, encouraged by United Nations Framework Convention on Climate Change (UNFCCC) and REDD. To set up a sustainable financing scheme methodologies have to be provided that estimate, prevent and mitigate leakage, develop national and regional baselines, and estimate carbon benefits. With this research study this challenge was tried to be addressed by analysing a lowland rainforest in the Analanjirofo region in the district of Soanierana Ivongo, North East of Madagascar. For two distinguished forest degradation stages: “low degraded forest” and “degraded forest” aboveground biomass and carbon stock was assessed. The corresponding rates of carbon within those two classes were calculated and linked to a multi-temporal set of SPOT satellite data acquired in 1991, 2004 and 2009. Deforestation and particularly degradation and the related carbon stock developments were analysed. With the assessed data for the 3 years 1991, 2004 and 2009 it was possible to model a baseline and to develop a forest prediction for 2020 for Analanjirofo region in the district of Soanierana Ivongo. These results, developed applying robust methods, may provide important spatial information regarding the priorities in planning and implementation of future REDD+ activities in the area.
Keywords:Forest degradation   Deforestation   Carbon   REDD   Remote sensing   Baseline modelling
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