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Mapping national forest aboveground biomass in Mexico by integrating GEDI and Landsat times series data

Taejin Park,  NASA Ames Research Center / BAERI,  tpark@baeri.org (Presenter)
Rodrigo Vargas,  University of Delaware,  rvargas@udel.edu
Ramakrishna R. Nemani,  NASA ARC,  rama.nemani@nasa.gov

Mexico is one of the countries with great potential for the UN's Reducing Emissions from Deforestation and Forest Degradation (REDD+) program, a key nature-based solution for the forest sector. To monitor carbon stock changes, there is a growing demand for unbiased Monitoring Reporting Verification (MRV) systems to facilitate effective forest management and climate change mitigation strategies. Remote sensing-based national aboveground biomass density (AGBD) estimation over Mexico is scarce and often limited to one-time static mapping, leading to spatiotemporal inconsistency in inputs. As an effort under NASA's Carbon Monitoring System (CMS) program, we have developed a remote sensing-based approach to create consistent historical AGBD maps of Mexico using multi-stream remote sensing data, including spaceborne lidar GEDI and long-term Landsat time series, as well as topographic information. We employ the continuous change detection and classification (CCDC) algorithm for temporal modeling of Landsat surface reflectance, followed by the inference of forest AGBD using a random forest machine learning algorithm with the temporal information of land surface dynamics extracted by the CCDC as input. GEDI provides unprecedented forest structure and AGBD sampling datasets for model training and validation practices. In this presentation, we share the progress made in developing a spatially explicit mapping of historical AGBD changes associated with land surface changes and post-disturbance landscapes.

Associated Project(s): 

Poster Location ID: 20

Presentation Type: Poster

Session: Poster Session 1

Session Date: Wednesday (9/27) 1:15 PM

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