Forest Aboveground Biomass Estimation and Inventory: Evaluating Remote Sensing-Based Approaches

Author:

Khan Muhammad Nouman12ORCID,Tan Yumin12ORCID,Gul Ahmad Ali3,Abbas Sawaid4ORCID,Wang Jiale12ORCID

Affiliation:

1. Hangzhou International Innovation Institute, Beihang University, Hangzhou 311115, China

2. School of Transportation Science and Engineering, Beihang University, Beijing 100191, China

3. School of Governance and Society, University of Management and Technology, Lahore 42000, Pakistan

4. Centre for Geographical Information System, University of the Punjab, Lahore 42000, Pakistan

Abstract

Remote sensing datasets offer robust approaches for gaining reliable insights into forest ecosystems. Despite numerous studies reviewing forest aboveground biomass estimation using remote sensing approaches, a comprehensive synthesis of synergetic integration methods to map and estimate forest AGB is still needed. This article reviews the integrated remote sensing approaches and discusses significant advances in estimating the AGB from space- and airborne sensors. This review covers the research articles published during 2015–2023 to ascertain recent developments. A total of 98 peer-reviewed journal articles were selected under the Preferred Reporting Items for Systematic Reviews and Meta-Analysis (PRISMA) guidelines. Among the scrutinized studies, 54 were relevant to spaceborne, 22 to airborne, and 22 to space- and airborne datasets. Among the empirical models used, random forest regression model accounted for the most articles (32). The highest number of articles utilizing integrated dataset approaches originated from China (24), followed by the USA (15). Among the space- and airborne datasets, Sentinel-1 and 2, Landsat, GEDI, and Airborne LiDAR datasets were widely employed with parameters that encompassed tree height, canopy cover, and vegetation indices. The results of co-citation analysis were also determined to be relevant to the objectives of this review. This review focuses on dataset integration with empirical models and provides insights into the accuracy and reliability of studies on AGB estimation modeling.

Funder

Sanxia Follow-up Project “The study on carbon neutrality benefits and contribution accounting of Three Gorges Reservoir”

Publisher

MDPI AG

Reference133 articles.

1. Abbas, S., Wong, M.S., Wu, J., Shahzad, N., and Muhammad Irteza, S. (2020). Approaches of Satellite Remote Sensing for the Assessment of Above-Ground Biomass across Tropical Forests: Pan-Tropical to National Scales. Remote Sens., 12.

2. Satellite Based Integrated Approaches to Modelling Spatial Carbon Stock and Carbon Sequestration Potential of Different Land Uses of Northeast India;Bordoloi;Environ. Sustain. Indic.,2022

3. Monitoring Intra and Inter Annual Dynamics of Forest Degradation from Charcoal Production in Southern Africa with Sentinel—2 Imagery;Sedano;Int. J. Appl. Earth Obs. Geoinf.,2020

4. Changes in Global Terrestrial Live Biomass over the 21st Century;Xu;Sci. Adv.,2021

5. Doubling of Annual Forest Carbon Loss over the Tropics during the Early Twenty-First Century;Feng;Nat. Sustain.,2022

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