Estimating the Vertical Distribution of Biomass in Subtropical Tree Species Using an Integrated Random Forest and Least Squares Machine Learning Mode

Author:

Li Guo12ORCID,Li Can12,Jia Guanyu13,Han Zhenying1,Huang Yu4,Hu Wenmin1234ORCID

Affiliation:

1. College of Landscape Architecture, Central South University of Forestry and Technology, Changsha 410004, China

2. Hunan Big Data Engineering Technology Research Center of Natural Protected Areas Landscape Resources, Changsha 410004, China

3. College of Public Administration, Nanjing Agricultural University, Nanjing 210095, China

4. Institute for Green Low-carbon and Human Settlements Urban Environment Research, Nanning University, Nanning 541699, China

Abstract

Accurate quantification of forest biomass (FB) is the key to assessing the carbon budget of terrestrial ecosystems. Using remote sensing to apply inversion techniques to the estimation of FBs has recently become a research trend. However, the limitations of vertical scale analysis methods and the nonlinear distribution of forest biomass stratification have led to significant uncertainties in FB estimation. In this study, the biomass characteristics of forest vertical stratification were considered, and based on the integration of random forest and least squares (RF-LS) models, the FB prediction potential improved. The results indicated that compared with traditional biomass estimation methods, the overall R2 of FB retrieval increased by 12.01%, and the root mean square error (RMSE) decreased by 7.50 Mg·hm−2. The RF-LS model we established exhibited better performance in FB inversion and simulation assessments. The indicators of forest canopy height, soil organic matter content, and red-edge chlorophyll vegetation index had greater impacts on FB estimation. These indexes could be the focus of consideration in FB estimation using the integrated RF-LS model. Overall, this study provided an optimization method to map and evaluate FB by fine stratification of above-ground forest and reveals important indicators for FB inversion and the applicability of the RF-LS model. The results could be used as a reference for the accurate inversion of subtropical forest biomass parameters and estimation of carbon storage.

Funder

Natural Science Foundation of Hunan Province

Key Project of Hunan Education Department

Scientific Research Project of Hunan Education Department

Key Discipline of the State Forestry Administration

“Double First-Class” Cultivating Subject of Hunan Province

Publisher

MDPI AG

Reference78 articles.

1. Available Fuel Dynamics in Nine Contrasting Forest Ecosystems in North America;Ryu;Environ. Manag.,2004

2. Response to Comment on “Tropical forests are a net carbon source based on aboveground measurements of gain and loss”;Baccini;Science,2019

3. Terrestrial Gross Carbon Dioxide Uptake: Global Distribution and Covariation with Climate;Beer;Science,2010

4. Improving forest above ground biomass estimates over Indian forests using multi source data sets with machine learning algorithm;Fararoda;Ecol. Inform.,2021

5. Integrating Sentinel-1A SAR data and GIS to estimate aboveground biomass and carbon accumulation for tropical forest types in Thuan Chau district, Vietnam;Pham;Remote Sens. Appl. Soc. Environ.,2019

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