Machine Learning-Based Prediction of Stand Biomass Using Multi-Source Environmental Data in the Hulunbuir Mixed Forests, Inner Mongolia
Yaxiong Zheng, Yongjie Yue, Runhong Gao,
Machine Learning-Based Prediction of Stand Biomass Using Multi-Source Environmental Data in the Hulunbuir Mixed Forests, Inner Mongolia,
Trees, Forests and People,
2025,
101072,
ISSN 2666-7193,
https://doi.org/10.1016/j.tfp.2025.101072.
(https://www.sciencedirect.com/science/article/pii/S2666719325002985)
Abstract: Accurate estimation of forest aboveground biomass (AGB) is vital for understanding ecosystem productivity and carbon dynamics, especially in complex mixed forests. This study analyzed data from 99 natural mixed forest plots in Hulunbuir, Inner Mongolia, using machine learning models (random forest, support vector machine, and boosted regression tree) to predict AGB based on forest structure, species diversity, and environmental factors. Models explained 50%∼84% of AGB variation, with basal area and dominant diameter as key predictors. Species diversity is crucial for the accurate estimation of AGB. Climatic factors play a significant role in both Random Forest (RF) and boosted Regression Tree (BRT) models, while soil properties, particularly pH, were important in the support vector machine model. The study found that stand structure and the Simpson diversity index (SIM) are the primary determinants of biomass accumulation, indicating that forest management should focus on optimizing stand density, preserving structural diversity, and strengthening climate adaptability.
Keywords: Machine Learning; Biomass Estimation; Mixed Forests; Variable Selection; Model Validation