Predicting Aboveground Carbon Storage in Different Types of Forests in
South Subtropical Regions Using Machine Learning Models
Abstract
Aim: Motivated by the need to enhance the accuracy of forest aboveground
carbon storage (ACS) assessments, this study aimed to explore the
effectiveness of different machine learning models in predicting ACS
across various subtropical forest types in southern China. Location: The
study was conducted in southern China, focusing on different types of
subtropical forests. This region harbors several types of subtropical
forests, which are rarely found at similar latitudes in the world.
Methods: Variance inflation factor was employed to screen independent
variables, resulting in the selection of 13 significant predictors. Four
machine learning models—support vector machine (SVM), random forest
(RF), multi-layer perceptron (MLP), and extreme gradient boosting
(XGB)—were constructed to estimate carbon storage. Model performance
was evaluated using root mean square error, coefficient of determination
(R 2), and mean absolute error. The model with the best generalization
ability was selected to calculate SHAP values for each predictor.
Results: The XGB model demonstrated superior performance across all
forest types, with R 2 values ranging from 0.898 to 0.974. In
mountainous evergreen broad-leaved forests, the prediction accuracy
followed the order of XGB > MLP > SVM
> RF. In valley rainforests, MLP showed the highest R 2
value, but with higher MAE and RMSE, making it the second-best choice.
The RF model performed moderately, while the SVM model showed the
poorest performance. The SHAP values indicated that maximum diameter at
breast height, slope, mean DBH, species evenness, altitude, and maximum
tree height had significant effects on ACS. Conclusions: XGB model
exhibits the best prediction performance and strongest adaptability for
estimating ACS in subtropical southern China forests.Machine learning
methods provide valuable references for predicting and assessing ACS in
different types of zonal forests.