Machine learning-based geospatial assessment of forest structure characteristics and sequestration potential for informed carbon stocks inventories
摘要
Managed forest lands are key contributors to the carbon balance assessment needed for the greenhouse gas inventories on local, regional, national, and global levels. However, forest lands, due to size and complexity, are challenging for detailed spatially-explicit monitoring and, therefore, reliable and automatic assessment of spatial-temporal changes of carbon stocks is limited. This study presents an effective methodology for estimating key forest structure characteristics relevant to sequestration potential by combining management-level inventory data with remote sensing covariates. It primarily focuses on a machine learning (ML) pipeline that integrates an uncertainty quantification stage to support reliable decision-making and environmental analysis. We evaluated three algorithms - Random Forest (RF), Extreme Gradient Boosting (XGBoost), and TabNet–applied for multispectral satellite measurements. Predictions were made at the stand level inventory data, addressing classification tasks for dominant species and age group, and regression tasks for timber stock, stand height, and average basal area. Forest carbon stock was also derived as a target variable. XGBoost achieved the best overall performance across tasks. For regression, it reached mean absolute percentage error (MAPE) equal to 0.18 for height; 0.24 for basal area; 0.47 for timber stock and 0.37 for carbon stock. The coefficient of determination (