2024
DOI: 10.3390/su16104133
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Research on Estimation Model of Carbon Stock Based on Airborne LiDAR and Feature Screening

Xuan Liu,
Ruirui Wang,
Wei Shi
et al.

Abstract: The rapid and accurate estimation of forest carbon stock is important for analyzing the carbon cycle. In order to obtain forest carbon stock efficiently, this paper utilizes airborne LiDAR data to research the applicability of different feature screening methods in combination with machine learning in the carbon stock estimation model. First, Spearman’s Correlation Coefficient (SCC) and Extreme Gradient Boosting tree (XGBoost) were used to screen out the variables that were extracted via Airborne LiDAR with a … Show more

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