TY - JOUR
T1 - Analysis of the Application of Machine Learning Algorithms Based on Sentinel-1/2 and Landsat 8 OLI Data in Estimating Above-Ground Biomass of Subtropical Forests
AU - Wang, Yuping
AU - Hancock, Steven
AU - Dong, Wenquan
AU - Ji, Yongjie
AU - Zhao, Han
AU - Wang, Mengjin
PY - 2025/3/31
Y1 - 2025/3/31
N2 - Accurate monitoring of aboveground biomass (AGB) in subtropical forests plays an important role in maintaining biodiversity and the balance of forest ecosystems. It is of high importance to explore how machine learning models can improve the ability and accuracy of AGB estimation of different types of subtropical forests under the conditions of active and passive open-source remote sensing (RS) data. In this study, the subtropical forests in the Pu’er region of Yunnan Province were used as the research object, and backscattering coefficients, mean reflectance, and textural features from Sentinel-1, Sentinel-2, and Landsat 8 OLI open-source RS data were used as the data source. We classified the subtropical forests into three basic forest types: broadleaf forest, coniferous forest, and mixed forest. Based on filtering and analyzing RS features, we performed forest AGB inversion using Random Forest (RF), Support Vector Regression (SVR), and eXtreme Gradient Boosting (XGBoost). The results show that: (1) VH-related texture features in Sentinel-1, and red-edge band features, IR band features, and texture features in Sentinel-2 and Landsat 8 OLI are sensitive to changes in forest AGB. (2) Among the three nonparametric methods, the XGBoost algorithm had the highest estimation accuracy with an MAE of 10.05 t/ha and RMSE of 12.43 t/ha in coniferous forests; the second estimation accuracy in mixed forests with an MAE of 20.18 t/ha and RMSE of 25.33 t/ha; and the estimation accuracy in broad-leaved forests with an MAE of 25.22 t/ha and RMSE of 32.32 t/ha. (3) The accuracy of estimating forest AGB by combining multiple RS data is higher than the estimation results using a single RS data. We found that the VH features of SAR data contribute more to the inversion of high-precision forest AGB; the XGBoost model has the strongest robustness and the highest accuracy in the AGB inversion of subtropical forests using multisource RS data. (4) The spatial autocorrelation of the samples themselves also needs to be taken into account when modeling forest AGB estimates.
AB - Accurate monitoring of aboveground biomass (AGB) in subtropical forests plays an important role in maintaining biodiversity and the balance of forest ecosystems. It is of high importance to explore how machine learning models can improve the ability and accuracy of AGB estimation of different types of subtropical forests under the conditions of active and passive open-source remote sensing (RS) data. In this study, the subtropical forests in the Pu’er region of Yunnan Province were used as the research object, and backscattering coefficients, mean reflectance, and textural features from Sentinel-1, Sentinel-2, and Landsat 8 OLI open-source RS data were used as the data source. We classified the subtropical forests into three basic forest types: broadleaf forest, coniferous forest, and mixed forest. Based on filtering and analyzing RS features, we performed forest AGB inversion using Random Forest (RF), Support Vector Regression (SVR), and eXtreme Gradient Boosting (XGBoost). The results show that: (1) VH-related texture features in Sentinel-1, and red-edge band features, IR band features, and texture features in Sentinel-2 and Landsat 8 OLI are sensitive to changes in forest AGB. (2) Among the three nonparametric methods, the XGBoost algorithm had the highest estimation accuracy with an MAE of 10.05 t/ha and RMSE of 12.43 t/ha in coniferous forests; the second estimation accuracy in mixed forests with an MAE of 20.18 t/ha and RMSE of 25.33 t/ha; and the estimation accuracy in broad-leaved forests with an MAE of 25.22 t/ha and RMSE of 32.32 t/ha. (3) The accuracy of estimating forest AGB by combining multiple RS data is higher than the estimation results using a single RS data. We found that the VH features of SAR data contribute more to the inversion of high-precision forest AGB; the XGBoost model has the strongest robustness and the highest accuracy in the AGB inversion of subtropical forests using multisource RS data. (4) The spatial autocorrelation of the samples themselves also needs to be taken into account when modeling forest AGB estimates.
U2 - 10.3390/f16040559
DO - 10.3390/f16040559
M3 - Article
SN - 1999-4907
VL - 16
JO - Forests
JF - Forests
IS - 4
M1 - 559
ER -