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    结合Sentinel-2和GEDI数据的森林地上生物量估测和空间格局分析

    Estimation and spatial pattern analysis of forest above-ground biomass based on Sentinel-2 and GEDI data

    • 摘要: 森林地上生物量(above-ground biomass,AGB)是森林生产力的重要衡量标准,快速准确地估测森林AGB对森林可持续管理和碳循环研究至关重要。该研究基于全球生态系统动态调查(global ecosystem dynamics investigation,GEDI)星载激光雷达数据和Sentinel-2光学数据,提取GEDI L2B,Sentinel-2遥感特征及研究区地形因子(海拔、坡向、坡度),通过皮尔逊相关性筛选变量,构建偏最小二乘回归(partial least squares regression,PLSR)模型、梯度增强回归树(gradient boosting regression tree,GBRT)模型和随机森林(random forest,RF)模型反演森林AGB,探索其估测森林AGB的潜力,并分析森林AGB空间分布差异。结果表明:多数据源的估测效果始终优于单一数据源,基于GEDI和Sentinel-2数据的RF模型表现最佳(R2为0.76,均方根误差为23.02 t/hm2),GBRT次之,PLSR最差(R2仅为0.26);研究区海拔1 200~1 800 m范围内,森林AGB密度随海拔的升高而增大;坡度的变化对森林AGB密度不敏感,但在险坡处有明显减小;坡向分析显示半阴坡和阳坡的森林AGB密度较高,阴坡和半阳坡相近;坡度-坡向交互分析表明,缓坡和斜坡条件下,分别是半阳坡和阳坡森林AGB总量最高;平地和陡坡以上所有坡向的森林AGB均显著下降,阴坡和半阴坡的降幅更明显。该研究能为省级范围内制定森林保护和培育政策提供科学依据。

       

      Abstract: Forest above-ground biomass (AGB) is recognized as an important indicator of forest productivity. Rapid and accurate estimation of forest AGB is crucial for sustainable forest management and carbon cycle research. Based on spaceborne light detection and ranging (LiDAR) data from the global ecosystem dynamic investigation (GEDI) and Sentinel-2 optical data,this study extracted GEDI L2B,Sentinel-2 remote sensing features,and topographic factors (elevation,aspect,and slope) in the study area. Among them,variables were determined through Pearson correlation analysis. Then,this study constructed the partial least squares regression (PLSR),gradient boosting regression tree (GBRT),and random forest (RF) models for forest AGB inversion. Consequently,this study estimated these models’ potential for forest AGB estimation and analyzed the spatial distribution differences of forest AGB. The results indicate that the estimation using multi-source data consistently outperformed that using single-source data. Among them,the RF model based on GEDI and Sentinel-2 data exhibited the best performance (R2=0.76,root mean square error (RMSE)=23.02 t/hm2),followed by the GBRT model,while the PLSR model performed the worst (R2=0.26). In terms of spatial distribution,within the elevation range of 1 200~1 800 m,forest AGB density increased with elevation. Slope variation had little effect on forest AGB density,but a pronounced decrease in AGB density was observed on steep slopes. Aspect analysis showed that semi-shaded and sunny slopes exhibited high forest AGB density,while shaded and semi-sunny slopes presented similar values. Slope-aspect interaction analysis revealed that sunny and semi-sunny slopes displayed the highest total forest AGB on gentle and moderate slopes,respectively. In contrast,forest AGB significantly decreased across all orientations on flat and steep slopes,with a more significant decline observed on shaded and semi-shaded slopes. These findings provide a scientific basis for formulating forest protection and cultivation policies at the provincial level.

       

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