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Combining Multi-Source Remotely Sensed Data and a Process-Based Model for Forest Aboveground Biomass Updating

机译:结合多源遥感数据和基于过程的森林地上生物量更新模型

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Monitoring and understanding the spatio-temporal variations of forest aboveground biomass (AGB) is a key basis to quantitatively assess the carbon sequestration capacity of a forest ecosystem. To map and update forest AGB in the Greater Khingan Mountains (GKM) of China, this work proposes a physical-based approach. Based on the baseline forest AGB from Landsat Enhanced Thematic Mapper Plus (ETM+) images in 2008, we dynamically updated the annual forest AGB from 2009 to 2012 by adding the annual AGB increment (ABI) obtained from the simulated daily and annual net primary productivity (NPP) using the Boreal Ecosystem Productivity Simulator (BEPS) model. The 2012 result was validated by both field- and aerial laser scanning (ALS)-based AGBs. The predicted forest AGB for 2012 estimated from the process-based model can explain 31% ( n = 35, p < 0.05, RMSE = 2.20 kg/m 2 ) and 85% ( n = 100, p < 0.01, RMSE = 1.71 kg/m 2 ) of variation in field- and ALS-based forest AGBs, respectively. However, due to the saturation of optical remote sensing-based spectral signals and contribution of understory vegetation, the BEPS-based AGB tended to underestimate/overestimate the AGB for dense/sparse forests. Generally, our results showed that the remotely sensed forest AGB estimates could serve as the initial carbon pool to parameterize the process-based model for NPP simulation, and the combination of the baseline forest AGB and BEPS model could effectively update the spatiotemporal distribution of forest AGB.
机译:监测和了解森林地上生物量(AGB)的时空变化是定量评估森林生态系统的固碳能力的关键基础。为了绘制和更新中国大兴安岭(GKM)的森林AGB,这项工作提出了一种基于物理的方法。基于2008年Landsat Enhanced Thematic Mapper Plus(ETM +)图像的基准森林AGB,我们通过添加从模拟的每日和年度净初级生产力获得的年度AGB增量(ABI),动态更新了2009年至2012年的年度森林AGB。 NPP)使用了Boreal生态系统生产力模拟器(BEPS)模型。 2012年的结果通过基于现场和空中激光扫描(ALS)的AGB进行了验证。基于过程模型的2012年森林AGB预测值可以解释31%(n = 35,p <0.05,RMSE = 2.20 kg / m 2)和85%(n = 100,p <0.01,RMSE = 1.71 kg / m 2)分别基于野外和基于ALS的森林AGB。然而,由于基于光学遥感的光谱信号的饱和度和林下植被的贡献,基于BEPS的AGB往往低估/高估了茂密/稀疏森林的AGB。总体而言,我们的结果表明,遥感森林AGB估算值可以作为初始碳库来参数化基于过程的NPP模拟模型,而基准森林AGB和BEPS模型的组合可以有效地更新森林AGB的时空分布。

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