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首页> 外文期刊>Geocarto international >Estimation of forest aboveground biomass from HJ1B imagery using a canopy reflectance model and a forest growth model
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Estimation of forest aboveground biomass from HJ1B imagery using a canopy reflectance model and a forest growth model

机译:利用顶篷反射模型和森林生长模型从HJ1B图像估计森林地上地下生物量

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摘要

Accurately estimating the spatial distribution of forest aboveground biomass (AGB) is important because of its carbon budget forms part of the global carbon cycle. This paper presented three methods for obtaining forest AGB based on a forest growth model, a Multiple-Forward-Mode (MFM) method and a stochastic gradient boosting (SGB) model. A Li-Strahler geometricoptical canopy reflectance model (GOMS) with the ZELIG forest growth model was run using HJ1B imagery to derive forest AGB. GOMS-ZELIG simulated data were used to train the SGB model and AGB estimation. The GOMS-ZELIG AGB estimation was evaluated for 24 field-measured data and compared against the GOMS-SGB model and GOMS-MFM biomass predictions from multispectral HJ1B data. The results show that the estimation accuracy of the GOMS-MFM model is slightly higher than that of the GOMS-SGB model. The GOMS-ZELIG and GOMS-MFM models are considerably more accurate at estimating forest AGB in arid and semiarid regions.
机译:准确估计地上生物量(AGB)的空间分布是重要的,因为其碳预算形成了全球碳循环的一部分。 本文提出了三种基于森林生长模型获得森林AGB的方法,多前进模式(MFM)方法和随机梯度升压(SGB)模型。 使用HJ1B Imagerery来运行Zelig森林生长模型的Li-Strahler几何光学冠层反射率模型(GOMS)来派生森林AGB。 GOMS-Zelig模拟数据用于培训SGB模型和AGB估计。 评估GOMS-Zelig AGB估计24个现场测量数据,并与来自多光谱HJ1B数据的GOMS-SGB模型和GOMS-MFM生物量预测进行比较。 结果表明,GOMS-MFM模型的估计精度略高于GOMS-SGB模型的估计精度。 GOMS-Zelig和GOMS-MFM型号在估计干旱和半干旱地区的森林AGB时更准确。

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