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Mapping Forest Ecosystem Biomass Density for Xiangjiang River Basin by Combining Plot and Remote Sensing Data and Comparing Spatial Extrapolation Methods

机译:结合图和遥感数据及空间外推法比较湘江流域森林生态系统生物量密度

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The distribution of forest biomass in a river basin usually has obvious spatial heterogeneity in relation to the locations of the upper and lower reaches of the basin. In the subtropical region of China, a large amount of forest biomass, comprising diverse forest types, plays an important role in maintaining the balance of the regional carbon cycle. However, accurately estimating forest ecosystem aboveground biomass density (AGB) and mapping its spatial variability at a scale of river basin remains a great challenge. In this study, we attempted to map the current AGB in the Xiangjiang River Basin in central southern China. Three approaches, including a multivariate linear regression (MLR) model, a logistic regression (LR) model, and an improved k-nearest neighbors (kNN) algorithm, were compared to generate accurate estimates and their spatial distribution of forest ecosystem AGB in the basin. Forest inventory data from 782 field plots across the basin and remote sensing images from Landsat 5 in the same period were combined. A stepwise regression method was utilized to select significant spectral variables and a leave-one-out cross-validation (LOOCV) technique was employed to compare their predictions and assess the methods. Results demonstrated the high spatial heterogeneity in the distribution of AGB across the basin. Moreover, the improved kNN algorithm with 10 nearest neighbors showed stronger ability of spatial interpolation than other two models, and provided greater potential of accurately generating population and spatially explicit predictions of forest ecosystem AGB in the complicated basin.
机译:流域森林生物量的分布通常相对于流域上游和下游的位置具有明显的空间异质性。在中国亚热带地区,大量的森林生物量(包括多种森林类型)在维持区域碳循环的平衡中发挥着重要作用。然而,准确估算森林生态系统的地上生物量密度(AGB)并在流域尺度上绘制其空间变异性仍然是一个巨大的挑战。在这项研究中,我们试图绘制中国南部中部湘江流域当前的AGB数据。比较了三种方法,包括多元线性回归(MLR)模型,逻辑回归(LR)模型和改进的k近邻算法(kNN),可生成准确的估计值及其在盆地中森林生态系统AGB的空间分布。将来自整个盆地的782个田地的森林清查数据与同期Landsat 5的遥感图像进行了合并。利用逐步回归方法选择重要的光谱变量,并采用留一法交叉验证(LOOCV)技术比较其预测并评估方法。结果表明,整个盆地的AGB分布具有高度的空间异质性。此外,具有10个最近邻的改进的kNN算法比其他两个模型显示出更强的空间插值能力,并为在复杂盆地中准确生成种群和空间明确森林生态系统AGB提供了更大的潜力。

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