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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Predicting fine-scale tree species abundance patterns using biotic variables derived from LiDAR and high spatial resolution imagery
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Predicting fine-scale tree species abundance patterns using biotic variables derived from LiDAR and high spatial resolution imagery

机译:使用源自LiDAR的生物变量和高空间分辨率影像预测精细树种的丰度模式

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Tree species display different abundance patterns over the landscape due to a number of hierarchical factors, all of which have implications when modeling their distribution. While climate is often the primary driver for global to regional scale tree species distributions, modeling of presence and abundance patterns at finer scales, and in landscapes with less topographic variation may require predictors that capture biotic processes and local abiotic conditions. Proxies for biotic and disturbance processes may be captured by a combination of multispectral remote sensing and light detection and ranging (WAR) data. LiDAR data have shown great potential for capturing three-dimensional (3D) characteristics of the forest canopy and a number of these characteristics may have strong relationships with drivers of local tree species distributions. The objective of this study was to investigate the importance of remote sensing derived variables related to biotic and disturbance processes in predicting fine-scale abundance patterns of several dominant tree species in a mixed mature forest in the Great Lakes-St. Lawrence Forest Region, Ontario, Canada. Boosted regression trees, an ensemble classification and regression algorithm, was used to compare tree species abundance models that included LiDAR derived topographic variables with models that included spectral and LiDAR derived topographic and vegetation variables. Average model fit (rescaled Nagelkerke R-2) and predictive accuracy (correlation) improved from 0.12 to 0.63 and 0.25 to 0.71, respectively, when spectral and LiDAR derived vegetation variables were included in the tree species abundance models. This indicates that these variables capture some of the variance in local tree species' abundance distributions generated by biotic and disturbance processes in a landscape with limited topographic and climatic variation. Decreased model performance at higher tree species' abundances additionally suggests that our models do not capture all of the local drivers of tree species' abundance. Variables related to historical and current silvicultural practices may be missing. (C) 2014 Elsevier Inc. All rights reserved.
机译:由于许多分层因素,树木物种在景观上显示出不同的丰度模式,所有这些因素在建模其分布时都会产生影响。尽管气候通常是全球树种分布的主要驱动力,但在较小尺度上以及地形变化较小的景观中对存在和丰度模式进行建模可能需要预测器来捕获生物过程和局部非生物条件。生物和干扰过程的代理可以通过多光谱遥感和光检测与测距(WAR)数据的组合来捕获。 LiDAR数据显示出捕获森林冠层的三维(3D)特征的巨大潜力,其中许多特征可能与当地树种分布的驱动因素有很强的关系。这项研究的目的是调查与生物和干扰过程有关的遥感变量在预测大湖区-圣混合森林中几种优势树种的精细丰度模式方面的重要性。加拿大安大略省劳伦斯森林地区。使用增强的回归树(一种集成的分类和回归算法)来比较包含LiDAR派生的地形变量的树种丰度模型与包含光谱和LiDAR派生的地形和植被变量的模型。当树种丰度模型中包括光谱和LiDAR衍生的植被变量时,平均模型拟合(重新缩放的Nagelkerke R-2)和预测准确性(相关性)分别从0.12提高到0.63和0.25提高到0.71。这表明这些变量捕获了地形和气候变化有限的景观中生物和干扰过程所产生的局部树种丰度分布的某些变化。高树种丰度下模型性能的下降另外表明,我们的模型无法捕获树种丰度的所有本地驱动因素。与历史和当前造林实践有关的变量可能会丢失。 (C)2014 Elsevier Inc.保留所有权利。

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