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首页> 外文期刊>Geophysical Research Letters >Imaging spectroscopy- and lidar-derived estimates of canopy composition and structure to improve predictions of forest carbon fluxes and ecosystem dynamics
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Imaging spectroscopy- and lidar-derived estimates of canopy composition and structure to improve predictions of forest carbon fluxes and ecosystem dynamics

机译:成像光谱和激光雷达估算的冠层组成和结构,以改善对森林碳通量和生态系统动态的预测

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摘要

The composition and structure of vegetation are key attributes of ecosystems, affecting their current and future carbon, water, and energy fluxes. Information on these attributes has traditionally come from ground-based inventories of the plant canopy within small sample plots. Here we show how imaging spectrometry and waveform lidar can be used to provide spatially comprehensive estimates of forest canopy composition and structure that can improve the accuracy of the carbon flux predictions of a size-structured terrestrial biosphere model, reducing its root-mean-square errors from 85%–104% to 37%–57%. The improvements are qualitatively and quantitatively similar to those obtained from simulations initialized with ground measurements and approximately double the estimated rate of ecosystem carbon uptake as compared to a potential vegetation simulation. These results suggest that terrestrial biosphere model simulations can utilize modern remote-sensing data on vegetation composition and structure to improve their predictions of the current and near-term future functioning of the terrestrial biosphere.
机译:植被的组成和结构是生态系统的关键属性,会影响其当前和未来的碳,水和能量通量。传统上,有关这些属性的信息来自小样本区域内植物冠层的地面清单。在这里,我们展示了如何使用成像光谱仪和波形激光雷达来提供森林冠层组成和结构的空间综合估计,从而可以提高尺寸结构的陆地生物圈模型碳通量预测的准确性,从而减少其均方根误差从85%–104%到37%–57%。这些改进在质量和数量上与通过地面测量初始化的模拟所获得的类似,并且与潜在的植被模拟相比,估计的生态系统碳吸收率大约翻倍。这些结果表明,陆地生物圈模型模拟可以利用有关植被组成和结构的现代遥感数据来改进对陆地生物圈当前和近期未来功能的预测。

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