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Using multi-source data from lidar, radar, imaging spectroscopy, and national forest inventories to simulate forest carbon fluxes

机译:使用来自激光雷达,雷达,成像光谱和国家森林清单的多源数据来模拟森林碳通量

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摘要

Terrestrial biosphere carbon dynamics are the most uncertain elements of the global carbon budget. Carbon stocks estimated using spatially extensive remote sensing are crucial in reducing this uncertainty, and using these stocks as initial conditions to biosphere models can improve carbon flux predictions beyond the site level. Yet remote-sensing data are not always consistently available for large regions, so methods assessing carbon uncertainty using data sources in one location may not be transferable to another. This study assesses the use of multiple-source data from lidar, radar, imaging spectroscopy, and national forest inventories to derive forest structure and composition necessary to initialise the Ecosystem Demography model (ED2), and hence evaluate short-term carbon flux uncertainty over Harvard Forest, Massachusetts. ED2 was initialized using forest structure and composition derived from lidar and national forest inventories, radar and national forest inventories, lidar and imaging spectroscopy, and radar and imaging spectroscopy resulting in net ecosystem productivity uncertainty of 26.3%, 41.9%, 19.6%, and 20.2%, respectively, compared to ground-based forest inventory initializations. This study uniquely offers a multitude of methods to estimate forest ecosystem state, with resulting carbon uncertainties, transferable to regions with potentially different data availability. Furthermore, in preparation for satellite radar, lidar, and imaging spectrometer, this study highlights the importance of combining techniques deriving forest structure and composition at different scales, binding regional to potentially global carbon-fluxes with remote sensing, reducing this uncertainty source in global climate models.
机译:陆地生物圈碳动态是全球碳预算中最不确定的因素。使用空间广泛的遥感估算的碳储量对于减少这种不确定性至关重要,而将这些碳储量用作生物圈模型的初始条件可以提高对站点水平以外的碳通量预测。然而,遥感数据并非始终可用于大区域,因此使用一个位置的数据源评估碳不确定性的方法可能无法转移到另一位置。这项研究评估了来自激光雷达,雷达,成像光谱学和国家森林清单的多源数据的使用,以得出初始化生态系统人口统计学模型(ED2)所需的森林结构和组成,从而评估了哈佛的短期碳通量不确定性马萨诸塞州森林。 ED2使用源自激光雷达和国家森林清单,雷达和国家森林清单,激光雷达和成像光谱以及雷达和成像光谱的森林结构和成分进行初始化,导致生态系统净生产力不确定性分别为26.3%,41.9%,19.6%和20.2。与基于地面的森林清单初始化相比分别为%。这项研究独特地提供了多种方法来估算森林生态系统的状态,从而导致碳的不确定性,可以转移到具有不同数据可用性的地区。此外,在准备卫星雷达,激光雷达和成像光谱仪时,这项研究强调了将不同规模的森林结构和组成的技术相结合,利用遥感将区域与潜在的全球碳通量结合起来,减少全球气候中这种不确定性源的重要性。楷模。

著录项

  • 来源
    《International journal of remote sensing》 |2017年第20期|5464-5486|共23页
  • 作者单位

    Sussex Univ, Dept Geog, Chichester 1, Brighton BN1 9QJ, E Sussex, England;

    Univ Massachusetts, Dept Elect & Comp Engn, Amherst, MA 01003 USA;

    Harvard Univ, Sch Engn & Appl Sci, Cambridge, MA 02138 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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