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首页> 外文期刊>Journal of Applied Remote Sensing >Plot-level aboveground woody biomass modeling using canopy height and auxiliary remote sensing data in a heterogeneous savanna
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Plot-level aboveground woody biomass modeling using canopy height and auxiliary remote sensing data in a heterogeneous savanna

机译:在非均一的稀树草原中利用冠层高度和辅助遥感数据进行地表地上木质生物量建模

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摘要

Remote sensing studies aiming at assessing woody biomass have demonstrated a strong relationship between canopy height and plot-level aboveground biomass, but most of these studies focused on closed canopy forests. To date, a few studies have examined the strength and reliability of this relationship using large footprint lidar in savannas. Furthermore, there have been few studies of appropriate methods for the comparison of models that relate aboveground biomass to canopy height metrics without consideration of variation in species composition (generic models) to models developed for individual species composition or vegetation types. We developed generic models using the classical least-squares regression modeling approach to relate selected canopy height metrics to aboveground woody biomass in a savanna landscape. Hierarchical Bayesian analysis (HBA) was then used to explore the implications of using generic or composition-specific models. Our study used the estimates of aboveground biomass from field data, canopy height estimates from airborne discrete return lidar, and a proxy for canopy cover (the Normalized Difference Vegetation Index) from Landsat 5 Thematic Mapper data, collected from the oak savannas of Tejon Ranch Conservancy in Kern County, California. Models were developed and analyzed using estimates of canopy height and aboveground biomass calculated at the level of 50-m diameter plots, comparable with footprint diameter of existing large footprint spaceborne lidar data. The two generic models that incorporated canopy cover proxies performed better than one model that did not use canopy cover information. From the HBA, we found out that for all models both the intercept and slope had interspecific variability. The valley oak dominated plots consistently had higher slopes and intercepts, whereas the plots dominated by blue oaks had the lowest. However, the intercept and slope values of the composition-specific models did not differ much from the generic (overall) values and their 95% credible intervals (CIs) overlapped the generic mean values. We conclude that the narrow range of the distribution and the overlap of the CIs of the composition-specific and generic parameters suggest that scaling rules do exist for savannas. The distribution of the posterior densities of the differences between composition-level and generic-level parameter values showed high support for the use of generic parameters, suggesting that all three models are applicable across the range of compositions in this study. Therefore, in this case, the choice of method depends more on secondary considerations such as data availability and scale of analyses. (C) 2016 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:旨在评估木质生物量的遥感研究表明,冠层高度与样地水平的地上生物量之间存在很强的关系,但是这些研究大多数集中在封闭的冠层森林上。迄今为止,一些研究已经在稀树草原中使用大足迹激光雷达检查了这种关系的强度和可靠性。此外,很少有关于将地上生物量与冠层高度度量相关的模型进行比较的适当方法的研究,而没有考虑物种组成的变化(通用模型)与针对单个物种组成或植被类型开发的模型。我们使用经典的最小二乘回归建模方法开发了通用模型,以将选定的冠层高度度量与稀树草原景观中地上木质生物量相关联。然后使用分层贝叶斯分析(HBA)来探索使用通用或特定于组合的模型的含义。我们的研究使用了来自田野数据的地上生物量估计值,来自机载离散返回激光雷达的冠层高度估计值以及Landsat 5 Thematic Mapper数据(从Tejon Ranch保护区的橡树稀树草原中收集)的冠层覆盖度(归一化植被指数)的代理。在加利福尼亚州克恩县。使用在50米直径图的水平上计算的冠层高度和地上生物量的估计值来开发和分析模型,该模型可与现有大足迹星载激光雷达数据的足迹直径相比较。结合了树冠覆盖代理的两个通用模型的性能比不使用树冠覆盖信息的模型更好。从HBA,我们发现,对于所有模型,截距和斜率都具有种间变异性。山谷橡树为主的地块始终具有较高的坡度和截距,而蓝橡树为主的地块最低。但是,特定成分模型的截距和斜率值与通用(总体)值相差不大,它们的95%可信区间(CI)与通用平均值重叠。我们得出的结论是,特定成分和通用参数的分布范围狭窄以及CI的重叠表明,稀树草原确实存在缩放规则。成分级别和通用级别参数值之间的差异的后密度分布显示了对通用参数的使用的高度支持,这表明这三种模型均适用于本研究中的成分范围。因此,在这种情况下,方法的选择更多地取决于次要考虑因素,例如数据可用性和分析规模。 (C)2016年光电仪器工程师学会(SPIE)

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