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Vegetation Indices for Mapping Canopy Foliar Nitrogen in a Mixed Temperate Forest

机译:温带混交林冠层叶氮定位的植被指数

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摘要

Hyperspectral remote sensing serves as an effective tool for estimating foliar nitrogen using a variety of techniques. Vegetation indices (VIs) are a simple means of retrieving foliar nitrogen. Despite their popularity, few studies have been conducted to examine the utility of VIs for mapping canopy foliar nitrogen in a mixed forest context. In this study, we assessed the performance of 32 vegetation indices derived from HySpex airborne hyperspectral images for estimating canopy mass-based foliar nitrogen concentration (%N) in the Bavarian Forest National Park. The partial least squares regression (PLSR) was performed for comparison. These vegetation indices were classified into three categories that are mostly correlated to nitrogen, chlorophyll, and structural properties such as leaf area index (LAI). %N was destructively measured in 26 broadleaf, needle leaf, and mixed stand plots to represent the different species and canopy structure. The canopy foliar %N is defined as the plot-level mean foliar %N of all species weighted by species canopy foliar mass fraction. Our results showed that the variance of canopy foliar %N is mainly explained by functional type and species composition. The normalized difference nitrogen index (NDNI) produced the most accurate estimation of %N (R2CV = 0.79, RMSECV = 0.26). A comparable estimation of %N was obtained by the chlorophyll index Boochs2 (R2CV = 0.76, RMSECV = 0.27). In addition, the mean NIR reflectance (800–850 nm), representing canopy structural properties, also achieved a good accuracy in %N estimation (R2CV = 0.73, RMSECV = 0.30). The PLSR model provided a less accurate estimation of %N (R2CV = 0.69, RMSECV = 0.32). We argue that the good performance of all three categories of vegetation indices in %N estimation can be attributed to the synergy among plant traits (i.e., canopy structure, leaf chemical and optical properties) while these traits may converge across plant species for evolutionary reasons. Our findings demonstrated the feasibility of using hyperspectral vegetation indices to estimate %N in a mixed temperate forest which may relate to the effect of the physical basis of nitrogen absorption features on canopy reflectance, or the biological links between nitrogen, chlorophyll, and canopy structure.
机译:高光谱遥感是使用多种技术估算叶面氮的有效工具。植被指数(VIs)是检索叶面氮的一种简单方法。尽管它们很受欢迎,但很少进行研究来研究VI在混合森林环境中绘制冠层叶氮的效用。在这项研究中,我们评估了从HySpex机载高光谱图像得出的32种植被指数的性能,以估计巴伐利亚森林国家公园中基于冠层质量的叶面氮浓度(%N)。进行偏最小二乘回归(PLSR)进行比较。这些植被指数分为三类,主要与氮,叶绿素和结构特性(如叶面积指数(LAI))相关。在26个阔叶,针叶和混合林地中以破坏性方式测量%N,以代表不同的物种和树冠结构。冠层叶%N定义为按物种冠层叶质量分数加权的所有物种的样地级平均叶%N。我们的结果表明,冠层叶%N的变化主要由功能类型和物种组成解释。归一化氮差异指数(NDNI)产生了最准确的%N估算值(R2CV = 0.79,RMSECV = 0.26)。通过叶绿素指数Boochs2(%R2CV = 0.76,RMSECV = 0.27)获得%N的可比估计。此外,代表冠层结构特性的平均NIR反射率(800-850 nm)在%N估算中也达到了良好的精度(R2CV = 0.73,RMSECV = 0.30)。 PLSR模型提供的%N估算值不太准确(R2CV = 0.69,RMSECV = 0.32)。我们认为,%N估算中所有三类植被指数的良好表现都可以归因于植物性状(即冠层结构,叶片化学和光学特性)之间的协同作用,而由于进化的原因,这些性状可能在整个植物物种中趋于一致。我们的发现证明了在混合温带森林中使用高光谱植被指数估算%N的可行性,这可能与氮吸收特征的物理基础对冠层反射率或氮,叶绿素和冠层结构之间的生物学联系的影响有关。

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