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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Seasonal variability of multiple leaf traits captured by leaf spectroscopy at two temperate deciduous forests
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Seasonal variability of multiple leaf traits captured by leaf spectroscopy at two temperate deciduous forests

机译:叶片光谱法在两个温带落叶林中获得的多种叶片性状的季节性变化

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Understanding the temporal patterns of leaf traits is critical in determining the seasonality and magnitude of terrestrial carbon, water, and energy fluxes. However, we lack robust and efficient ways to monitor the temporal dynamics of leaf traits. Here we assessed the potential of leaf spectroscopy to predict and monitor leaf traits across their entire life cycle at different forest sites and light environments (sunlit vs. shaded) using a weekly sampled dataset across the entire growing season at two temperate deciduous forests. The dataset includes field measured leaf-level directional-hemispherical reflectance/transmittance together with seven important leaf traits [total chlorophyll (chlorophyll a and b), carotenoids, mass-based nitrogen concentration (N-mass), mass-based carbon mass, concentration (C-mass), and leaf mass per area (LMA)]. All leaf traits varied significantly throughout the growing season, and displayed trait-specific temporal patterns. We used a Partial Least Square Regression (PLSR) modeling approach to estimate leaf traits from spectra, and found that PLSR was able to capture the variability across time, sites, and light environments of all leaf traits investigated (R-2 = 0.6-0.8 for temporal variability; R-2 = 0.3-0.7 for cross-site variability; R-2 = 0.4-0.8 for variability from light environments). We also tested alternative field sampling designs and found that for most leaf traits, biweekly leaf sampling throughout the growing season enabled accurate characterization of the seasonal patterns. Compared with the estimation of foliar pigments, the performance of N-mass, C-mass and LMA PLSR models improved more significantly with sampling frequency. Our results demonstrate that leaf spectra-trait relationships vary with time, and thus tracking the seasonality of leaf traits requires statistical models calibrated with data sampled throughout the growing season. Our results have broad implications for future research that use vegetation spectra to infer leaf traits at different growing stages. (C) 2016 Elsevier Inc. All rights reserved.
机译:了解叶性状的时间模式对于确定陆地碳,水和能量通量的季节性和大小至关重要。然而,我们缺乏强大而有效的方法来监测叶片性状的时间动态。在这里,我们使用了两个温带落叶林整个生长期的每周采样数据集,评估了叶光谱技术预测和监测不同森林地点和光照环境(日照与阴凉)下整个生命周期叶片性状的潜力。数据集包括实地测得的叶水平方向半球反射率/透射率以及七个重要的叶片性状[总叶绿素(叶绿素a和b),类胡萝卜素,基于质量的氮浓度(N-质量),基于质量的碳质量,浓度(C-质量)和每单位叶片质量(LMA)]。在整个生长季节,所有叶片性状均发生显着变化,并表现出特定性状的时间模式。我们使用偏最小二乘回归(PLSR)建模方法从光谱中估计叶片性状,发现PLSR能够捕获所研究的所有叶片性状在时间,地点和光照环境下的变异性(R-2 = 0.6-0.8对于时间上的可变性; R-2 = 0.3-0.7(对于跨站点可变性;对于光环境的可变性,R-2 = 0.4-0.8)。我们还测试了其他田间采样设计,发现对于大多数叶片性状,整个生长季节每两周进行一次叶片采样可以准确表征季节模式。与叶色素的估计相比,随着采样频率的增加,N质量,C质量和LMA PLSR模型的性能有了显着改善。我们的结果表明,叶片光谱特征与关系随时间变化,因此,追踪叶片特征的季节性需要统计模型进行校准,并使用整个生长季节的采样数据进行校准。我们的结果对未来的研究具有广泛的意义,该研究利用植被光谱推断不同生长阶段的叶片性状。 (C)2016 Elsevier Inc.保留所有权利。

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