ICF, Fairfax, Virginia, 22031, USA.
Department of Forest and Wildlife Ecology, University of Wisconsin-Madison, Madison, Wisconsin, 53706, USA.
Ecol Appl. 2018 Jul;28(5):1313-1324. doi: 10.1002/eap.1733. Epub 2018 May 23.
A central challenge to understanding how climate anomalies, such as drought and heatwaves, impact the terrestrial carbon cycle, is quantification and scaling of spatial and temporal variation in ecosystem gross primary productivity (GPP). Existing empirical and model-based satellite broadband spectra-based products have been shown to miss critical variation in GPP. Here, we evaluate the potential of high spectral resolution (10 nm) shortwave (400-2,500 nm) imagery to better detect spatial and temporal variations in GPP across a range of ecosystems, including forests, grassland-savannas, wetlands, and shrublands in a water-stressed region. Estimates of GPP from eddy covariance observations were compared against airborne hyperspectral imagery, collected across California during the 2013-2014 HyspIRI airborne preparatory campaign. Observations from 19 flux towers across 23 flight campaigns (102 total image-flux tower pairs) showed GPP to be strongly correlated to a suite of spectral wavelengths and band ratios associated with foliar physiology and chemistry. A partial least squares regression (PLSR) modeling approach was then used to predict GPP with higher validation accuracy (adjusted R = 0.71) and low bias (0.04) compared to existing broadband approaches (e.g., adjusted R = 0.68 and bias = -5.71 with the Sims et al. model). Significant wavelengths contributing to the PLSR include those previously shown to coincide with Rubisco (wavelengths 1,680, 1,740, and 2,290 nm) and V (wavelengths 1,680, 1,722, 1,732, 1,760, and 2,300 nm). These results provide strong evidence that advances in satellite spectral resolution offer significant promise for improved satellite-based monitoring of GPP variability across a diverse range of terrestrial ecosystems.
理解气候异常(如干旱和热浪)如何影响陆地碳循环的一个核心挑战是量化和扩展生态系统总初级生产力(GPP)的时空变化。现有的基于经验和模型的卫星宽带光谱产品已被证明在 GPP 的关键变化方面存在不足。在这里,我们评估了高光谱分辨率(10nm)短波(400-2500nm)图像在检测包括森林、草原-热带稀树草原、湿地和干旱地区灌木林在内的一系列生态系统中 GPP 时空变化方面的潜力。利用涡度协方差观测值对 GPP 进行了估算,并与 2013-2014 年 HyspIRI 机载准备飞行期间在加利福尼亚州采集的机载高光谱图像进行了对比。在 23 次飞行任务(共 102 对图像-通量塔)中,来自 19 个通量塔的观测结果表明,GPP 与叶片生理和化学相关的一系列光谱波长和波段比强烈相关。然后,使用偏最小二乘回归(PLSR)建模方法对 GPP 进行预测,与现有的宽带方法相比,验证精度更高(调整 R 为 0.71,偏差为 0.04),而宽带方法的调整 R 为 0.68,偏差为-5.71(Sims 等人的模型)。对 PLSR 有显著贡献的波长包括以前与 RuBP 羧化酶(波长 1,680、1,740 和 2,290nm)和 V (波长 1,680、1,722、1,732、1,760 和 2,300nm)重合的波长。这些结果有力地证明,卫星光谱分辨率的提高为改善基于卫星的 GPP 变化监测提供了很大的希望,可应用于各种陆地生态系统。