Department of Ecology and Evolutionary Biology, University of Arizona, Tucson, AZ, 85721, USA.
Environmental & Climate Sciences Department, Brookhaven National Laboratory, Upton, NY, 11973, USA.
New Phytol. 2018 Mar;217(4):1507-1520. doi: 10.1111/nph.14939. Epub 2017 Dec 23.
Satellite observations of Amazon forests show seasonal and interannual variations, but the underlying biological processes remain debated. Here we combined radiative transfer models (RTMs) with field observations of Amazon forest leaf and canopy characteristics to test three hypotheses for satellite-observed canopy reflectance seasonality: seasonal changes in leaf area index, in canopy-surface leafless crown fraction and/or in leaf demography. Canopy RTMs (PROSAIL and FLiES), driven by these three factors combined, simulated satellite-observed seasonal patterns well, explaining c. 70% of the variability in a key reflectance-based vegetation index (MAIAC EVI, which removes artifacts that would otherwise arise from clouds/aerosols and sun-sensor geometry). Leaf area index, leafless crown fraction and leaf demography independently accounted for 1, 33 and 66% of FLiES-simulated EVI seasonality, respectively. These factors also strongly influenced modeled near-infrared (NIR) reflectance, explaining why both modeled and observed EVI, which is especially sensitive to NIR, captures canopy seasonal dynamics well. Our improved analysis of canopy-scale biophysics rules out satellite artifacts as significant causes of satellite-observed seasonal patterns at this site, implying that aggregated phenology explains the larger scale remotely observed patterns. This work significantly reconciles current controversies about satellite-detected Amazon phenology, and improves our use of satellite observations to study climate-phenology relationships in the tropics.
卫星对亚马逊森林的观测显示出季节性和年际变化,但潜在的生物过程仍存在争议。在这里,我们结合辐射传输模型(RTMs)和对亚马逊森林叶片和冠层特征的实地观测,检验了三种关于卫星观测冠层反射率季节性的假设:叶面积指数、冠层表面无叶树冠部分和/或叶片动态的季节性变化。由这三个因素共同驱动的冠层 RTM(PROSAIL 和 FLiES)很好地模拟了卫星观测到的季节性模式,解释了关键基于反射率的植被指数(MAIAC EVI,它去除了否则会因云/气溶胶和太阳-传感器几何形状而产生的伪影)中约 70%的可变性。叶面积指数、无叶树冠部分和叶片动态分别独立解释了 FLiES 模拟 EVI 季节性的 1%、33%和 66%。这些因素还强烈影响了近红外(NIR)反射率的建模,这就是为什么模型化和观测到的 EVI(对 NIR 特别敏感)很好地捕捉到冠层季节性动态的原因。我们对冠层尺度生物物理学的改进分析排除了卫星伪影作为该地点卫星观测到的季节性模式的重要原因,这意味着聚合物候学解释了更大尺度上远程观测到的模式。这项工作显著调和了当前关于卫星探测亚马逊物候的争议,并提高了我们利用卫星观测来研究热带气候-物候关系的能力。