Department of Earth and Environment, Boston University, 675 Commonwealth Avenue, Boston, MA, 02215, USA.
Department of Organismic and Evolutionary Biology, Harvard University, HUH, 22 Divinity Avenue, Cambridge, MA, 02138, USA.
Glob Chang Biol. 2016 Feb;22(2):792-805. doi: 10.1111/gcb.13122. Epub 2016 Jan 6.
Phenological events, such as bud burst, are strongly linked to ecosystem processes in temperate deciduous forests. However, the exact nature and magnitude of how seasonal and interannual variation in air temperatures influence phenology is poorly understood, and model-based phenology representations fail to capture local- to regional-scale variability arising from differences in species composition. In this paper, we use a combination of surface meteorological data, species composition maps, remote sensing, and ground-based observations to estimate models that better represent how community-level species composition affects the phenological response of deciduous broadleaf forests to climate forcing at spatial scales that are typically used in ecosystem models. Using time series of canopy greenness from repeat digital photography, citizen science data from the USA National Phenology Network, and satellite remote sensing-based observations of phenology, we estimated and tested models that predict the timing of spring leaf emergence across five different deciduous broadleaf forest types in the eastern United States. Specifically, we evaluated two different approaches: (i) using species-specific models in combination with species composition information to 'upscale' model predictions and (ii) using repeat digital photography of forest canopies that observe and integrate the phenological behavior of multiple representative species at each camera site to calibrate a single model for all deciduous broadleaf forests. Our results demonstrate variability in cumulative forcing requirements and photoperiod cues across species and forest types, and show how community composition influences phenological dynamics over large areas. At the same time, the response of different species to spatial and interannual variation in weather is, under the current climate regime, sufficiently similar that the generic deciduous forest model based on repeat digital photography performed comparably to the upscaled species-specific models. More generally, results from this analysis demonstrate how in situ observation networks and remote sensing data can be used to synergistically calibrate and assess regional parameterizations of phenology in models.
物候事件,如芽裂,与温带落叶林的生态系统过程密切相关。然而,季节和年际气温变化如何影响物候的具体性质和程度还不太清楚,基于模型的物候表示法无法捕捉到由于物种组成差异而产生的从局部到区域尺度的可变性。在本文中,我们使用地面气象数据、物种组成图、遥感和地面观测相结合的方法来估计模型,这些模型更好地代表了群落水平的物种组成如何影响落叶阔叶林对气候强迫的物候响应,其空间尺度通常用于生态系统模型。我们使用重复数字摄影的冠层绿色度时间序列、美国国家物候网络的公民科学数据以及基于卫星遥感的物候观测,估计并测试了预测美国东部 5 种不同落叶阔叶林类型春季叶片出现时间的模型。具体来说,我们评估了两种不同的方法:(i) 使用特定物种的模型与物种组成信息相结合,对模型预测进行“升尺度”;(ii) 使用森林冠层的重复数字摄影,对每个摄像点的多个代表性物种的物候行为进行观测和整合,对所有落叶阔叶林校准单一模型。我们的结果表明,物种和森林类型之间的累积胁迫需求和光周期线索存在差异,并展示了群落组成如何在大范围内影响物候动态。与此同时,在当前气候条件下,不同物种对天气的空间和年际变化的反应足够相似,因此基于重复数字摄影的通用落叶林模型的表现与升尺度特定物种模型相当。更一般地,这项分析的结果表明了如何利用现场观测网络和遥感数据来协同校准和评估模型中的物候区域参数化。