Jet Propulsion Laboratory, California Institute of Technology, Pasadena, CA, 91109, USA; Joint Institute for Regional Earth System Science and Engineering, University of California, Los Angeles, Los Angeles, CA, 90095, USA.
Glob Chang Biol. 2014 Oct;20(10):3103-21. doi: 10.1111/gcb.12652. Epub 2014 Jul 21.
Determining the spatial and temporal distribution of terrestrial gross primary production (GPP) is a critical step in closing the Earth's carbon budget. Dynamical global vegetation models (DGVMs) provide mechanistic insight into GPP variability but diverge in predicting the response to climate in poorly investigated regions. Recent advances in the remote sensing of solar-induced chlorophyll fluorescence (SIF) opens up a new possibility to provide direct global observational constraints for GPP. Here, we apply an optimal estimation approach to infer the global distribution of GPP from an ensemble of eight DGVMs constrained by global measurements of SIF from the Greenhouse Gases Observing SATellite (GOSAT). These estimates are compared to flux tower data in N. America, Europe, and tropical S. America, with careful consideration of scale differences between models, GOSAT, and flux towers. Assimilation of GOSAT SIF with DGVMs causes a redistribution of global productivity from northern latitudes to the tropics of 7-8 Pg C yr(-1) from 2010 to 2012, with reduced GPP in northern forests (3.6 Pg C yr(-1) ) and enhanced GPP in tropical forests (3.7 Pg C yr(-1) ). This leads to improvements in the structure of the seasonal cycle, including earlier dry season GPP loss and enhanced peak-to-trough GPP in tropical forests within the Amazon Basin and reduced growing season length in northern croplands and deciduous forests. Uncertainty in predicted GPP (estimated from the spread of DGVMs) is reduced by 40-70% during peak productivity suggesting the assimilation of GOSAT SIF with models is well-suited for benchmarking. We conclude that satellite fluorescence augurs a new opportunity to quantify the GPP response to climate drivers and the potential to constrain predictions of carbon cycle evolution.
确定陆地总初级生产力(GPP)的时空分布是闭合地球碳预算的关键步骤。动力全球植被模型(DGVM)为 GPP 变化提供了机制上的深入了解,但在预测在研究较少的地区对气候的响应时存在分歧。太阳诱导叶绿素荧光(SIF)遥感的最新进展为提供 GPP 的直接全球观测约束开辟了新的可能性。在这里,我们应用最优估计方法,从受全球 SIF 测量(来自温室气体观测卫星(GOSAT))约束的八个 DGVM 集合中推断全球 GPP 的分布。这些估计与北美、欧洲和热带南美的通量塔数据进行了比较,并仔细考虑了模型、GOSAT 和通量塔之间的尺度差异。用 GOSAT SIF 同化 DGVM 会导致全球生产力从北纬到热带的重新分配,在 2010 年至 2012 年期间为 7-8 Pg C yr(-1) ,北森林的 GPP 减少(3.6 Pg C yr(-1) ),热带森林的 GPP 增加(3.7 Pg C yr(-1) )。这导致了季节性周期结构的改善,包括亚马逊盆地热带森林早季 GPP 损失和峰值到低谷 GPP 增强,以及北方农田和落叶林生长季节长度的缩短。预测 GPP 的不确定性(由 DGVM 分布估计)在高峰期减少了 40-70%,表明用模型同化 GOSAT SIF 非常适合基准测试。我们的结论是,卫星荧光预示着量化 GPP 对气候驱动因素的响应以及约束碳循环演化预测的潜力的新机会。