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An improved analysis of forest carbon dynamics using data assimilation

机译:基于数据同化的森林碳动态分析的改进

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摘要

There are two broad approaches to quantifying landscape C dynamics - by measuring changes in C stocks over time, or by measuring fluxes of C directly. However, these data may be patchy, and have gaps or biases. An alternative approach to generating C budgets has been to use process-based models, constructed to simulate the key processes involved in C exchange. However, the process of model building is arguably subjective, and parameters may be poorly defined. This paper demonstrates why data assimilation (DA) techniques - which combine stock and flux observations with a dynamic model - improve estimates of, and provide insights into, ecosystem carbon (C) exchanges. We use an ensemble Kalman filter (EnKF) to link a series of measurements with a simple box model of C transformations. Measurements were collected at a young ponderosa pine stand in central Oregon over a 3-year period, and include eddy flux and soil CO2 efflux data, litterfall collections, stem surveys, root and soil cores, and leaf area index data. The simple C model is a mass balance model with nine unknown parameters, tracking changes in C storage among five pools; foliar, wood and fine root pools in vegetation, and also fresh litter and soil organic matter (SOM) plus coarse woody debris pools. We nested the EnKF within an optimization routine to generate estimates from the data of the unknown parameters and the five initial conditions for the pools. The efficacy of the DA process can be judged by comparing the probability distributions of estimates produced with the EnKF analysis vs. those produced with reduced data or model alone. Using the model alone, estimated net ecosystem exchange of C (NEE)=-251+/-197 g C m(-2) over the 3 years, compared with an estimate of -419+/-29 g C m(-2) when all observations were assimilated into the model. The uncertainty on daily measurements of NEE via eddy fluxes was estimated at 0.5 g C m(-2) day(-1), but the uncertainty on assimilated estimates averaged 0.47 g C m(-2) day(-1), and only exceeded 0.5 g C m(-2) day(-1) on days where neither eddy flux nor soil efflux data were available. In generating C budgets, the assimilation process reduced the uncertainties associated with using data or model alone and the forecasts of NEE were statistically unbiased estimates. The results of the analysis emphasize the importance of time series as constraints. Occasional, rare measurements of stocks have limited use in constraining the estimates of other components of the C cycle. Long time series are particularly crucial for improving the analysis of pools with long time constants, such as SOM, woody biomass, and woody debris. Long-running forest stem surveys, and tree ring data, offer a rich resource that could be assimilated to provide an important constraint on C cycling of slow pools. For extending estimates of NEE across regions, DA can play a further important role, by assimilating remote-sensing data into the analysis of C cycles. We show, via sensitivity analysis, how assimilating an estimate of photosynthesis - which might be provided indirectly by remotely sensed data - improves the analysis of NEE.
机译:量化景观C动态的方法有两种,一种是通过测量C储量随时间的变化,另一种是直接测量C的通量。但是,这些数据可能是不完整的,并且存在缺口或偏差。生成C预算的另一种方法是使用基于过程的模型,该模型用于模拟C交换所涉及的关键过程。但是,模型构建的过程可以说是主观的,并且参数可能定义不正确。本文说明了为什么将数据同化(DA)技术(将种群和通量观测与动态模型结合在一起)为何能改善对生态系统碳(C)交换的估计并提供洞察力。我们使用集成卡尔曼滤波器(EnKF)将一系列测量与C转换的简单盒模型链接在一起。在3年的时间里,在俄勒冈州中部一个年轻的美国黄松松林中进行了测量,包括涡流和土壤CO2外排数据,凋落物收集,茎调查,根和土壤核心以及叶面积指数数据。简单的C模型是具有9个未知参数的质量平衡模型,可跟踪5个池中C的存储量变化。植被中的叶,木和细根池,还有新鲜的凋落物和土壤有机质(SOM),以及较粗的木屑池。我们将EnKF嵌套在优化例程中,以根据未知参数的数据和池的五个初始条件生成估算值。可以通过比较用EnKF分析得出的估计值与仅使用减少的数据或模型得出的估计值的概率分布,来判断DA处理的有效性。仅使用该模型,估计三年内C(NEE)的净生态系统交换量为-251 +/- 197 g C m(-2),而估计值为-419 +/- 29 g C m(-2) ),当所有观察值都被吸收到模型中时。每天通过涡流测量NEE的不确定度估计为0.5 g C m(-2)day(-1),但平均估计的不确定度平均为0.47 g C m(-2)day(-1),并且仅在既没有涡流也没有土壤排泄数据的天数超过0.5 g C m(-2)day(-1)。在生成C预算时,同化过程减少了与单独使用数据或模型相关的不确定性,并且NEE的预测为统计上无偏的估计。分析结果强调了时间序列作为约束条件的重要性。偶尔进行的稀有测量在限制C循环其他组成部分的估计方面用途有限。长时间序列对于改善具有较长时间常数(例如SOM,木质生物量和木质碎片)的库的分析至关重要。长期运行的森林茎调查和年轮数据提供了丰富的资源,可以将其同化,从而对慢池的C循环提供重要约束。为了将NEE的估计值扩展到整个区域,DA可以通过将遥感数据吸收到C周期分析中来发挥更重要的作用。通过敏感性分析,我们展示了如何吸收光合作用的估计值(可以由遥感数据间接提供)如何改善NEE的分析。

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