首页> 外文期刊>Biogeosciences >Evaluating the agreement between measurements and models of net ecosystem exchange at different times and timescales using wavelet coherence: an example using data from the North American Carbon Program Site-Level Interim Synthesis
【24h】

Evaluating the agreement between measurements and models of net ecosystem exchange at different times and timescales using wavelet coherence: an example using data from the North American Carbon Program Site-Level Interim Synthesis

机译:利用小波相干性评估不同时间和尺度上净生态系统交换的度量与模型之间的一致性:以北美碳计划站点级中期综合数据为例

获取原文
获取原文并翻译 | 示例
       

摘要

Earth system processes exhibit complex patterns across time, as do the models that seek to replicate these processes. Model output may or may not be significantly related to observations at different times and on different frequencies. Conventional model diagnostics provide an aggregate view of model–data agreement, but usually do not identify the time and frequency patterns of model–data disagreement, leaving unclear the steps required to improve model response to environmental drivers that vary on characteristic frequencies. Wavelet coherence can quantify the times and timescales at which two time series, for example time series of models and measurements, are significantly different. We applied wavelet coherence to interpret the predictions of 20 ecosystem models from the North American Carbon Program (NACP) Site-Level Interim Synthesis when confronted with eddy-covariance-measured net ecosystem exchange (NEE) from 10 ecosystems with multiple years of available data. Models were grouped into classes with similar approaches for incorporating phenology, the calculation of NEE, the inclusion of foliar nitrogen (N), and the use of model–data fusion. Models with prescribed, rather than prognostic, phenology often fit NEE observations better on annual to interannual timescales in grassland, wetland and agricultural ecosystems. Models that calculated NEE as net primary productivity (NPP) minus heterotrophic respiration (HR) rather than gross ecosystem productivity (GPP) minus ecosystem respiration (ER) fit better on annual timescales in grassland and wetland ecosystems, but models that calculated NEE as GPP minus ER were superior on monthly to seasonal timescales in two coniferous forests. Models that incorporated foliar nitrogen (N) data were successful at capturing NEE variability on interannual (multiple year) timescales at Howland Forest, Maine. The model that employed a model–data fusion approach often, but not always, resulted in improved fit to data, suggesting that improving model parameterization is important but not the only step for improving model performance. Combined with previous findings, our results suggest that the mechanisms driving daily and annual NEE variability tend to be correctly simulated, but the magnitude of these fluxes is often erroneous, suggesting that model parameterization must be improved. Few NACP models correctly predicted fluxes on seasonal and interannual timescales where spectral energy in NEE observations tends to be low, but where phenological events, multi-year oscillations in climatological drivers, and ecosystem succession are known to be important for determining ecosystem function. Mechanistic improvements to models must be made to replicate observed NEE variability on seasonal and interannual timescales.
机译:地球系统过程在时间上表现出复杂的模式,而试图复制这些过程的模型也是如此。模型输出可能与在不同时间和不同频率上的观察结果显着相关或不显着相关。常规的模型诊断可以提供模型-数据一致性的总体视图,但是通常无法识别模型-数据不一致的时间和频率模式,从而不清楚改善对特征频率不同的环境驱动因素的模型响应所需的步骤。小波相干性可以量化两个时间序列(例如模型和测量的时间序列)明显不同的时间和时间尺度。当面对来自具有多年可用数据的10个生态系统中的涡度-协方差测量的净生态系统交换(NEE)时,我们应用小波相干性来解释北美碳计划(NACP)站点级中期综合报告对20种生态系统模型的预测。使用相似的方法将模型分为几类,包括物候学,NEE的计算,叶氮(N)的使用以及模型-数据融合的使用。在草原,湿地和农业生态系统中,具有规定的而非预后性的物候模型通常更适合于NEE观测值的年度至年际尺度。将NEE计算为净初级生产力(NPP)减去异养呼吸(HR)而不是总生态系统生产率(GPP)减去生态系统呼吸(ER)的模型更适合于草原和湿地生态系统的年度时间尺度,但将NEE计算为GPP减去的模型在两个针叶林中,ER在月度和季节时间尺度上均优于后者。结合叶面氮(N)数据的模型成功地捕获了缅因州霍兰森林的年际(多年)时标上的NEE变异性。采用模型-数据融合方法的模型经常(但并非总是)导致对数据的拟合度提高,这表明改进模型参数化很重要,但不是提高模型性能的唯一步骤。结合以前的发现,我们的结果表明驱动NEE每日和年度变化的机制趋于正确模拟,但这些通量的大小通常是错误的,表明必须改进模型参数化。很少有NACP模型能够正确预测季节和年际尺度上的通量,在这些尺度上,NEE观测值中的频谱能量往往较低,但已知物候事件,气候驱动因素的多年振荡和生态系统演替对于确定生态系统功能很重要。必须对模型进行机械改进,以在季节和年际尺度上复制观察到的NEE变异性。

相似文献

  • 外文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号