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首页> 外文期刊>Journal of Geophysical Research. Biogeosciences >Forecasting Responses of a Northern Peatland Carbon Cycle to Elevated CO_2 and a Gradient of Experimental Warming
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Forecasting Responses of a Northern Peatland Carbon Cycle to Elevated CO_2 and a Gradient of Experimental Warming

机译:预测北方泥炭碳循环到升高的CO_2和实验变暖梯度的反应

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摘要

The ability to forecast ecological carbon cycling is imperative to land management in a world where past carbon fluxes are no longer a clear guide in the Anthropocene. However, carbon-flux forecasting has not been practiced routinely like numerical weather prediction. This study explored (1) the relative contributions of model forcing data and parameters to uncertainty in forecasting flux-versus pool-based carbon cycle variables and (2) the time points when temperature and CO_2 treatments may cause statistically detectable differences in those variables. We developed an online forecasting workflow (Ecological Platform for Assimilation of Data (EcoPAD)), which facilitates iterative data-model integration. EcoPAD automates data transfer from sensor networks, data assimilation, and ecological forecasting. We used the Spruce and Peatland Responses Under Changing Experiments data collected from 2011 to 2014 to constrain the parameters in the Terrestrial Ecosystem Model, forecast carbon cycle responses to elevated CO_2 and a gradient of warming from 2015 to 2024, and specify uncertainties in the model output. Our results showed that data assimilation substantially reduces forecasting uncertainties. Interestingly, we found that the stochasticity of future external forcing contributed more to the uncertainty of forecasting future dynamics of C flux-related variables than model parameters. However, the parameter uncertainty primarily contributes to the uncertainty in forecasting C pool-related response variables. Given the uncertainties in forecasting carbon fluxes and pools, our analysis showed that statistically different responses of fast-turnover pools to various CO_2 and warming treatments were observed sooner than slow-turnover pools. Our study has identified the sources of uncertainties in model prediction and thus leads to improve ecological carbon cycling forecasts in the future.
机译:预测生态碳循环的能力是在过去碳通量不再是人培养中的透明指南的世界中的迫在因素。然而,碳通量预测尚未常规地练习例如数值天气预报。本研究探讨了(1)模型强迫数据和参数在预测磁通量与池的碳循环变量中的不确定性的相对贡献和(2)当温度和CO_2治疗时的时间点可能导致这些变量的统计学上可检测的差异。我们开发了一个在线预测工作流程(用于分析数据(ECOPAD)的生态平台),促进了迭代数据模型集成。 Ecopad自动从传感器网络,数据同化和生态预测中传输数据传输。我们在从2011年至2014年收集的改变实验数据下使用云杉和泥土反应来限制陆地生态系统模型中的参数,预测碳循环响应到高升高的CO_2和从2015年到2024的渐变,并在模型输出中指定不确定性。我们的研究结果表明,数据同化显着降低了预测不确定性。有趣的是,我们发现未来外部强迫的随机性促进了预测与模型参数的C导量相关变量的未来动态的不确定性。然而,参数不确定性主要有助于预测C池相关响应变量的不确定性。鉴于预测碳通量和池的不确定性,我们的分析表明,比速度池更快地观察到快速周转池对各种CO_2和升温处理的统计学不同的反应。我们的研究已经确定了模型预测中的不确定性的来源,从而导致未来改善生态碳循环预测。

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  • 作者单位

    Key Laboratory of Soil and Water Conservation and Ecological Restoration in Jiangsu Province Collaborative Innovation Center of Sustainable Forestry in Southern China of Jiangsu Province Nanjing Forestry University Nanjing China;

    Department of Microbiology and Plant Biology University of Oklahoma Norman OK USA;

    Center for Ecosystem Science and Society Department of Biological Sciences Northern Arizona University Flagstaff AZ USA;

    University of Oklahoma Information Technology Norman OK USA;

    Department of Microbiology and Plant Biology University of Oklahoma Norman OK USA;

    Environmental Sciences Division and Climate Change Science Institute Oak Ridge National Laboratory Oak Ridge TN USA;

    3Center for Ecosystem Science and Society Department of Biological Sciences Northern Arizona University Flagstaff AZ USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物分布与生物地理学;
  • 关键词

    Forecasting Responses; Northern Peatland; Carbon Cycle;

    机译:预测反应;北泥岩;碳循环;

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