首页> 外文期刊>Journal of Geophysical Research. Biogeosciences >Uncertainty analysis of terrestrial net primary productivity and net biome productivity in China during 1901–2005
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Uncertainty analysis of terrestrial net primary productivity and net biome productivity in China during 1901–2005

机译:1901 - 2005年中国陆地净初级生产力及净生物群系生产率的不确定性分析

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摘要

Despite the importance of net primary productivity (NPP) and net biome productivity (NBP), estimates of NPP and NBP for China are highly uncertain. To investigate the main sources of uncertainty, we synthesized model estimates of NPP and NBP for China from published literature and the Multi-scale Synthesis and Terrestrial Model Intercomparison Project (MsTMIP). The literature-based results showed that total NPP and NBP in China were 3.35 ± 1.25 and 0.14 ± 0.094 Pg C yr~(-1), respectively. Classification and regression tree analysis based on literature data showed that model type was the primary source of the uncertainty, explaining 36% and 64% of the variance in NPP and NBP, respectively. Spatiotemporal scales, land cover conditions, inclusion of the N cycle, and effects of N addition also contributed to the overall uncertainty. Results based on the MsTMIP data suggested that model structures were overwhelmingly important (>90%) for the overall uncertainty compared to simulations with different combinations of time-varying global change factors. The interannual pattern of NPP was similar among diverse studies and increased by 0.012 Pg C yr~(-1) during 1981–2000. In addition, high uncertainty in China’s NPP occurred in areas with high productivity, whereas NBP showed the opposite pattern. Our results suggest that to significantly reduce uncertainty in estimated NPP and NBP,model structures should be substantially tested on the basis of empirical results. To this end, coordinated distributed experiments with multiple global change factors might be a practical approach that can validate specific structures of different models.
机译:尽管净初级生产力(NPP)和净生物群系生产率(NBP)的重要性,但中国净额和中国人民银行的估计是高度不确定的。为了调查不确定性的主要来源,我们从发表文献和多尺度合成和地面模型相互熟悉项目(MSTMIP)综合了中国氟氯化铅和NBP的模型估计。基于文献的结果表明,中国的总NPP和NBP分别为3.35±1.25和0.14±0.094pg C YR〜(-1)。基于文献数据的分类和回归树分析显示,模型类型是不确定性的主要来源,分别解释了NPP和NBP中的36%和64%。时空尺度,陆地覆盖条件,包含n个循环,并且N添加的效果也有助于整体不确定性。基于MSTMIP数据的结果表明,对于具有不同全局变革因子的不同组合的模拟相比,模型结构的整体不确定性是绝大的重要性(> 90%)。在不同研究中,NPP的续际模式在1981-2000期间增加了0.012 pg C YR〜(-1)。此外,中国的NPP在高生产率高的地区发生了高不确定性,而NBP则表现出相反的模式。我们的研究结果表明,在估计的NPP和NBP中显着减少不确定性,应基于经验结果基本上进行模型结构。为此,具有多个全局变化因子的协调分布式实验可能是一种实用方法,可以验证不同模型的特定结构。

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    State Key Laboratory of Estuarine and Coastal Research Tiantong National Field Observation Station for Forest Ecosystem School of Ecological and Environmental Sciences East China Normal University Shanghai China;

    State Key Laboratory of Estuarine and Coastal Research Tiantong National Field Observation Station for Forest Ecosystem School of Ecological and Environmental Sciences East China Normal University Shanghai China;

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

    Coastal Ecosystems Research Station of Yangtze River Estuary Ministry of Education Key Laboratory for Biodiversity Science and Ecological Engineering Institute of Biodiversity Science School of Life Sciences Fudan University Shanghai China;

    Shanghai Key Laboratory for Urban Ecological Processes and Eco-Restoration East China Normal University Shanghai China;

    Shanghai Key Laboratory for Urban Ecological Processes and Eco-Restoration East China Normal University Shanghai China;

    Coastal Ecosystems Research Station of Yangtze River Estuary Ministry of Education Key Laboratory for Biodiversity Science and Ecological Engineering Institute of Biodiversity Science School of Life Sciences Fudan University Shanghai China;

    Institute of Atmospheric Physics Chinese Academy of Sciences Beijing China;

    Jet Propulsion Laboratory California Institute of Technology Pasadena California USA;

    Institute of Geographical Sciences and Natural Resource Research Chinese Academy of Sciences Beijing China;

    National Climate Center China Meteorological Administration Beijing China;

    School of Earth Sciences and Environmental Sustainability Northern Arizona University Flagstaff Arizona USA;

    Department of Atmospheric Sciences University of Illinois at Urbana- Champaign Urbana Illinois USA;

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

    Institute of Remote Sensing and Digital Earth Chinese Academy of Sciences Beijing China;

    Department of Global Ecology Carnegie Institution for Science Stanford California USA;

    Jet Propulsion Laboratory California Institute of Technology Pasadena California USA;

    Institute of Environmental Sciences University of Quebec at Montreal Montreal Quebec Canada;

    Department of Ecology Montana State University Bozeman Montana USA;

    Woods Hole Research Center Falmouth Massachusetts USA;

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

    State Key Laboratory of Remote Sensing Science School of Geography and Remote Sensing Science Beijing Normal University Beijing China;

    Institute of Geographical Sciences and Natural Resource Research Chinese Academy of Sciences Beijing China;

    International Center for Climate and Global Change Research School of Forestry and Wildlife Sciences Auburn University Auburn Alabama USA;

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

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  • 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

    Large uncertainty exists in estimates of terrestrial NPP and NBP in China; Methodological differences greatly contribute to the uncertainty in NPP and NBP; Uncertainty in the interannual pattern of NBP is greater than that of NPP;

    机译:地面NPP和NBP的估计存在巨大的不确定性;方法论差异极大地促成了NPP和NBP的不确定性;NBP的持续模式的不确定性大于NPP;

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