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Climate-driven uncertainties in modeling terrestrial ecosystem net primary productivity in China

机译:中国陆地生态系统净初级生产力建模的气候驱动的不确定性

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摘要

Evaluating the uncertainties in regional/global carbon flux estimates is essential for better understanding of terrestrial carbon dynamics. At the regional scale, climate input data is an important source of model simulation uncertainty. In this study, a process-based ecosystem model, CEVSA, was run driven by four climate input datasets during 1980-2004, i.e., climate input datasets interpolated from 756 (756s) and 2400 weather stations (2400s), the NCEP/NCAR and Princeton reanalysis datasets. We used the 2400s dataset as the reference because it was derived from high density weather station interpolation. The simulated Net Primary Productivity (NPP) based on interpolated climate data from the 756s and the two reanalysis datasets were compared with that from the 2400s dataset. Then, we quantified the uncertainty of model simulations at regional-scale caused by climate input data, and evaluated the performance of different climate datasets across different eco-regions. Our results suggest that the 756s, Princeton and NCEP/NCAR reanalysis datasets overestimated the 25-year mean annual temperature by 7.66%-12.25% and the precipitation by 2.83%-8.43%, respectively; accordingly, the simulated NPP ranged from 3.53 to 3.96 Pg C, 6% to 12% higher than the reference over the entire China. The 756s and the two reanalysis datasets captured well the trend and interannual variations of annual NPP during the study period, but showed systematic errors in the total amount of NPP compared with the 2400s dataset. To increase the station density in the eco-regions with a station density greater than 1.0 station per 10(4) km(2) (1.0 s/10(4) km(2)) would not decrease the uncertainty for model simulation at a 0.1 degrees spatial resolution. The NCEP/NCAR and Princeton reanalysis datasets showed larger uncertainties in most eco-regions compared with the interpolated datasets. Our results also suggest that the accuracy of the NCEP/NCAR reanalysis data should be further improved in most eco-regions. On Qinghai-Tibet Plateau and in northwestern China, all four climate input datasets had relatively lower accuracy due to the limited observation data available. Future work should further evaluate the simulated NPP against observations and quantify the accuracy of driving climate data to decrease the uncertainty of model simulations at the regional scale.
机译:评估区域/全球碳通量估计的不确定性对于更好地了解陆地碳动力学至关重要。在区域规模,气候输入数据是模型模拟不确定性的重要来源。在本研究中,基于过程的生态系统模型CEVSA在1980 - 2004年期间由四个气候输入数据集驱动,即气候输入数据集从756(756年)和2400个气象站(2400s),NCEP / NCAR和普林斯顿重新分析数据集。我们使用了2400s数据集作为参考,因为它源自高密度气象站插值。将基于756s和两个再分析数据集的内插气候数据的模拟净初级生产率(NPP)与来自2400年代数据集的内插数据集进行了比较。然后,我们量化了气候输入数据引起的区域规模模型模拟的不确定性,并评估了不同生态区域不同气候数据集的性能。我们的研究结果表明,756年代,普林斯顿和NCEP / NCAR Reanalysicate Datasets高估了25年的平均年度温度7.66%-12.25%,降水量分别为2.83%-8.43%;因此,模拟的NPP范围为3.53至3.96pg c,比整个中国的参考值高出6%至12%。 756年代和两个再分析数据集在研究期间捕获了年度NPP的趋势和续际变化,但与2400S数据集相比,NPP总量的系统错误。为了增加生态区域中的站密度,电站密度大于1.0 km(2)(2)(1.0 s / 10(4)Km(2))不会降低模型模拟的不确定性0.1度空间分辨率。与内插数据集相比,NCEP / NCAR和Princeton Reanalysicate数据集在大多数生态区域中显示出更大的不确定性。我们的结果还表明,在大多数生态区域中,应进一步改善NCEP / NCAR再分析数据的准确性。在青藏高原和中国西北部,所有四个气候输入数据集的准确性相对较低,因为可用的观察数据有限。未来的工作应进一步评估模拟的NPP防止观察,并量化驾驶气候数据的准确性,以降低区域规模的模型模拟的不确定性。

著录项

  • 来源
    《Journal of Thermal Biology》 |2017年第1期|共10页
  • 作者单位

    Chinese Acad Agr Sci Inst Environm &

    Sustainable Dev Agr Minist Agr Key Lab Dryland Agr Beijing 100081 Peoples R China;

    Chinese Acad Forestry Inst Forest Ecol Environm &

    Protect State Forestry Adm Key Lab Forest Ecol &

    Environm Beijing 100091 Peoples R China;

    Chinese Acad Sci Inst Geog Sci &

    Nat Resources Res Key Lab Ecosyst Network Observat &

    Modeling Beijing 100101 Peoples R China;

    Univ Kentucky Dept Plant &

    Soil Sci Coll Agr Food &

    Environm Lexington KY 40546 USA;

    Chinese Acad Sci Inst Geog Sci &

    Nat Resources Res Key Lab Ecosyst Network Observat &

    Modeling Beijing 100101 Peoples R China;

    Chinese Acad Sci Inst Geog Sci &

    Nat Resources Res Key Lab Ecosyst Network Observat &

    Modeling Beijing 100101 Peoples R China;

    Chinese Acad Agr Sci Inst Environm &

    Sustainable Dev Agr Minist Agr Key Lab Dryland Agr Beijing 100081 Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 分子生物学;
  • 关键词

    Uncertainty; Net primary productivity; Interpolated data; Reanalysis data; Process-based ecosystem model;

    机译:不确定性;净初级生产力;内插数据;重新分析数据;基于过程的生态系统模型;

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