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首页> 外文期刊>Journal of Geophysical Research. Biogeosciences >New data-driven estimation of terrestrial CO_2 fluxes in Asia using a standardized database of eddy covariance measurements, remote sensing data, and support vector regression
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New data-driven estimation of terrestrial CO_2 fluxes in Asia using a standardized database of eddy covariance measurements, remote sensing data, and support vector regression

机译:使用标准化的涡旋协方差测量数据库,遥感数据和支持向量回归亚洲地球群核数的新数据驱动估计

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摘要

The lack of a standardized database of eddy covariance observations has been an obstacle for data-driven estimation of terrestrial CO_2 fluxes in Asia. In this study, we developed such a standardized database using 54 sites from various databases by applying consistent postprocessing for data-driven estimation of gross primary productivity (GPP) and net ecosystem CO_2 exchange (NEE). Data-driven estimation was conducted by using a machine learning algorithm: support vector regression (SVR), with remote sensing data for 2000 to 2015 period. Site-level evaluation of the estimated CO_2 fluxes shows that although performance varies in different vegetation and climate classifications, GPP and NEE at 8 days are reproduced (e.g., r~2 = 0.73 and 0.42 for 8 day GPP and NEE). Evaluation of spatially estimated GPP with Global Ozone Monitoring Experiment 2 sensor-based Sun-induced chlorophyll fluorescence shows that monthly GPP variations at subcontinental scale were reproduced by SVR (r~2 = 1.00, 0.94, 0.91, and 0.89 for Siberia, East Asia, South Asia, and Southeast Asia, respectively). Evaluation of spatially estimated NEE with net atmosphere-land CO_2 fluxes of Greenhouse Gases Observing Satellite (GOSAT) Level 4A product shows that monthly variations of these data were consistent in Siberia and East Asia; meanwhile, inconsistency was found in South Asia and Southeast Asia. Furthermore, differences in the land CO_2 fluxes from SVR-NEE and GOSAT Level 4A were partially explained by accounting for the differences in the definition of land CO_2 fluxes. These data-driven estimates can provide a new opportunity to assess CO_2 fluxes in Asia and evaluate and constrain terrestrial ecosystem models.
机译:缺乏伊迪协方差观测的标准化数据库一直是亚洲陆地CO_2势态的数据驱动估计的障碍。在这项研究中,我们通过应用一致的后期初级生产率(GPP)和Net Ecosystem Co_2交换(NEE)来使用一致的后处理来使用来自各种数据库的54个站点的标准化数据库。通过使用机器学习算法进行数据驱动估计:支持向量回归(SVR),具有2000到2015年期间的遥感数据。估计的CO_2助焊剂的现场级评估表明,尽管性能在不同的植被和气候分类中变化,但再现8天的GPP和NEE(例如,R〜2 = 0.73和0.42,8天GPP和NEE)。具有全局臭氧监测实验的空间估计的GPP的评价2传感器的太阳致叶绿素荧光表明,SVR(R〜2 = 1.00,0.94,0.91和0.89的SVR每月GPP变化为西伯利亚,东亚,南亚和东南亚分别)。对空间估计的NEE与净气氛 - 覆盖的卫星(GOSAT)等级4A产品的净气体碳水焊条的评价术(Gosat)等级4a产品表明,这些数据的月度变化在西伯利亚和东亚一致;同时,在南亚和东南亚发现不一致。此外,通过算用于陆地CO_2通量的定义的差异,部分解释来自SVR-NEE和GOSAT等级4a的土地CO_2助熔剂的差异。这些数据驱动的估计值可以提供评估亚洲CO_2助条的新机会,并评估和约束地面生态系统模型。

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  • 作者单位

    Department of Environmental Geochemical Cycle Research Japan Agency for Marine-Earth Science and Technology Yokohama Japan;

    Graduate School of Life and Environmental Sciences Osaka Prefecture University Sakai Japan;

    Department of Environmental Geochemical Cycle Research Japan Agency for Marine-Earth Science and Technology Yokohama Japan;

    Center for Global Environmental Research National Institute for Environmental Studies Tsukuba Japan;

    Department of Landscape Architecture and Rural Systems Engineering Interdisciplinary Program in Agricultural and Forest Meteorology Seoul National University Seoul South Korea;

    International Rice Research Institute Los Ba?os Philippines;

    Department of Physical Geography and Ecosystem Science Lund University Lund Sweden;

    Institute of Arctic Biology University of Alaska Fairbanks Fairbanks Alaska USA;

    National Center for AgroMeteorology Seoul South Korea;

    Research Faculty of Agriculture Hokkaido University Sapporo Japan;

    NASA Goddard Space Flight Center Greenbelt Maryland USA;

    Department of Environmental Geochemical Cycle Research Japan Agency for Marine-Earth Science and Technology Yokohama Japan;

    Earth and Climate Cluster Department of Earth Sciences VU University Amsterdam Amsterdam Netherlands;

    Mazingira Centre International Livestock Research Institute Nairobi Kenya;

    Institute for Agro-Environmental Sciences NARO Tsukuba Japan;

    River Basin Research Center Gifu University Gifu Japan;

    Field Science Center for Northern Biosphere Hokkaido University Sapporo Japan;

    A.N. Severtsov Institute of Ecology and Evolution RAS Moscow Russia;

    Institute of Arctic Biology University of Alaska Fairbanks Fairbanks Alaska USA;

    Kyushu Research Center Forestry and Forest Products Research Institute Kumamoto Japan;

    Graduate School of Agriculture Kyoto University Kyoto Japan;

    Graduate School of Bioagricultural Sciences Nagoya University Nagoya Japan;

    GBP National Institute of Himalayan Environment and Sustainable Development Almora India;

    Key Laboratory of Ecosystem Network Observation and Modeling Institute of Geographic Sciences and Natural Resources Research Chinese Academy of Sciences Beijing China;

    Graduate School of Engineering Osaka University Suita Japan;

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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

    New data-driven; estimation terrestrial; support vector regression;

    机译:新的数据驱动;估计陆地;支持向量回归;

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