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Synthetic retrieval of hourly net ecosystem exchange using the neural network model with combined MI and GOCI geostationary sensor datasets and ground-based measurements

机译:使用神经网络模型结合MI和GOCI对地静止传感器数据集以及基于地面的测量值,对小时净生态系统交换进行综合检索

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摘要

Net ecosystem carbon dioxide (CO2) exchange (NEE) is a key parameter for understanding the terrestrial plant ecosystems, but it is difficult to monitor or predict over large areas at fine temporal resolutions. In this research, we estimated the hourly NEE using a combination of the integrated neural network (NN) model with geostationary satellite imagery to overcome the limitations of existing daily polar orbiting satellite-derived carbon flux products. Two sets of satellite imageries (i.e. the meteorological imager (MI) and geostationary ocean colour imager (GOCI) aboard communication, ocean, and meteorological satellite (COMS)) and CO2 flux data derived from eddy covariance measurements were used to verify the feasibility of applying hourly geostationary satellite imagery with an NN-based approach for estimating NEE at high temporal resolutions. For the NN model, the optimum neuronal architecture was established using an NN with one hidden layer that was trained using the Levenberg-Marquardt back propagation algorithm. The hourly NEE values estimated in test period from the NN model using the combined COMS MI and GOCI imagery and ground measurements as model inputs were compared with the eddy covariance NEE values from the measurement tower, which yielded reliable statistical agreement. The hourly NEE results from the NN model based on COMS MI and GOCI imagery and ground measurement data had the highest accuracy (RMSE = 2.026 mu mol m(-2) s(-2), R = 0.975), while the root mean square error (RMSE) and the regression coefficient (R) generated by the NN model based on satellite imagery as the sole input variable were relatively lower (RMSE = 3.230 mu mol m(-2) s(-2), R = 0.952). Although the simulations for the satellite-only NEE were showed as lower accuracy than the NN model that included all input variables, the hourly variations in NEE also appeared to describe its daily growth and development pattern well, indicating the possibility of deriving hourly-based products from the proposed NN model using geostationary satellite data as inputs.
机译:净生态系统二氧化碳(CO2)交换(NEE)是了解陆生植物生态系统的关键参数,但是很难以良好的时间分辨率在大面积上进行监视或预测。在这项研究中,我们使用综合神经网络(NN)模型与对地静止卫星图像的组合来估算每小时NEE,以克服现有的每日极轨卫星衍生的碳通量产品的局限性。使用两组卫星图像(即通信,海洋和气象卫星(COMS)上的气象成像仪(MI)和地球静止海洋彩色成像仪(GOCI))和从涡度协方差测量得出的CO2通量数据来验证应用该方法的可行性。基于NN的每小时对地静止卫星图像,以高时间分辨率估算NEE。对于NN模型,使用具有Levenberg-Marquardt反向传播算法训练的一个具有隐藏层的NN建立了最佳神经元体系结构。将使用COMS MI和GOCI影像和地面测量数据作为模型输入的,由NN模型在测试期间估算的每小时NEE值与来自测量塔的涡旋协方差NEE值进行比较,从而得出可靠的统计一致性。基于COMS MI和GOCI影像和地面测量数据的NN模型的每小时NEE结果具有最高的准确性(RMSE = 2.026μmolmol m(-2)s(-2),R = 0.975),而均方根误差(RMSE)和基于卫星图像的NN模型作为唯一输入变量生成的回归系数(R)相对较低(RMSE = 3.230μmol m(-2)s(-2),R = 0.952)。尽管对纯卫星NEE的模拟显示出比包括所有输入变量的NN模型低的准确性,但NEE的每小时变化也似乎很好地描述了其每日增长和发展模式,表明有可能推导基于小时的产品使用对地静止卫星数据作为输入从建议的NN模型中提取。

著录项

  • 来源
    《International journal of remote sensing》 |2017年第23期|7441-7456|共16页
  • 作者单位

    Korea Aerosp Res Inst, Natl Satellite Operat & Applicat Ctr, Cal Val & Data Qual Control Team, Daejeon, South Korea;

    Univ Southern Queensland, Inst Agr & Environm, Sch Agr Computat & Environm Sci, Darling Heights, Qld, Australia;

    Natl Inst Forest Sci, Dept Forest Conservat, Daejeon, South Korea;

    Yonsei Univ, Dept Atmospher Sci, Seoul, South Korea;

    Korea Meteorol Adm, Natl Climate Data Ctr, Seogwipo, South Korea;

    Pukyong Natl Univ, Dept Spatial Informat Engn, Busan, South Korea;

    Chonnam Natl Univ, Dept Appl Plant Sci, Gwangju, South Korea;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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