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Application of an automatic approach to calibrate the NEMURO nutrient-phytoplankton-zooplankton food web model in the Oyashio region

机译:自动方法在Oyashio地区校准NEMURO营养-浮游植物-浮游生物食物网模型的应用

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摘要

The Oyashio region in the western North Pacific supports high biological productivity and has been well monitored. We applied the NEMURO (North Pacific Ecosystem Model for Understanding Regional Oceanography) model to simulate the nutrients, phytoplankton, and zooplankton dynamics. Determination of parameters values is very important, yet ad hoc calibration methods are often used. We used the automatic calibration software PEST (model-independent Parameter ESTimation), which has been used previously with NEMURO but in a system without ontogenetic vertical migration of the large zooplankton functional group. Determining the performance of PEST with vertical migration, and obtaining a set of realistic parameter values for the Oyashio, will likely be useful in future applications of NEMURO. Five identical twin simulation experiments were performed with the one-box version of NEMURO. The experiments differed in whether monthly snapshot or averaged state variables were used, in whether state variables were model functional groups or were aggregated (total phytoplankton, small plus large zooplankton), and in whether vertical migration of large zooplankton was included or not. We then applied NEMURO to monthly climatological field data covering 1 year for the Oyashio, and compared model fits and parameter values between PEST-determined estimates and values used in previous applications to the Oyashio region that relied on ad hoc calibration. We substituted the PEST and ad hoc calibrated parameter values into a 3-D version of NEMURO for the western North Pacific, and compared the two sets of spatial maps of chlorophyll-a with satellite-derived data. The identical twin experiments demonstrated that PEST could recover the known model parameter values when vertical migration was included, and that over-fitting can occur as a result of slight differences in the values of the state variables. PEST recovered known parameter values when using monthly snapshots of aggregated state variables, but estimated a different set of parameters with monthly averaged values. Both sets of parameters resulted in good fits of the model to the simulated data. Disaggregating the variables provided to PEST into functional groups did not solve the over-fitting problem, and including vertical migration seemed to amplify the problem. When we used the climatological field data, simulated values with PEST-esti-mated parameters were closer to these field data than with the previously determined ad hoc set of parameter values. When these same PEST and ad hoc sets of parameter values were substituted into 3-D-NEMURO (without vertical migration), the PEST-estimated parameter values generated spatial maps that were similar to the satellite data for the Kuroshio Extension during January and March and for the subarctic ocean from May to November. With non-linear problems, such as vertical migration, PEST should be used with caution because parameter estimates can be sensitive to how the data are prepared and to the values used for the searching parameters of PEST. We recommend the usage of PEST, or other parameter optimization methods, to generate first-order parameter estimates for simulating specific systems and for insertion into 2-D and 3-D models. The parameter estimates that are generated are useful, and the inconsistencies between simulated values and the available field data provide valuable information on model behavior and the dynamics of the ecosystem.
机译:北太平洋西部的Oyashio地区具有很高的生物生产力,并受到良好的监测。我们应用NEMURO(了解区域海洋学的北太平洋生态系统模型)模型来模拟养分,浮游植物和浮游动物的动力学。确定参数值非常重要,但是经常使用临时校准方法。我们使用了自动校准软件PEST(与模型无关的参数ESTimation),该软件先前已与NEMURO一起使用,但是在没有大型浮游动物功能群自生垂直迁移的系统中使用。确定带有垂直迁移的PEST的性能,并获得一组Oyashio的实际参数值,可能对NEMURO的未来应用很有用。用一箱式NEMURO进行了五个相同的双胞胎模拟实验。实验的不同之处在于是否使用月快照或平均状态变量,状态变量是模型功能组还是聚集的(总浮游植物,小型浮游动物和大型浮游动物)以及是否包括大型浮游动物的垂直迁移。然后,我们将NEMURO应用于Oyashio的覆盖1年的每月气候场数据,并比较了PEST确定的估计值与之前根据临时校准应用于Oyashio地区的值之间的模型拟合和参数值。我们将PEST和临时校准的参数值替换为北太平洋西部的NEMURO的3-D版本,并将两组叶绿素a的空间图与卫星衍生数据进行了比较。相同的双胞胎实验表明,当包括垂直迁移时,PEST可以恢复已知的模型参数值,并且由于状态变量的值略有差异,可能导致过度拟合。当使用聚合状态变量的每月快照时,PEST恢复了已知的参数值,但是使用每月的平均值估计了一组不同的参数。两组参数都使模型与模拟数据非常吻合。将提供给PEST的变量分解为功能组并不能解决过度拟合的问题,包括垂直迁移似乎会放大问题。当我们使用气候现场数据时,具有PEST估计参数的模拟值比先前确定的临时参数值更接近这些现场数据。当将这些相同的PEST和临时参数集替换为3-D-NEMURO(无垂直迁移)时,PEST估计的参数值生成的空间图类似于黑潮扩展卫星数据在1月和3月以及从五月到十一月对于诸如垂直迁移之类的非线性问题,应谨慎使用PEST,因为参数估计值可能对数据的准备方式以及用于PEST搜索参数的值敏感。我们建议使用PEST或其他参数优化方法来生成一阶参数估计值,以模拟特定系统并插入2-D和3-D模型中。生成的参数估计值很有用,并且模拟值和可用的现场数据之间的不一致为模型行为和生态系统的动力学提供了有价值的信息。

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  • 来源
    《Progress in Oceanography》 |2010年第4期|p.186-200|共15页
  • 作者单位

    Fisheries Research Agency, Tohoku National Fisheries Research Institute, 3-27-5 Shinhama-cho, Shiogama, Miyagi 985-0001, Japan;

    Ehime University, Center for Marine Environmental Studies, Matsuyama, Ehime 790-8577, Japan;

    Fisheries Research Agency, National Research Institute of Fisheries Science, Yokohama, Kanagawa 236-8648, Japan;

    Fisheries Research Agency, Hokkaido National Fisheries Research Institute, Kushiro, Hokkaido 085-0802, Japan;

    Fisheries Research Agency, Tohoku National Fisheries Research Institute, 3-27-5 Shinhama-cho, Shiogama, Miyagi 985-0001, Japan;

    Fisheries Research Agency, Tohoku National Fisheries Research Institute, 3-27-5 Shinhama-cho, Shiogama, Miyagi 985-0001, Japan;

    Japan Agency for Marine-Earth Science and Technology, Frontier Research Center for Global Change, Yokohama 236-0001, Japan,apan Science and Technology Agency, Core Research for Evolutional Science and Technology, Kawaguchi 332-0012, Japan;

    Department of Oceanography and Coastal Sciences, Louisiana State University, Baton Rouge, LA 70803, USA;

    National Marine Fisheries Service, Alaska Fisheries Science Center, Seattle, WA 98115-0070, USA;

    Japan Agency for Marine-Earth Science and Technology, Frontier Research Center for Global Change, Yokohama 236-0001, Japan,Faculty of Fisheries Sciences, Hokkaido University, Sapporo, Hokkaido 060-0813, Japan;

    Fisheries Research Agency, Tohoku National Fisheries Research Institute, 3-27-5 Shinhama-cho, Shiogama, Miyagi 985-0001, Japan;

    Fisheries Research Agency, Tohoku National Fisheries Research Institute, 3-27-5 Shinhama-cho, Shiogama, Miyagi 985-0001, Japan;

    Fisheries Research Agency, Tohoku National Fisheries Research Institute, 3-27-5 Shinhama-cho, Shiogama, Miyagi 985-0001, Japan;

    Fisheries Research Agency, Tohoku National Fisheries Research Institute, 3-27-5 Shinhama-cho, Shiogama, Miyagi 985-0001, Japan;

    Fisheries Research Agency, Tohoku National Fisheries Research Institute, 3-27-5 Shinhama-cho, Shiogama, Miyagi 985-0001, Japan;

    Fisheries Research Agency, Tohoku National Fisheries Research Institute, 3-27-5 Shinhama-cho, Shiogama, Miyagi 985-0001, Japan;

    Fisheries Research Agency, Hokkaido National Fisheries Research Institute, Kushiro, Hokkaido 085-0802, Japan;

    Fisheries Research Agency, Hokkaido National Fisheries Research Institute, Kushiro, Hokkaido 085-0802, Japan;

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