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Systematic bias in land surface models

机译:地表模型的系统偏差

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A neural network - based flux correction technique is applied to three land surface models. It is then used to show that the nature of systematic model error in simulations of latent heat, sensible heat, and the net ecosystem exchange of CO2 is shared between different vegetation types and indeed different models. By manipulating the relationship between the dataset used to train the correction technique and that used to test it, it is shown that as much as 45% of per-time-step model root-mean-square error in these flux outputs is due to systematic problems in those model processes insensitive to changes in vegetation parameters. This is shown in the three land surface models using flux tower measurements from 13 sites spanning 2 vegetation types. These results suggest that efforts to improve the representation of fundamental processes in land surface models, rather than parameter optimization, are the key to the development of land surface model ability.
机译:基于神经网络的通量校正技术被应用于三个陆地表面模型。然后用于表明,在潜热,显热和二氧化碳净生态系统交换模拟中系统模型误差的性质在不同植被类型之间以及实际上在不同模型之间是共享的。通过操纵用于训练校正技术的数据集与用于测试校正技术的数据集之间的关系,可以看出,在这些通量输出中,多达每个时间步长模型均方根误差的45%是由于系统这些模型过程中的问题对植被参数的变化不敏感。这在三个陆面模型中得到了证明,这些模型使用了通量塔的测量值,这些通量塔测量值来自跨越2种植被类型的13个站点。这些结果表明,努力提高地表模型中基本过程的表示能力而不是参数优化是开发地表模型能力的关键。

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