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A proposal of an indicator for quantifying model robustness based on the relationship between variability of errors and of explored conditions

机译:提出了一种基于误差变化与探究条件之间的关系来量化模型鲁棒性的指标的建议

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摘要

The evaluation of biophysical models is usually carried out by estimating the agreement between measured and simulated data and, more rarely, by using indices for other aspects, like model complexity and overparameterization. In spite of the importance of model robustness, especially for large area applications, no proposals for its quantification are available. In this paper, we would like to open a discussion on this issue, proposing a first approach for a quantification of robustness based on the variability of model error to variability of explored conditions ratio. We used modelling efficiency (EF) for quantifying error in model predictions and a normalized agrometeorological index (SAM) based on cumulated rainfall and reference evapotranspiration to characterize the conditions of application. Population standard deviations of EF andSAMwere used to quantify their variability. The indicator was tested for models estimating meteorological variables and crop state variables. The values provided by the robustness indicator (IR) were discussed according to the models’ features and to the typology and number of processes simulated. IR increased with the number of processes simulated and, within the same typology of model, with the degree of overparameterization. No correlation were found between IR and two of the most used indices of model error (RRMSE, EF). This supports its inclusion in integrated systems for model evaluation.
机译:对生物物理模型的评估通常是通过估计测量数据和模拟数据之间的一致性来进行的,而很少使用其他方面的指标来进行评估,例如模型复杂性和过度参数化。尽管模型鲁棒性非常重要,尤其是对于大面积应用,但尚无量化的建议。在本文中,我们想就此问题展开讨论,提出一种基于模型误差的可变性与探究条件比率的可变性来量化鲁棒性的第一种方法。我们使用建模效率(EF)量化模型预测中的误差,并使用基于累积降雨和参考蒸散量的归一化农业气象指数(SAM)来表征应用条件。 EF和SAM的总体标准差用于量化其变异性。测试了该指标的模型,以估算气象变量和作物状态变量。根据模型的功能以及模拟过程的类型和数量,讨论了耐用性指示器(IR)提供的值。 IR随着模拟的过程数量增加,并且在相同的模型类型内,随着参数化程度的增加而增加。在IR和两个最常用的模型误差指标(RRMSE,EF)之间未发现相关性。这支持将其包含在用于模型评估的集成系统中。

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