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A Bayesian approach to evaluation of soil biogeochemical models

机译:一种评价土壤生物地球化学模型的贝叶斯途径

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To make predictions about the carbon cycling consequences of rising global surface temperatures, Earth system scientists rely on mathematical soil biogeochemical models (SBMs). However, it is not clear which models have better predictive accuracy, and a rigorous quantitative approach for comparing and validating the predictions has yet to be established. In this study, we present a Bayesian approach to SBM comparison that can be incorporated into a statistical model selection framework. We compared the fits of linear and nonlinear SBMs to soil respiration data compiled in a recent meta-analysis of soil warming field experiments. Fit quality was quantified using Bayesian goodness-of-fit metrics, including the widely applicable information criterion (WAIC) and leave-one-out cross validation (LOO). We found that the linear model generally outperformed the nonlinear model at fitting the meta-analysis data set. Both WAIC and LOO computed higher overfitting risk and effective numbers of parameters for the nonlinear model compared to the linear model, conditional on the data set. Goodness of fit for both models generally improved when they were initialized with lower and more realistic steady-state soil organic carbon densities. Still, testing whether linear models offer definitively superior predictive performance over nonlinear models on a global scale will require comparisons with additional site-specific data sets of suitable size and dimensionality. Such comparisons can build upon the approach defined in this study to make more rigorous statistical determinations about model accuracy while leveraging emerging data sets, such as those from long-term ecological research experiments.
机译:对全球表面温度上升的碳循环后果进行预测,地球系统科学家依赖于数学土壤化学模型(SBMS)。但是,尚不清楚哪种模型具有更好的预测准确性,并且尚未建立比较和验证预测的严格定量方法。在这项研究中,我们向SBM比较提出了一种贝叶斯方法,可以纳入统计模型选择框架。将线性和非线性SBM的拟合与在最近的土壤升温场实验中进行的土壤呼吸数据进行了比较。使用Bayesian Nodensity-of Colrics量化拟合质量,包括广泛适用的信息标准(瓦米奇)和休假交叉验证(LOO)。我们发现线性模型通常优于拟合元分析数据集时的非线性模型。与线性模型相比,LOIC和LOO两者都计算了更高的非线性模型的过度风险和有效参数数量,条件是数据集的条件。适合两种型号的良好通常在初始化较低和更现实的稳态土壤有机碳密度时完全改善。尽管如此,在全球范围内测试线性模型是否提供明确的卓越预测性能,将需要比较具有适当尺寸和维度的附加站点特定数据集。这种比较可以在本研究中定义的方法上建立,以便在利用新兴数据集的同时制定更严格的统计决定,例如来自长期生态研究实验的新兴数据集。

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