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首页> 外文期刊>Ecological Modelling >A Bayesian inversion framework to evaluate parameter and predictive inference of a simple soil respiration model in a cool-temperate forest in western Japan
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A Bayesian inversion framework to evaluate parameter and predictive inference of a simple soil respiration model in a cool-temperate forest in western Japan

机译:贝叶斯反演框架,以评估日本西部凉爽温带森林中简单土壤呼吸模型的参数及预测推理

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Careful modelling of soil carbon sequestration is essential to evaluate future terrestrial feedback to the earth climate system through atmosphere-surface carbon exchange. Few studies have evaluated, in bio- and geo-applications, parameter and predictive uncertainty of soil respiration models by considering the difference between observations and model predictions; i.e. residual error, which is assumed neither to be independent nor to be described by a normal (i.e. Gaussian) probability distribution with a mean of zero and constant variance. In this paper, we use 2-year observations of soil carbon flux from 2017 to 2018 (hereafter referred to as 'long-term simulation') obtained with two open-top chambers to estimate parameter and predictive uncertainty of a simple soil respiration model based on Bayesian statistics in a cool-temperate forest in western Japan. We also use a Gaussian innovative residual error model in which a generalised likelihood uncertainty estimation that accounts for correlated, heteroscedastic, non-normally distributed (i.e. non-Gaussian) residual error flexibly handles statistics varying in skewness and kurtosis. Results show that the effects of correlation and heteroscedasticity were eliminated adequately. Additionally, the posterior distribution of the residuals had a pattern intermediate to those of Gaussian and Laplacian (or double-exponential) distributions. Consequently, the predicted soil respiration rate, and range of uncertainty therein, well-matched the observational data. Furthermore, we compare results of parameter and predictive inference of the soil respiration model from the long-term simulation with those constrained of short-term simulations (i.e. 4-month subsets of the 2-year dataset) to determine the extent to which the approach used affects the estimation of parameter and predictive uncertainty. No significant difference in parameter estimates was found between the long-term simulation versus any of the short-term simulations, whereas short-term simulation analysis of the uncertainty at 50 %-i.e. between the lower (25 %) and upper (75 %) quartiles of the probability range-indicated distinctive variations in model parameters in summer when more vigorous activity of trees and organisms promotes carbon cycling between the atmosphere and ecosystem. Overall we demonstrate that the Bayesian inversion approach is useful as a means by which to evaluate effectively parameter and predictive uncertainty of a soil respiration model with precise representation of residual errors.
机译:通过大气表面碳交换,仔细建模土壤碳封存对于评估未来的地球气候系统的未来地面反馈必不可少。通过考虑观察和模型预测之间的差异,在生物和地理应用,参数和预测性不确定性的情况下,少数研究评估了,参数和土壤呼吸模型的预测性不确定性;即残余误差,其既不是独立的,也不是由正常(即高斯)概率分布描述的,具有零和恒定方差的平均值。在本文中,我们使用2017年至2018年的土壤碳通量的2年观测(以下简称为“长期仿真”),其中两个敞篷腔室获得了基于简单土壤呼吸模型的参数和预测性不确定性论日本西部凉爽温带森林中的贝叶斯统计。我们还使用高斯创新的剩余错误模型,其中占据相关的异源,非正常分布(即非高斯)残余误差的广义似然性不确定性估计灵活地处理在偏光和峰氏症中不同的统计数据。结果表明,充分消除了相关性和异源性的影响。另外,残留物的后部分布具有高斯和拉普拉斯(或双指数)分布的模式中间体。因此,预测的土壤呼吸率和其中的不确定性范围,匹配的观察数据。此外,我们从长期模拟中比较了土壤呼吸模型的参数和预测推理的结果,其中包括短期模拟(即2年数据集的4个月子集)来确定方法的程度二手影响了参数和预测性不确定性的估计。在长期模拟与任何短期模拟之间没有发现参数估计的显着差异,而50%-i.e的不确定性的短期模拟分析。在较低(25%)和上部(75%)的概率范围内的四分位数 - 当树木和生物的更加剧烈活动促进大气和生态系统之间的碳循环时,夏季的模型参数的概率参数中的显着变化。总的来说,我们证明贝叶斯反演方法可用作评估土壤呼吸模型的有效参数和预测性不确定性的手段,其具有精确的残余误差的表示。

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