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首页> 外文期刊>Geoscientific Model Development Discussions >Calibrating the sqHIMMELI v1.0 wetland methane emission model with hierarchical modeling and adaptive MCMC
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Calibrating the sqHIMMELI v1.0 wetland methane emission model with hierarchical modeling and adaptive MCMC

机译:使用等级建模和Adaptive MCMC校准Sqhimmeli V1.0湿地甲烷排放模型

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Estimating methane (CH4) emissions from natural wetlands is complex, and the estimates contain large uncertainties. The models used for the task are typically heavily parameterized and the parameter values are not well known. In this study, we perform a Bayesian model calibration for a new wetland CH4 emission model to improve the quality of the predictions and to understand the limitations of such models.The detailed process model that we analyze contains descriptions for CH4 production from anaerobic respiration, CH4 oxidation, and gas transportation by diffusion, ebullition, and the aerenchyma cells of vascular plants. The processes are controlled by several tunable parameters. We use a hierarchical statistical model to describe the parameters and obtain the posterior distributions of the parameters and uncertainties in the processes with adaptive Markov chain Monte Carlo (MCMC), importance resampling, and time series analysis techniques. For the estimation, the analysis utilizes measurement data from the Siikaneva flux measurement site in southern Finland. The uncertainties related to the parameters and the modeled processes are described quantitatively. At the process level, the flux measurement data are able to constrain the CH4 production processes, methane oxidation, and the different gas transport processes. The posterior covariance structures explain how the parameters and the processes are related. Additionally, the flux and flux component uncertainties are analyzed both at the annual and daily levels. The parameter posterior densities obtained provide information regarding importance of the different processes, which is also useful for development of wetland methane emission models other than the square root HelsinkI Model of MEthane buiLd-up and emIssion for peatlands (sqHIMMELI). The hierarchical modeling allows us to assess the effects of some of the parameters on an annual basis. The results of the calibration and the cross validation suggest that the early spring net primary production could be used to predict parameters affecting the annual methane production. Even though the calibration is specific to the Siikaneva site, the hierarchical modeling approach is well suited for larger-scale studies and the results of the estimation pave way for a regional or global-scale Bayesian calibration of wetland emission models.
机译:估计自然湿地的甲烷(CH4)排放是复杂的,估计含有大的不确定性。用于任务的模型通常是大量参数化,并且参数值不为人知。在这项研究中,我们对新的湿地CH4发射模型进行了贝叶斯模型校准,以提高预测的质量,并了解这些模型的局限性。我们分析的详细过程模型包含厌氧呼吸的CH4生产的描述。通过扩散,沸腾和血管植物的氧化性氧化细胞的氧化和气体运输。该过程由多个可调谐参数控制。我们使用分层统计模型来描述参数,并获得具有自适应Markov链蒙特卡罗(MCMC),重要性重采样和时间序列分析技术的过程中参数和不确定性的后验分布。对于估计,分析利用来自芬兰南部的Siikaneva助理空地的测量数据。定量描述与参数和建模过程相关的不确定性。在过程级别,磁通量测量数据能够约束CH4生产过程,甲烷氧化和不同的气体输送过程。后协方差结构解释了参数和过程如何相关。另外,在年度和日期水平分析了通量和助焊剂分量的不确定性。所获得的参数后密度提供了关于不同方法的重要性的信息,这对于除甲烷升降型甲烷赫尔辛基模型以外的湿地甲烷排放模型的发展也是有用的,这些甲烷升降机的甲烷增压和泥炭地排放(Sqhimmeli)。分层建模允许我们每年评估一些参数的影响。校准结果和交叉验证表明,早春净初级生产可用于预测影响年度甲烷生产的参数。尽管校准特定于斯基尼卡瓦站点,但等级建模方法非常适合大规模研究以及湿地发射模型的区域或全球范围贝叶斯校准的估算铺路方式。

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