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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >On the applicability of surrogate-based Markov chain Monte Carlo-Bayesian inversion to the Community Land Model: Case studies at flux tower sites
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On the applicability of surrogate-based Markov chain Monte Carlo-Bayesian inversion to the Community Land Model: Case studies at flux tower sites

机译:基于代理的马尔可夫链蒙特卡洛-贝叶斯反演对社区土地模型的适用性:通量塔场的案例研究

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The Community Land Model (CLM) has been widely used in climate and Earth system modeling. Accurate estimation of model parameters is needed for reliable model simulations and predictions under current and future conditions, respectively. In our previous work, a subset of hydrological parameters has been identified to have significant impact on surface energy fluxes at selected flux tower sites based on parameter screening and sensitivity analysis, which indicate that the parameters could potentially be estimated from surface flux observations at the towers. To date, such estimates do not exist. In this paper, we assess the feasibility of applying a Bayesian model calibration technique to estimate CLM parameters at selected flux tower sites under various site conditions. The parameters are estimated as a joint probability density function (PDF) that provides estimates of uncertainty of the parameters being inverted, conditional on climatologically average latent heat fluxes derived from observations. We find that the simulated mean latent heat fluxes from CLM using the calibrated parameters are generally improved at all sites when compared to those obtained with CLM simulations using default parameter sets. Further, our calibration method also results in credibility bounds around the simulated mean fluxes which bracket the measured data. The modes (or maximum a posteriori values) and 95% credibility intervals of the site-specific posterior PDFs are tabulated as suggested parameter values for each site. Analysis of relationships between the posterior PDFs and site conditions suggests that the parameter values are likely correlated with the plant functional type, which needs to be confirmed in future studies by extending the approach to more sites.
机译:社区土地模型(CLM)已被广泛用于气候和地球系统建模。需要分别对模型参数进行准确估计,以分别在当前和将来的条件下进行可靠的模型仿真和预测。在我们之前的工作中,基于参数筛选和敏感性分析,已经确定了一部分水文参数对选定通量塔位置的表面能通量有重大影响,这表明该参数可能可以通过对塔的表面通量观测进行估算。迄今为止,尚无此类估计。在本文中,我们评估了使用贝叶斯模型校准技术来估计在各种工地条件下选定磁通塔工地的CLM参数的可行性。这些参数被估计为联合概率密度函数(PDF),该函数根据从观测数据中得出的气候平均潜热通量,提供了被倒置参数不确定性的估计。我们发现,与使用默认参数集进行CLM模拟获得的结果相比,使用校准参数从CLM模拟得到的平均平均潜热通量在所有地点都得到了改善。此外,我们的校准方法还导致围绕测量数据的模拟平均通量的可信范围。特定于站点的后部PDF的模式(或最大后验值)和95%的可信度间隔被列表为每个站点的建议参数值。后部PDF与站点条件之间的关系分析表明,参数值可能与植物功能类型相关,这需要在以后的研究中通过将方法扩展到更多站点来确认。

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