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Bayesian calibration of terrestrial ecosystem models: a study of advanced Markov chain Monte Carlo methods

机译:贝叶斯校准陆地生态系统模型:高级马尔可夫链蒙特卡罗方法研究

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Calibration of terrestrial ecosystem models is important but challenging. Bayesian inference implemented by Markov chain Monte Carlo (MCMC) sampling provides a comprehensive framework to estimate model parameters and associated uncertainties using their posterior distributions. The effectiveness and efficiency of the method strongly depend on the MCMC algorithm used. In this work, a differential evolution adaptive Metropolis (DREAM) algorithm is used to estimate posterior distributions of 21 parameters for the data assimilation linked ecosystem carbon (DALEC) model using 14?years of daily net ecosystem exchange data collected at the Harvard Forest Environmental Measurement Site eddy-flux tower. The calibration of DREAM results in a better model fit and predictive performance compared to the popular adaptive Metropolis (AM) scheme. Moreover, DREAM indicates that two parameters controlling autumn phenology have multiple modes in their posterior distributions while AM only identifies one mode. The application suggests that DREAM is very suitable to calibrate complex terrestrial ecosystem models, where the uncertain parameter size is usually large and existence of local optima is always a concern. In addition, this effort justifies the assumptions of the error model used in Bayesian calibration according to the residual analysis. The result indicates that a heteroscedastic, correlated, Gaussian error model is appropriate for the problem, and the consequent constructed likelihood function can alleviate the underestimation of parameter uncertainty that is usually caused by using uncorrelated error models.
机译:陆地生态系统模型的校准很重要但具有挑战性。 Markov Chain Monte Carlo(MCMC)采样实施的贝叶斯推断提供了一种全面的框架来估计模型参数和使用其后部分布的相关不确定性。该方法的有效性和效率强烈取决于所用MCMC算法。在这项工作中,差分演进自适应大都会(梦想)算法用于估计21个参数的后验分布,用于使用14年在哈佛森林环境测量中收集的每日净生态系统交换数据的14年的数据同化链接的生态系统碳(DALEC)模型网站涡流塔。与流行的自适应大都市(AM)方案相比,梦想的校准导致更好的拟合和预测性能。此外,梦想表明,控制秋季候选的两个参数在其后部分布中具有多种模式,而am仅识别一种模式。该应用程序表明,梦想非常适合校准复杂的地面生态系统模型,其中不确定的参数大小通常是大而当地最佳的存在始终是一个问题。此外,这项工作证明了根据残余分析的贝叶斯校准中使用的错误模型的假设。结果表明,异源,相关的高斯误差模型适用于问题,并且随后的构造似然函数可以减轻通常是由使用不相关的错误模型引起的参数不确定性的低估。

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