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A smoothing algorithm for estimating stochastic, continuous time model parameters and its application to a simple climate model

机译:一种用于估计随机,连续时间模型参数的平滑算法及其在简单气候模型中的应用

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Even after careful calibration, the output of deterministic models of environmental systems usually still show systematic deviations from measured data. To analyse possible causes of these discrepancies, we make selected model parameters time variable by treating them as continuous time stochastic processes. This extends an approach that was proposed earlier using discrete time stochastic processes. We present a Markov chain Monte Carlo algorithm for Bayesian estimation of such parameters jointly with the other, constant, parameters of the model. The algorithm consists of Gibbs sampling between constant and time varying parameters by using a Metropolis-Hastings algorithm for each parameter type. For the time varying parameter, we split the overall time period into consecutive intervals of random length, over each of which we use a conditional Ornstein-Uhlenbeck process with fixed end points as the proposal distribution in a Metropolis-Hastings algorithm. The hyperparameters of the stochastic process are selected by using a cross-validation criterion which maximizes a pseudolikelihood value, for which we have derived a computationally efficient estimator. We tested our algorithm by using a simple climate model. The results show that the algorithm behaves well, is computationally tractable and improves the fit of the model to the data when applied to an additional time-dependent forcing component. However, this additional forcing term is too large to be a reasonable correction of estimated forcing and it alters the posterior distribution of the other, time constant parameters to unrealistic values.This difficulty, and the impossibility of achieving a good simulation when making other parameters time dependent, indicates a more fundamental, structural deficit of the climate model. This is probably related to the poor resolution of the ocean in the model. Our study demonstrates the technical feasibility of the smoothing technique but also the need for a careful interpretation of the results.
机译:即使经过仔细的校准,环境系统确定性模型的输出通常仍然显示出与测量数据的系统偏差。为了分析这些差异的可能原因,我们通过将选定的模型参数视为连续的时间随机过程来使它们具有时间变量。这扩展了先前使用离散时间随机过程提出的方法。我们提出了一种马尔可夫链蒙特卡罗算法,用于对这些参数与模型的其他常数进行贝叶斯估计。该算法包括通过对每种参数类型使用Metropolis-Hastings算法在常数和时变参数之间进行吉布斯采样。对于时变参数,我们将整个时间段分为连续的随机长度的时间间隔,在每个时间间隔上,我们使用带有固定端点的条件性Ornstein-Uhlenbeck过程作为Metropolis-Hastings算法中的提案分布。随机过程的超参数是通过使用交叉验证准则来选择的,该准则使伪似然值最大化,为此我们得出了计算效率高的估计量。我们通过使用简单的气候模型测试了我们的算法。结果表明,该算法性能良好,易于计算,并且在应用于其他与时间相关的强制分量时,可以提高模型对数据的拟合度。但是,这个额外的强迫项太大了,无法合理地估计推算强迫,并且将其他时间常数参数的后验分布更改为不切实际的值,这一困难以及在使其他参数成为时间时无法实现良好模拟的可能性依赖,表示气候模型存在更根本的结构性赤字。这可能与模型中海洋分辨率差有关。我们的研究证明了平滑技术的技术可行性,但也需要仔细解释结果。

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