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Assessing an ensemble Kalman filter inference of Manning’s n coefficient of an idealized tidal inlet against a polynomial chaos-based MCMC

机译:评估对基于多项式混沌的MCMC的理想化潮汐入口的Manning的N系数的集合Kalman滤波器推断

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摘要

Bayesian estimation/inversion is commonly used to quantify and reduce modeling uncertainties in coastal ocean model, especially in the framework of parameter estimation. Based on Bayes rule, the posterior probability distribution function (pdf) of the estimated quantities is obtained conditioned on available data. It can be computed either directly, using a Markov chain Monte Carlo (MCMC) approach, or by sequentially processing the data following a data assimilation approach, which is heavily exploited in large dimensional state estimation problems. The advantage of data assimilation schemes over MCMC-type methods arises from the ability to algorithmically accommodate a large number of uncertain quantities without significant increase in the computational requirements. However, only approximate estimates are generally obtained by this approach due to the restricted Gaussian prior and noise assumptions that are generally imposed in these methods. This contribution aims at evaluating the effectiveness of utilizing an ensemble Kalman-based data assimilation method for parameter estimation of a coastal ocean model against an MCMC polynomial chaos (PC)-based scheme. We focus on quantifying the uncertainties of a coastal ocean ADvanced CIRCulation (ADCIRC) model with respect to the Manning’s n coefficients. Based on a realistic framework of observation system simulation experiments (OSSEs), we apply an ensemble Kalman filter and the MCMC method employing a surrogate of ADCIRC constructed by a non-intrusive PC expansion for evaluating the likelihood, and test both approaches under identical scenarios. We study the sensitivity of the estimated posteriors with respect to the parameters of the inference methods, including ensemble size, inflation factor, and PC order. A full analysis of both methods, in the context of coastal ocean model, suggests that an ensemble Kalman filter with appropriate ensemble size and well-tuned inflation provides reliable mean estimates and uncertainties of Manning’s n coefficients compared to the full posterior distributions inferred by MCMC.
机译:贝叶斯估计/反演通常用于量化和降低沿海海洋模型中的不确定性,特别是在参数估计框架中。基于贝叶斯规则,在可用数据中获得估计量的后验概率分布函数(PDF)。它可以直接计算,使用Markov链蒙特卡罗(MCMC)方法,或者通过在数据同化方法之后顺序地处理数据,这在大维状态估计问题中受到重大利用。通过MCMC型方法的数据同化方案的优点是从算法地容纳大量不确定量的能力,而无需显着增加计算要求。然而,由于通常施加在这些方法中的限制的高斯的先前和噪声假设,仅通过这种方法获得近似估计。这种贡献的目的是评估利用用于对抗MCMC多项式混乱(PC)为基础的方案中的近海模型的参数估计的合奏基于卡尔曼数据同化方法的有效性。我们专注于量化沿海海洋先进流通(ADCIRC)模型的不确定性与曼宁的N系数。基于观察系统仿真实验(OSSES)的现实框架,我们应用了一个合奏卡尔曼滤波器和使用由非侵入式PC扩展构成的ADCIRC代理的MCMC方法,以评估可能性,并在相同的情况下测试这两种方法。我们研究了估计的后续对推理方法参数的敏感性,包括集合尺寸,通货膨胀因子和PC订单。在沿海海洋模型的背景下完全分析了这两种方法,表明,与MCMC推断的完整后部分布相比,具有适当的集合尺寸和良好的通货膨胀的集合卡尔曼滤波器提供了可靠的平均估计和曼宁N系数的不确定性。

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