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

被引:0
作者
Adil Siripatana
Talea Mayo
Ihab Sraj
Omar Knio
Clint Dawson
Olivier Le Maitre
Ibrahim Hoteit
机构
[1] King Abdullah University of Science and Technology,
[2] Princeton University,undefined
[3] University of Texas at Austin,undefined
[4] Laboratoire d’Informatique pour la Mecanique et les Sciences de l’Ingénieur,undefined
来源
Ocean Dynamics | 2017年 / 67卷
关键词
Coastal ocean model; Manning’s ; coefficients; Parameter estimation; Ensemble Kalman filter; Polynomial chaos; MCMC;
D O I
暂无
中图分类号
学科分类号
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.
引用
收藏
页码:1067 / 1094
页数:27
相关论文
共 205 条
  • [1] Aksoy A(2006)Ensemble-based simultaneous state and parameter estimation in a two-dimensional sea-breeze model Month Weather Rev 134 2951-2970
  • [2] Zhang F(2013)A reduced adjoint approach to variational data assimilation Comput Methods Appl Mech Eng 254 1-13
  • [3] Nielsen-Gammon J(2013)Improving short-range ensemble Kalman storm surge forecasting using robust adaptive inflation Mon Weather Rev 141 2705-2720
  • [4] Altaf M(2014)Hybrid vs adaptive ensemble Kalman filtering for storm surge forecasting AGU Fall Meet Abst 1 3352-2903
  • [5] Gharamti ME(2001)An ensemble adjustment Kalman filter for data assimilation Mon Weather Rev 129 2884-2758
  • [6] Heemink A(1999)A Monte Carlo implementation of the nonlinear filtering problem to produce ensemble assimilations and forecasts Mon Weather Rev 127 2741-1505
  • [7] Hoteit I(2006)On the ergodicity properties of some adaptive MCMC algorithms Ann Appl Probab 16 1462-154
  • [8] Altaf M(2005)Parameter estimation in an intermediate complexity earth system model using an ensemble Kalman filter Ocean Model 8 135-41
  • [9] Butler T(1995)Bayesian computation and stochastic systems Stat Sci 10 3-436
  • [10] Luo X(2001)Adaptive sampling with the ensemble transform Kalman filter. Part i: theoretical aspects Mon Weather Rev 129 420-170