Sequential State and Observation Noise Covariance Estimation Using Combined Ensemble Kalman and Particle Filters

被引:22
|
作者
Frei, Marco [1 ]
Kuensch, Hans R. [1 ]
机构
[1] Swiss Fed Inst Technol, Seminar Stat, CH-8092 Zurich, Switzerland
关键词
PARAMETER-ESTIMATION; SQUARE-ROOT; INFLATION; MODEL; SIMULATION;
D O I
10.1175/MWR-D-10-05088.1
中图分类号
P4 [大气科学(气象学)];
学科分类号
0706 ; 070601 ;
摘要
The authors consider the joint state and parameter estimation problem for dynamical models where the system evolution is known and where the observations are linear with additive Gaussian noise whose covariance matrix depends on unknown parameters. The form of this dependence is general, both diagonal and off-diagonal elements of the covariance matrix may depend on the unknown parameters. In this situation, the ensemble Kalman filter (EnKF) cannot be applied directly to update state and parameters simultaneously. Two novel approximate Monte Carlo methods are proposed for this purpose, which are both based on the assumption that parameters and state are approximately independent after the propagation step. The first method begins with a particle filter update of the parameters followed by an EnKF update of the state. The second method first makes an EnKF update of the state based on an approximate likelihood that does not depend on the parameters, followed by a particle filter update of the parameters with weights proportional to the ratio of the correct to the approximate likelihood. To counteract sample depletion, the authors introduce algorithmic refinements like balanced sampling, kernel resampling, and increasing the number of samples for the parameters while keeping the size of the state ensemble fixed. The performance and flexibility of these methods is demonstrated in simulations with a linear Gaussian model and with the Lorenz-96 model. Provided the EnKF with all parameters known is reasonably well calibrated, then this is also true for the state estimates in the new algorithms, and the estimated posterior distributions of the parameters are consistent with the truth.
引用
收藏
页码:1476 / 1495
页数:20
相关论文
共 50 条
  • [31] Sequential estimation by combined cost-reference particle and Kalman filtering
    Xu, Shanshan
    Bugallo, Monica E.
    Djuric, Petar M.
    2007 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH, AND SIGNAL PROCESSING, VOL III, PTS 1-3, PROCEEDINGS, 2007, : 1185 - +
  • [32] Constrained state estimation using the ensemble Kalman filter
    Prakash, J.
    Patwardhan, Sachin C.
    Shah, Sirish L.
    2008 AMERICAN CONTROL CONFERENCE, VOLS 1-12, 2008, : 3542 - +
  • [33] On Serial Observation Processing in Localized Ensemble Kalman Filters
    Nerger, Lars
    MONTHLY WEATHER REVIEW, 2015, 143 (05) : 1554 - 1567
  • [34] Empirical Localization of Observation Impact in Ensemble Kalman Filters
    Anderson, Jeffrey
    Lei, Lili
    MONTHLY WEATHER REVIEW, 2013, 141 (11) : 4140 - 4153
  • [35] Multilevel estimation of normalization constants using ensemble Kalman–Bucy filters
    Hamza Ruzayqat
    Neil K. Chada
    Ajay Jasra
    Statistics and Computing, 2022, 32
  • [36] Unscented Kalman filters and Particle Filter methods for nonlinear state estimation
    Gyoergy, Katalin
    Kelemen, Andras
    David, Laszlo
    7TH INTERNATIONAL CONFERENCE INTERDISCIPLINARITY IN ENGINEERING (INTER-ENG 2013), 2014, 12 : 65 - 74
  • [37] Particle Kalman Filtering: A Nonlinear Bayesian Framework for Ensemble Kalman Filters
    Hoteit, Ibrahim
    Luo, Xiaodong
    Dinh-Tuan Pham
    MONTHLY WEATHER REVIEW, 2012, 140 (02) : 528 - 542
  • [38] Efficient Parameterization of the Observation Error Covariance Matrix for Square Root or Ensemble Kalman Filters: Application to Ocean Altimetry
    Brankart, Jean-Michel
    Ubelmann, Clement
    Testut, Charles-Emmanuel
    Cosme, Emmanuel
    Brasseur, Pierre
    Verron, Jacques
    MONTHLY WEATHER REVIEW, 2009, 137 (06) : 1908 - 1927
  • [39] Precomputing Process Noise Covariance for Onboard Sequential Filters
    Olson, Corwin G.
    Russell, Ryan P.
    Carpenter, J. Russell
    JOURNAL OF GUIDANCE CONTROL AND DYNAMICS, 2017, 40 (08) : 2062 - 2075
  • [40] ONLINE LEARNING OF BOTH STATE AND DYNAMICS USING ENSEMBLE KALMAN FILTERS
    Bocquet, Marc
    Farchi, Alban
    Malartic, Quentin
    FOUNDATIONS OF DATA SCIENCE, 2021, 3 (03): : 305 - 330