Improved initial sampling for the ensemble Kalman filter

被引:0
作者
Dean S. Oliver
Yan Chen
机构
[1] The University of Oklahoma,Mewbourne School of Petroleum Engineering
来源
Computational Geosciences | 2009年 / 13卷
关键词
Ensemble Kalman filter; Monte Carlo; Variance reduction; Importance sampling;
D O I
暂无
中图分类号
学科分类号
摘要
In this paper, we discuss several possible approaches to improving the performance of the ensemble Kalman filter (EnKF) through improved sampling of the initial ensemble. Each of the approaches addresses a different limitation of the standard method. All methods, however, attempt to make the results from a small ensemble as reliable as possible. The validity and usefulness of each method for creating the initial ensemble is based on three criteria: (1) does the sampling result in unbiased Monte Carlo estimates for nonlinear flow problems, (2) does the sampling reduce the variability of estimates compared to ensembles of realizations from the prior, and (3) does the sampling improve the performance of the EnKF? In general, we conclude that the use of dominant eigenvectors ensures the orthogonality of the generated realizations, but results in biased forecasts of the fractional flow of water. We show that the addition of high frequencies from remaining eigenvectors can be used to remove the bias without affecting the orthogonality of the realizations, but the method did not perform significantly better than standard Monte Carlo sampling. It was possible to identify an appropriate importance weighting to reduce the variance in estimates of the fractional flow of water, but it does not appear to be possible to use the importance weighted realizations in standard EnKF when the data relationship is nonlinear. The biggest improvement came from use of the pseudo-data with corrections to the variance of the actual observations.
引用
收藏
相关论文
共 50 条
[31]   Nonlinear measurement function in the ensemble Kalman filter [J].
Tang, Youmin ;
Ambandan, Jaison ;
Chen, Dake .
ADVANCES IN ATMOSPHERIC SCIENCES, 2014, 31 (03) :551-558
[32]   Nonlinear measurement function in the ensemble Kalman filter [J].
Youmin Tang ;
Jaison Ambandan ;
Dake Chen .
Advances in Atmospheric Sciences, 2014, 31 :551-558
[33]   ENSEMBLE KALMAN FILTER FOR MULTISCALE INVERSE PROBLEMS [J].
Abdulle, Assyr ;
Garegnani, Giacomo ;
Zanoni, Andrea .
MULTISCALE MODELING & SIMULATION, 2020, 18 (04) :1565-1594
[34]   An Ensemble Kalman Filter for the Thermosphere-Ionosphere [J].
Codrescu, S. M. ;
Codrescu, M. V. ;
Fedrizzi, M. .
SPACE WEATHER-THE INTERNATIONAL JOURNAL OF RESEARCH AND APPLICATIONS, 2018, 16 (01) :57-68
[35]   Performance Analysis of Local Ensemble Kalman Filter [J].
Xin T. Tong .
Journal of Nonlinear Science, 2018, 28 :1397-1442
[36]   Full waveform inversion based on the ensemble Kalman filter method using uniform sampling without replacement [J].
Jian Wang ;
Dinghui Yang ;
Hao Jing ;
Hao Wu .
ScienceBulletin, 2019, 64 (05) :321-330
[37]   Full waveform inversion based on the ensemble Kalman filter method using uniform sampling without replacement [J].
Wang, Jian ;
Yang, Dinghui ;
Jing, Hao ;
Wu, Hao .
SCIENCE BULLETIN, 2019, 64 (05) :321-330
[38]   Modified ensemble Kalman filter for nuclear accident atmospheric dispersion: Prediction improved and source estimated [J].
Zhang, X. L. ;
Su, G. F. ;
Yuan, H. Y. ;
Chen, J. G. ;
Huang, Q. Y. .
JOURNAL OF HAZARDOUS MATERIALS, 2014, 280 :143-155
[39]   Inversion of the Sound Speed Profiles with an AUV Carrying Source Using Improved Ensemble Kalman Filter [J].
Chen, Xiaoyu ;
Sun, Chen ;
Li, Jianlong .
2016 IEEE INTERNATIONAL CONFERENCE ON ROBOTICS AND BIOMIMETICS (ROBIO), 2016, :1607-1612
[40]   On ensemble representation of the observation-error covariance in the Ensemble Kalman Filter [J].
J. D. Kepert .
Ocean Dynamics, 2004, 54 :561-569