Verification region selection and data assimilation for adaptive sampling

被引:9
|
作者
Bishop, Craig H.
Etherton, Brian J.
Majumdar, Sharanya J.
机构
[1] USN, Res Lab, Marine Meteorol Div, Monterey, CA 93943 USA
[2] Univ N Carolina, Charlotte, NC 28223 USA
[3] Univ Miami, Rosenstiel Sch Marine & Atmospher Sci, Coral Gables, FL 33124 USA
关键词
ensemble transform Kalman filter; error variance prediction; targeted observations; THORPEX;
D O I
10.1256/qj.05.48
中图分类号
P4 [大气科学(气象学)];
学科分类号
0706 ; 070601 ;
摘要
Adaptive or targeted observations supplement routine observations at a pre-specified targeting time. Adaptive observation locations are selected to supplement routine observations in an attempt to minimize the forecast error variance of a future target forecast within some predefined verification region (VR) at some predefined verification time. Ideally, the VR is placed in a location where unusually large forecast errors are likely. Here, we compare three methods of selecting VRs: a climatological method based on seasonal averages of forecast errors; an unconditioned method based on verification time ensemble spread; and a conditioned method based on an ensemble transform Kalman filter (ETKF) estimate of forecast error variance given the routine observations to be taken at the targeting time. To test the effectiveness of the three approaches, observation-system simulation experiments on a chaotic barotropic flow were performed using an imperfect model. To test the sensitivity of our results to the type of forecast error covariance model used in the data assimilation (DA) scheme, two types of DA schemes were tested: an isotropic and a hybrid scheme. For isotropic DA, correlations between vorticity forecast errors at any two points were solely a function of the distance between the points; for hybrid DA, the forecast error covariance matrix was a linear combination of the covariance matrix used in isotropic DA and the sample covariance matrix of an ETKF ensemble. For each of the three VRs, the ETKF was used to select two adaptive observations. To assess targeted-observation-induced error reductions, forecast errors with and without targeted observations were computed for the VR, the total domain and also for an empirical VR which was defined to be the VR with the largest forecast error without targeted observations. The sensitivity, to the type of DA scheme employed, of the ETKFs ability to distinguish high-impact targeted observations from low-impact observations, was also examined. Amongst other things, it was found that: conditioned VRs were more prone to large errors than the other VRs; and the targeted-observation-induced reduction in forecast error variance was largest when hybrid DA and conditioned VRs were used, as was the range of forecast impacts distinguished by ETKF predictions.
引用
收藏
页码:915 / 933
页数:19
相关论文
共 50 条
  • [21] Adaptive Domain Decomposition for Effective Data Assimilation
    Arcucci, Rossella
    Mottet, Laetitia
    Casas, Cesar A. Quilodran
    Guitton, Florian
    Pain, Christopher
    Guo, Yi-Ke
    [J]. EURO-PAR 2019: PARALLEL PROCESSING WORKSHOPS, 2020, 11997 : 583 - 595
  • [22] Effects of data selection and error specification on the assimilation of AIRS data
    Joiner, J.
    Brin, E.
    Treadon, R.
    Derber, J.
    Van Delst, P.
    Da Silva, A.
    Le Marshall, J.
    Poli, P.
    Atlas, R.
    Bungato, D.
    Cruz, C.
    [J]. QUARTERLY JOURNAL OF THE ROYAL METEOROLOGICAL SOCIETY, 2007, 133 (622) : 181 - 196
  • [23] ADAPTIVE SELECTION OF SAMPLING POINTS FOR UNCERTAINTY QUANTIFICATION
    Camporeale, Enrico
    Agnihotri, Ashutosh
    Rutjes, Casper
    [J]. INTERNATIONAL JOURNAL FOR UNCERTAINTY QUANTIFICATION, 2017, 7 (04) : 285 - 301
  • [25] Adaptive observations and assimilation in the unstable subspace by breeding on the data-assimilation system
    Carrassi, Alberto
    Trevisan, Anna
    Uboldi, Francesco
    [J]. TELLUS SERIES A-DYNAMIC METEOROLOGY AND OCEANOGRAPHY, 2007, 59 (01) : 101 - 113
  • [26] Scale adaptive region selection for deblurring
    Li, Jinyang
    Liu, Zhijing
    Jia, Xixi
    Huang, Xin
    [J]. JOURNAL OF ENGINEERING-JOE, 2016,
  • [27] AFNFS: Adaptive fuzzy neighborhood-based feature selection with adaptive synthetic over-sampling for imbalanced data
    Sun, Lin
    Li, Mengmeng
    Ding, Weiping
    Zhang, En
    Mu, Xiaoxia
    Xu, Jiucheng
    [J]. INFORMATION SCIENCES, 2022, 612 : 724 - 744
  • [28] Cluster Sampling Filters for Non-Gaussian Data Assimilation
    Attia, Ahmed
    Moosavi, Azam
    Sandu, Adrian
    [J]. ATMOSPHERE, 2018, 9 (06):
  • [29] Sampling the posterior: An approach to non-Gaussian data assimilation
    Apte, A.
    Hairer, M.
    Stuart, A. M.
    Voss, J.
    [J]. PHYSICA D-NONLINEAR PHENOMENA, 2007, 230 (1-2) : 50 - 64
  • [30] An adaptive variational method for data assimilation with imperfect models
    Zhu, J
    Kamachi, M
    [J]. TELLUS SERIES A-DYNAMIC METEOROLOGY AND OCEANOGRAPHY, 2000, 52 (03) : 265 - 279