首页> 外文期刊>Ocean modelling >Ensemble of 4DVARs (En4DVar) data assimilation in a coastal ocean circulation model, Part I: Methodology and ensemble statistics
【24h】

Ensemble of 4DVARs (En4DVar) data assimilation in a coastal ocean circulation model, Part I: Methodology and ensemble statistics

机译:沿海海洋循环模型中4DVARS(EN4DVAR)数据同化的集合,第一部分:方法论和集合统计

获取原文
获取原文并翻译 | 示例
           

摘要

The ocean state off Oregon-Washington, U.S. West coast, is highly variable in time. Under these conditions the assumption made in traditional 4-dimensional variational data assimilation (4DVAR) that the prior model (background) error covariance is the same in every data assimilation (DA) window can be limiting. A DA system based on an ensemble of 4DVARs (En4DVar) has been developed in which the background error covariance is estimated from an ensemble of model runs and is thus time-varying. This part describes details of the En4DVar method and ensemble statistics verification tests. The control run and 39 ensemble members are forced by perturbed wind fields and corrected by DA in a series of 3-day windows. Wind perturbations are represented as a linear combination of empirical orthogonal functions (EOFs) for the larger scales and Daubechies wavelets for the smaller scales. The variance of the EOF expansion coefficients is based on estimates of the wind field error statistics derived using scatterometer observations and a Bayesian Hierarchical Model. It is found that the variance of the wind errors relative to the natural wind variability increases as the horizontal spatial scales decrease. DA corrections to the control run and ensemble members are calculated in parallel by the newly developed, cost-effective cluster search minimization method. For a realistic coastal ocean application, this method can generate a 30% wall time reduction compared to the restricted B-conjugate gradient (RBCG) method. Ensemble statistics are generally found to be consistent with background error statistics. In particular, ensemble spread is maintained without inflating. However, sea-surface height background errors cannot be fully reproduced by the ensemble perturbations.
机译:俄勒冈州美国西海岸的海洋州other off oregon-washington。在这些条件下,在每个数据同化(DA)窗口中,先前模型(背景)错误协方差在传统的4维变异数据同化(4dvar)中所做的假设可以是限制性的。已经开发了基于4DVAR(EN4DVAR)集合的DA系统,其中从模型运行的集合估计了背景误差协方差,因此时变。本部分介绍EN4DVAR方法和集合统计验证测试的详细信息。控制运行和39个集合成员被扰动的风场强制,并在一系列3天窗口中纠正。风扰动被表示为较大尺度的较大尺度和Daubechies小波的经验正交功能(EOF)的线性组合。 EOF膨胀系数的方差基于使用散射仪观察和贝叶斯分层模型导出的风现场误差统计的估计。结果发现,随着水平空间尺度的降低,风误差相对于天然风变性的变化增加。通过新开发的经济高效的群集搜索最小化方法并行计算对控制运行和集合成员的DA校正。对于逼真的沿海海洋应用,与限制的B缀合物梯度(RBCG)方法相比,该方法可以产生30%的壁时间减少。通常发现集合统计数据与背景错误统计数据一致。特别是,在没有充气的情况下保持整体涂抹。然而,Ensemble扰动不能完全再现海面高度背景错误。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号