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Proactive Quality Control based on Ensemble Forecast Sensitivity to Observations.

机译:基于整体预测对观测值的敏感性的主动质量控制。

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摘要

Despite recent major improvements in numerical weather prediction (NWP) systems, operational NWP forecasts occasionally suffer from an abrupt drop in forecast skill, a phenomenon called "forecast skill dropout." Recent studies have shown that the "dropouts" occur not because of the model's deficiencies but by the use of flawed observations that the operational quality control (QC) system failed to filter out. Thus, to minimize the occurrences of forecast skill dropouts, we need to detect and remove such flawed observations.;A diagnostic technique called Ensemble Forecast Sensitivity to Observations (EFSO) enables us to quantify how much each observation has improved or degraded the forecast. A recent study (Ota et al., 2013) has shown that it is possible to detect flawed observations that caused regional forecast skill dropouts by using EFSO with 24-hour lead-time and that the forecast can be improved by not assimilating the detected observations.;Inspired by their success, in the first part of this study, we propose a new QC method, which we call Proactive QC (PQC), in which flawed observations are detected 6 hours after the analysis by EFSO and then the analysis and forecast are repeated without using the detected observations. This new QC technique is implemented and tested on a lower-resolution version of NCEP's operational global NWP system. The results we obtained are extremely promising; we have found that we can detect regional forecast skill dropouts and the flawed observations after only 6 hours from the analysis and that the rejection of the identified flawed observations indeed improves 24-hour forecasts.;In the second part, we show that the same approximation used in the derivation of EFSO can be used to formulate the forecast sensitivity to observation error covariance matrix R, which we call EFSR. We implement the EFSR diagnostics in both an idealized system and the quasi-operational NWP system and show that it can be used to tune the R matrix so that the utility of observations is improved. We also point out that EFSO and EFSR can be used for the optimal assimilation of new observing systems.
机译:尽管最近在数值天气预报(NWP)系统方面进行了重大改进,但可操作的NWP预报有时会因预报技能的突然下降而遭受损失,这种现象称为“预测技能下降”。最近的研究表明,“遗漏”的发生不是由于模型的缺陷,而是由于使用了错误的观察结果,即操作质量控制(QC)系统未能滤除。因此,为了最大程度地减少预测技能缺失的发生,我们需要检测并消除这些有缺陷的观察结果。一种称为“对观察结果的整体预测敏感性”(EFSO)的诊断技术使我们能够量化每个观察结果改善或降低了预测水平的程度。最近的一项研究(Ota等人,2013年)表明,可以通过使用24小时提前期的EFSO来检测导致区域预报技能下降的有缺陷的观察结果,并且可以通过不吸收检测到的观察结果来改善预测受到其成功的启发,在本研究的第一部分中,我们提出了一种新的质量控制方法,称为主动质量控制(PQC),该方法在EFSO分析之后的6小时内检测出有缺陷的观测值,然后进行分析和预测无需使用检测到的观测值即可重复进行。这种新的质量控制技术是在较低分辨率的NCEP运营全球NWP系统上实施和测试的。我们获得的结果极有希望;我们发现,仅从分析中获取了6个小时后,我们就可以检测到区域预报技能的缺失和有缺陷的观测值,并且拒绝发现的有缺陷的观测值确实可以改善24小时的预测。在第二部分中,我们展示了相同的近似值在EFSO推导中使用的公式可用于制定对观测误差协方差矩阵R(我们称为EFSR)的预测敏感性。我们在理想化系统和准作战NWP系统中均实现了EFSR诊断,并表明它可用于调整R矩阵,从而提高了观测的实用性。我们还指出,EFSO和EFSR可用于新观测系统的最佳同化。

著录项

  • 作者

    Hotta, Daisuke.;

  • 作者单位

    University of Maryland, College Park.;

  • 授予单位 University of Maryland, College Park.;
  • 学科 Applied mathematics.;Atmospheric sciences.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 273 p.
  • 总页数 273
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:53:48

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