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The Time and Regime Dependencies of Sensitive Areas for Tropical Cyclone Prediction Using the CNOP Method

机译:利用CNOP方法预测热带气旋敏感区域的时间和区域依赖性

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摘要

This study examines the time and regime dependencies of sensitive areas identified by the conditional nonlinear optimal perturbation (CNOP) method for forecasts of two typhoons.Typhoon Meari (2004) was weakly nonlinear and is herein referred to as the linear case,while Typhoon Matsa (2005) was strongly nonlinear and is herein referred to as the nonlinear case.In the linear case,the sensitive areas identified for special forecast times when the initial time was fixed resembled those identified for other forecast times.Targeted observations deployed to improve a special time forecast would thus also benefit forecasts at other times.In the nonlinear case,the similarities among the sensitive areas identified for different forecast times were more limited.The deployment of targeted observations in the nonlinear case would therefore need to be adapted to achieve large improvenents for different targeted forecasts.For both cases,the closer the forecast time,the higher the similarities of the sensitive areas.When the forecast time was fixed,the sensitive areas in the linear case diverged continuously from the verification area as the forecast period lengthened,while those in the nonlinear case were always located around the initial cyclones.The deployment of targeted observations to improve a special forecast depends strongly on the time of deployment.An examination of the efficiency gained by reducing initial errors within the identified sensitive areas confirmed these results.In general,the greatest improvement in a special time forecast was obtained by identifying the sensitive areas for the corresponding forecast time period.
机译:这项研究检查了通过条件非线性最优摄动(CNOP)方法识别的敏感区域在两个台风的预报中的时间和状态依赖性。台风Meari(2004)是弱非线性的,在本文中称为线性情况,而台风Matsa( (2005年)是强非线性的,在此称为非线性情况。在线性情况下,固定初始时间后针对特殊预测时间识别的敏感区域类似于针对其他预测时间所识别的敏感区域。在非线性情况下,针对不同预测时间确定的敏感区域之间的相似性更加有限。因此,需要调整目标案例在非线性情况下的部署,以实现较大的改进。针对不同的目标预测。对于这两种情况,预测时间越近,则相似度越高当预测时间固定时,随着预测周期的延长,线性案例中的敏感区域与验证区域连续偏离,而非线性案例中的敏感区域始终位于初始旋风附近。特殊的预测在很大程度上取决于部署的时间。对通过减少已识别的敏感区域内的初始错误而获得的效率的检查证实了这些结果。总的来说,特殊时间预测的最大改进是通过识别针对特定目标的敏感区域而获得的。相应的预测时间段。

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  • 来源
    《大气科学进展(英文版)》 |2012年第4期|705-716|共12页
  • 作者

    ZHOU Feifan; MU Mu;

  • 作者单位

    Laboratory of Cloud-Precipitation Physics and Severe Storms,Institute of Atmospheric Physics, Chinese Academy of Sciences, Beijing 100029;

    Key Laboratory of Ocean Circulation and Wave, Institute of Oceanology,Chinese Academy of Sciences, Qingdao 266071;

  • 收录信息 中国科学引文数据库(CSCD);中国科技论文与引文数据库(CSTPCD);
  • 原文格式 PDF
  • 正文语种 chi
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