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Ensemble data assimilation and breeding in the ocean, Chesapeake Bay, and Mars.

机译:集合数据在海洋,切萨皮克湾和火星的同化和繁殖。

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摘要

My dissertation focuses on studying instabilities of different time scales using breeding and data assimilation in the oceans, as well as the Martian atmosphere. The breeding method of Toth and Kalnay finds the perturbations that grow naturally in a dynamical system like the atmosphere or the ocean. Here breeding is applied to a global ocean model forced by reanalysis winds in order to identify instabilities on weekly and monthly timescales. The method is extended to show how the energy equations for the bred vectors can be derived with only very minimal approximations and used to assess the physical mechanisms that give rise to the instabilities. Tropical Instability Waves in the tropical Pacific are diagnosed, confirming the existence of bands of both baroclinic and barotropic energy conversions indicated by earlier studies.;For regional prediction of smaller timescale phenomena, an advanced data assimilation system has been developed for the Chesapeake Bay Forecast System, a regional Earth System Prediction model. To accomplish this, the Regional Ocean Modeling System (ROMS) implementation on the Chesapeake Bay has been interfaced with the Local Ensemble Transform Kalman Filter (LETKF). The LETKF is among the most advanced data assimilation methods and is very effective for large, non-linear dynamical systems in both sparse and dense data coverage situations. In perfect model experiments using ChesROMS, the filter converges quickly and reduces the analysis and subsequent forecast errors in the temperature, salinity, and velocity fields. This error reduction has proved fairly robust to sensitivity studies such as reduced data coverage and realistic data coverage experiments. The LETKF also provides a method for error estimation and facilitates the investigation of the spatial distribution of the error. This information has been used to determine areas where more monitoring is needed.;The LETKF framework is also applied here to a global model of the Martian atmosphere. Sensitivity experiments are performed to determine the dependence of the assimilation on observational data. Observations of temperature are simulated at realistic vertical and horizontal levels and LETKF performance is evaluated. Martian instabilities that impact the assimilation are also addressed.
机译:我的论文致力于利用海洋​​和火星大气层中的繁殖和数据同化研究不同时间尺度的不稳定性。 Toth和Kalnay的繁殖方法发现了在大气或海洋等动力系统中自然生长的扰动。在这里,将繁殖应用于重新分析风强迫的全球海洋模型,以便确定每周和每月时间尺度的不稳定性。扩展了该方法,以显示如何仅使用非常小的近似就可以得出繁殖矢量的能量方程,并用于评估引起不稳定性的物理机制。诊断了热带太平洋的热带不稳定波,确认了早先研究表明的斜压和正压能量转换带都存在。为了对较小的时标现象进行区域预测,已经为切萨皮克湾预报系统开发了先进的数据同化系统。 ,一个区域性地球系统预测模型。为此,切萨皮克湾的区域海洋建模系统(ROMS)实现已与本地集成变换卡尔曼滤波器(LETKF)进行了接口。 LETKF是最先进的数据同化方法之一,对于稀疏和密集数据覆盖情况下的大型非线性动力系统都非常有效。在使用ChesROMS进行的完美模型实验中,滤波器可以快速收敛并减少温度,盐度和速度场中的分析误差和随后的预测误差。事实证明,这种减少错误对于敏感性研究(例如减少的数据覆盖率和实际的数据覆盖率实验)相当有力。 LETKF还提供了一种误差估计方法,并有助于调查误差的空间分布。该信息已用于确定需要更多监视的区域。LETKF框架在这里也被应用于火星大气的全球模型。进行敏感性实验以确定同化对观测数据的依赖性。在实际的垂直和水平水平上模拟温度观测值,并评估LETKF性能。还解决了影响同化的火星不稳定性。

著录项

  • 作者

    Hoffman, Matthew J.;

  • 作者单位

    University of Maryland, College Park.;

  • 授予单位 University of Maryland, College Park.;
  • 学科 Physical Oceanography.;Planetology.;Atmospheric Sciences.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 172 p.
  • 总页数 172
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 海洋物理学;
  • 关键词

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