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Spatio-temporal statistical models with application to atmospheric processes.

机译:时空统计模型及其在大气过程中的应用。

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摘要

This dissertation is concerned with spatio-temporal processes in the atmospheric sciences.; In the first chapter, a comprehensive overview of spatio-temporal methods from the atmospheric science literature is presented. Focus is on Empirical Orthogonal Function (EOF), Principal Interaction Pattern (PIP), Principal Oscillation Pattern (POP), and spatio-temporal Canonical Correlation Analysis (CCA) methods. Previously unexamined issues related to measurement error, continuous space, and Bayesian ideas are considered.; In the second chapter, harmonic analysis is used to make diagnostic inference about the spatial variation of the semiannual oscillation (SAO) in the Northern Hemisphere (NH) 500-hPa height field. The SAO is explained by the spatial and temporal asymmetries in the annual variation of stationary eddies. The SAO in the NH extratropics is a result of east-west land-sea contrasts, analogous to the well-known Southern Hemisphere (SH) SAO, which is explained by north-south land-sea contrasts.; The third chapter examines the seasonal variability of mixed Rossby-gravity waves (MRGWs) in the lower stratosphere over the tropical western Pacific. Thirty-one years of lower stratospheric wind observations from four tropical Pacific stations are examined with seasonally varying cross-spectral analysis, which suggests significant twice-yearly peaks in the v-wind power and the mean squared coherence between the u- and v-winds, with peaks occurring in the winter-early spring and in summer-early fall. Horizontal momentum flux convergence is found with these waves, with the sign of the convergence opposite during the two seasonal maxima. Cyclic spectral analyses show that the frequency of the maximum v-wind power in the MRGW frequency band shifts seasonally.; In the fourth chapter, a spatio-temporal statistical model is proposed that assumes a first-order Markov dynamic process combined with a spatially descriptive colored noise process. With a measurement error equation, a spatio-temporal Kalman filter gives predictions in time and at any spatial location. The model prediction equation includes a simple kriging analog as a special case. The model predicts well with simulated spatio-temporal data, and is superior to simple kriging applied independently at each time. Predictions of precipitation over the data-sparse South China Sea captures the dynamic variation of the spatial precipitation.
机译:本文涉及大气科学的时空过程。在第一章中,对大气科学文献中的时空方法进行了全面概述。重点是经验正交函数(EOF),主要交互模式(PIP),主要振荡模式(POP)和时空规范相关分析(CCA)方法。以前考虑过与测量误差,连续空间和贝叶斯思想有关的问题。在第二章中,使用谐波分析对北半球(NH)500-hPa高度场中半年振荡(SAO)的空间变化做出诊断推断。 SAO由固定涡流的年度变化中的空间和时间不对称性解释。 NH温带地区的SAO是东西向陆地-海洋对比的结果,类似于众所周知的南半球(SH)SAO,这可以通过南北陆地-海洋对比来解释。第三章探讨了热带西太平洋平流层下部混合罗斯比重力波(MRGW)的季节变化。利用季节性变化的互谱分析检查了来自四个热带太平洋站的平流层低层风观测的三十一年,这表明垂直风向功率每年两次出现显着峰值,并且垂直风向与垂直风之间的均方相干,高峰出现在冬季的早春和夏季的早秋。这些波发现了水平动量通量收敛,在两个季节最大值期间收敛的符号相反。循环频谱分析表明,在MRGW频带中,最大v风功率的频率随季节变化。在第四章中,提出了一个时空统计模型,该模型假设一阶马尔可夫动态过程与空间描述性彩色噪声过程相结合。利用测量误差方程,时空卡尔曼滤波器可在任何时间和任何空间位置进行预测。该模型预测方程式包括一个简单的克里格模拟,作为特殊情况。该模型使用模拟的时空数据可以很好地预测,并且优于每次单独应用的简单克里金法。数据稀疏的南中国海的降水预测反映了空间降水的动态变化。

著录项

  • 作者

    Wikle, Christopher Kim.;

  • 作者单位

    Iowa State University.;

  • 授予单位 Iowa State University.;
  • 学科 Physics Atmospheric Science.
  • 学位 Ph.D.
  • 年度 1996
  • 页码 188 p.
  • 总页数 188
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 大气科学(气象学) ;
  • 关键词

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