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Effect of noise in principal component analysis with an application to ozone pollution.

机译:主成分分析中的噪声影响及其在臭氧污染中的应用。

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摘要

This thesis analyzes the effect of independent noise in principal components of k normally distributed random variables defined by a covariance matrix. We prove that the principal components as well as the canonical variate pairs determined from joint distribution of original sample affected by noise can be essentially different in comparison with those determined from the original sample. However when the differences between the eigenvalues of the original covariance matrix are sufficiently large compared to the level of the noise, the effect of noise in principal components and canonical variate pairs proved to be negligible. The theoretical results are supported by simulation study and examples. Moreover, we compare our results about the eigenvalues and eigenvectors in the two dimensional case with other models examined before. This theory can be applied in any field for the decomposition of the components in multivariate analysis.;One application is the detection and prediction of the main atmospheric factor of ozone concentrations on the example of Albany, New York. Using daily ozone, solar radiation, temperature, wind speed and precipitation data, we determine the main atmospheric factor for the explanation and prediction of ozone concentrations. A methodology is described for the decomposition of the time series of ozone and other atmospheric variables into the global term component which describes the long term trend and the seasonal variations, and the synoptic scale component which describes the short term variations. By using the Canonical Correlation Analysis, we show that solar radiation is the only main factor between the atmospheric variables considered here for the explanation and prediction of the global and synoptic scale component of ozone. The global term components are modeled by a linear regression model, while the synoptic scale components by a vector autoregressive model and the Kalman filter. The coefficient of determination, R2, for the prediction of the synoptic scale ozone component was found to be the highest when we consider the synoptic scale component of the time series for solar radiation and temperature.;KEY WORDS: multivariate analysis; principal component; canonical variate pairs; eigenvalue; eigenvector; ozone; solar radiation; spectral decomposition; Kalman filter; time series prediction
机译:本文分析了独立噪声对协方差矩阵定义的k个正态分布随机变量的主成分的影响。我们证明,从受噪声影响的原始样本的联合分布确定的主成分以及规范变量对与从原始样本确定的那些相比,可以有本质上的不同。但是,当原始协方差矩阵的特征值之间的差异与噪声水平相比足够大时,噪声在主成分和规范变量对中的影响被证明可以忽略不计。理论结果得到了仿真研究和实例的支持。此外,我们将二维情况下的特征值和特征向量与之前研究的其他模型进行比较。该理论可用于多变量分析中成分分解的任何领域。一个应用是以纽约州奥尔巴尼为例,检测和预测臭氧浓度的主要大气因子。利用每日的臭氧,太阳辐射,温度,风速和降水量数据,我们确定了解释和预测臭氧浓度的主要大气因素。描述了一种方法,用于将臭氧和其他大气变量的时间序列分解为描述长期趋势和季节变化的全局项分量,以及描述短期变化的天气尺度分量。通过使用典型相关分析,我们表明太阳辐射是此处用于解释和预测臭氧的整体和天气尺度组成部分的大气变量之间的唯一主要因素。全局项分量由线性回归模型建模,而天气尺度分量由矢量自回归模型和卡尔曼滤波器建模。当考虑太阳辐射和温度的时间序列的天气尺度分量时,用于确定天气尺度臭氧成分的确定系数R2最高。主成分规范变量对;特征值特征向量臭氧;太阳辐射;光谱分解卡尔曼滤波器时间序列预测

著录项

  • 作者

    Tsakiri, Katerina G.;

  • 作者单位

    State University of New York at Albany.;

  • 授予单位 State University of New York at Albany.;
  • 学科 Mathematics.;Atmospheric Sciences.;Statistics.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 115 p.
  • 总页数 115
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:37:21

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