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Wiener and Kalman filtering for self-similar processes.

机译:用于自相似过程的Wiener和Kalman滤波。

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摘要

In this thesis, we formulate Wiener and Kalman filtering for the optimal estimation and prediction of self-similar processes. Our algorithms are based on the scale stationary processes framework which provides a mathematically tractable system theoretic model enabling the development of many signal processing techniques. In this framework, self-similar processes are modeled using scale stationary Auto Regressive Moving Average (ARMA) models. It has been shown that such continuous-time ARMA systems can be processed by generalized Mellin and Scale Transforms, analogous to the use of the Laplace and Fourier Transforms in the continuous-time processing of ordinary stationary ARMA systems.; In this work, we first attempt to discretize these models by using exponential sampling and then formulate discrete time algorithms for discrete time processing. These discrete time techniques are used in the implementation of the optimal Wiener filtering algorithm obtained for self-similar processes using least squares techniques. Wiener filtering algorithm in Discrete Generalized Scale Transform (DGST) domain is defined in terms of scale power spectral densities. Hence, we develop a periodogram-like method for the estimation of the power spectrum of self-similar processes using DGST. Wiener filtering algorithm for the restoration of self-similar processes is tested on simulation examples.; Investigation of the state space analysis is needed to fully develop the self-similar ARMA processes framework. First, a general state space representation of self-similar ARMA processes is obtained based on first order time varying ordinary differential equations. It is shown that the major difference of this representation is in the scale memory content. Here, we introduced new concepts, i.e., the “multivariate self-similarity” of the states which is captured in the “self-similarity matrix”. In this state space representation, the self-similarity of the outputs is represented as a linear combination of self-similar states having different self-similarity parameters. Secondly, we develop a recursive predictive estimation algorithm in the form of a Kalman filter for self-similar processes using the proposed state space representation. Simulation examples suggest that the proposed algorithm is superior to the traditional Kalman filtering technique when the input and the output processes are self-similar.
机译:本文针对自相似过程的最优估计和预测,设计了维纳和卡尔曼滤波。我们的算法基于规模平稳过程框架,该框架提供了数学上易处理的系统理论模型,从而可以开发许多信号处理技术。在此框架中,使用规模固定的自动回归移动平均(ARMA)模型对自相似过程进行建模。已经表明,这种连续时间的ARMA系统可以通过广义的Mellin和Scale变换来处理,类似于在普通固定式ARMA系统的连续时间处理中使用拉普拉斯变换和傅立叶变换。在这项工作中,我们首先尝试通过使用指数采样来离散化这些模型,然后为离散时间处理制定离散时间算法。这些离散时间技术用于实现最佳维纳滤波算法,该算法使用最小二乘法为自相似过程获得。离散广义尺度变换(DGST)域中的维纳滤波算法是根据尺度功率谱密度定义的。因此,我们开发了一种类似周期图的方法,用于使用DGST估计自相似过程的功率谱。在仿真实例上测试了用于恢复自相似过程的维纳滤波算法。需要研究状态空间分析以完全开发自相似的ARMA流程框架。首先,基于一阶时变常微分方程,获得自相似ARMA过程的一般状态空间表示。结果表明,这种表示的主要区别在于量表存储内容。在这里,我们介绍了新的概念,即在“自相似矩阵”中捕获的状态的“多元自相似”。在这种状态空间表示中,输出的自相似性表示为具有不同自相似性参数的自相似状态的线性组合。其次,我们使用提出的状态空间表示形式,针对自相似过程开发了卡尔曼滤波器形式的递归预测估计算法。仿真实例表明,当输入和输出过程自相似时,该算法优于传统的卡尔曼滤波技术。

著录项

  • 作者

    Izzetoglu, Meltem Alkan.;

  • 作者单位

    Drexel University.;

  • 授予单位 Drexel University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2002
  • 页码 100 p.
  • 总页数 100
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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