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The constrained total least squares with regularization and its use in ill-conditioned signal restoration.

机译:带正则化的约束总最小二乘法及其在病态信号恢复中的使用。

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摘要

The recovery or restoration of an input signal from the impulse response and output signal of a linear, time-invariant system involves solving a set of linear equations in which both the data matrix and the observation vector are corrupted by noise Since the 1980s, the total least squares technique has been a powerful tool for solving a noise perturbed system of linear equations. However, the total least squares method is based on the assumptions that the noise perturbations contained in both the data matrix and the observation vector are statistically independent of each other and have equal values of variances. Violation of these assumptions degrades the performance of this technique or even results in its failure. To combat the correlated noise entries in the data matrix and the observation vector, a modified version of the total least squares method, called the constrained total least squares has been developed. The constrained total least squares technique attempts to find the input signal estimate by minimizing the Frobenius norm of noise entries of the data matrix and the observation vector. It has been shown that the constrained total least squares has the maximum likelihood estimator properties. However, the noise content affects the minimization process, and causes numerical ill-conditioning, both of which degrade its performance.;In this dissertation, a new approach, a modified version of the constrained total least squares technique, called the regularized constrained total least squares technique, is developed for the restoration of an input signal from noisy data. Based on the constrained total least squares, the proposed technique estimates the input signal by minimizing the Frobenius norm of noise entries in the data matrix and the observation vector under the linear equality constraints on the input signal vector. In view of the linear algebraic relations among the noise entries in the data matrix and the observation vector, the presented technique transforms the problem of minimization of Frobenius norm with linear equality constraints into an unconstrained minimization problem. Therefore, numerical optimization techniques can be applied. A perturbation analysis is performed to ascertain the applicability of the foregoing technique. It indicates that variance and the overall mean square error of the solution obtained by using the presented technique is reduced while increasing the stability. To illustrate the validity of the presented technique, both simulated data with additive white Gaussian noise and actual data with unknown noise characteristics are considered. The results show that, when the regularization parameter is appropriately chosen, the new technique is superior to the constrained total least squares technique.
机译:从线性时不变系统的脉冲响应和输出信号中恢复或恢复输入信号涉及求解一组线性方程,其中数据矩阵和观测矢量都被噪声破坏自1980年代以来,总的最小二乘技术已成为解决噪声干扰线性方程组的有力工具。但是,总最小二乘法基于以下假设:数据矩阵和观测向量中包含的噪声扰动在统计上彼此独立,并且具有相等的方差值。违反这些假设会降低该技术的性能,甚至导致其失败。为了与数据矩阵和观测向量中的相关噪声条目作斗争,已开发出了总最小二乘法的改进版本,称为约束总最小二乘法。受约束的总最小二乘技术试图通过最小化数据矩阵和观察向量的噪声条目的Frobenius范数来找到输入信号估计。已经表明,约束的总最小二乘法具有最大似然估计器特性。然而,噪声含量会影响最小化过程,并导致数值不佳,这两者都会降低其性能。本论文提出了一种新方法,即约束总最小二乘技术的改进版本,称为正则约束总最小二乘。平方技术的发展是为了从噪声数据中恢复输入信号。基于受约束的总最小二乘,所提出的技术通过在输入信号向量上的线性相等约束下,通过最小化数据矩阵中的噪声条目的Frobenius范数和观测向量来估计输入信号。鉴于数据矩阵中的噪声项与观测向量之间的线性代数关系,该技术将具有线性等式约束的Frobenius范数的最小化问题转化为无约束的最小化问题。因此,可以应用数值优化技术。进行扰动分析以确定前述技术的适用性。这表明通过使用所提出的技术获得的解的方差和总体均方误差减小了,同时增加了稳定性。为了说明所提出技术的有效性,考虑了具有加性高斯白噪声的模拟数据和具有未知噪声特性的实际数据。结果表明,在适当选择正则化参数的情况下,新技术优于约束总最小二乘法。

著录项

  • 作者

    Fan, Xingjie.;

  • 作者单位

    Mississippi State University.;

  • 授予单位 Mississippi State University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 1992
  • 页码 117 p.
  • 总页数 117
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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