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Graphical model driven methods in adaptive system identification

机译:自适应系统辨识中的图形模型驱动方法

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摘要

Identifying and tracking an unknown linear system from observations of its inputs and outputs is a problem at the heart of many different applications. Due to the complexity and rapid variability of modern systems, there is extensive interest in solving the problem with as little data and computation as possible. This thesis introduces the novel approach of reducing problem dimension by exploiting statistical structure on the input. By modeling the input to the system of interest as a graph-structured random process, it is shown that a large parameter identification problem can be reduced into several smaller pieces, making the overall problem considerably simpler. Algorithms that can leverage this property in order to either improve the performance or reduce the computational complexity of the estimation problem are developed. The first of these, termed the graphical expectation-maximization least squares (GEM-LS) algorithm, can utilize the reduced dimensional problems induced by the structure to improve the accuracy of the system identification problem in the low sample regime over conventional methods for linear learning with limited data, including regularized least squares methods. Next, a relaxation of the GEM-LS algorithm termed the relaxed approximate graph structured least squares (RAGS-LS) algorithm is obtained that exploits structure to perform highly efficient estimation. The RAGS-LS algorithm is then recast into a recursive framework termed the relaxed approximate graph structured recursive least squares (RAGS-RLS) algorithm, which can be used to track time-varying linear systems with low complexity while achieving tracking performance comparable to much more computationally intensive methods. The performance of the algorithms developed in the thesis in applications such as channel identification, echo cancellation and adaptive equalization demonstrate that the gains admitted by the graph framework are realizable in practice. The methods have wide applicability, and in particular show promise as the estimation and adaptation algorithms for a new breed of fast, accurate underwater acoustic modems. The contributions of the thesis illustrate the power of graphical model structure in simplifying difficult learning problems, even when the target system is not directly structured.
机译:从输入和输出的观察中识别和跟踪未知线性系统是许多不同应用程序的核心问题。由于现代系统的复杂性和快速的可变性,人们对解决问题的兴趣非常广泛,因为它需要尽可能少的数据和计算。本文介绍了通过利用输入的统计结构来减少问题维度的新颖方法。通过将感兴趣的系统的输入建模为图形结构的随机过程,表明可以将大参数识别问题分解为几个较小的部分,从而使整个问题变得相当简单。开发了可以利用此属性以提高性能或降低估计问题的计算复杂度的算法。其中的第一个称为图形期望最大最小二乘法(GEM-LS)算法,与传统的线性学习方法相比,可以利用结构引起的降维问题来提高低样本条件下系统识别问题的准确性。数据有限,包括正则化最小二乘法。接下来,获得了称为松弛近似图结构最小二乘(RAGS-LS)算法的GEM-LS算法的松弛,该算法利用结构来执行高效估计。然后将RAGS-LS算法重铸到称为松弛近似图结构递归最小二乘(RAGS-RLS)算法的递归框架中,该算法可用于跟踪具有低复杂度的时变线性系统,同时获得可与之媲美的跟踪性能。计算密集型方法。本文开发的算法在信道识别,回声消除和自适应均衡等应用中的性能表明,图框架所接受的增益在实践中是可以实现的。该方法具有广泛的适用性,特别是有望作为一种新型的快速,准确的水下声波调制解调器的估计和自适应算法。论文的贡献说明了图形模型结构在简化困难的学习问题方面的能力,即使目标系统不是直接构建的。

著录项

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    Yellepeddi, Atulya;

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  • 年度 2016
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  • 原文格式 PDF
  • 正文语种 eng
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