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Statistical Nested Sensor Array Signal Processing.

机译:统计嵌套传感器阵列信号处理。

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摘要

Source number detection and direction-of-arrival (DOA) estimation are two major applications of sensor arrays. Both applications are often confined to the use of uniform linear arrays (ULAs), which is expensive and difficult to yield wide aperture. Besides, a ULA with N scalar sensors can resolve at most N - 1 sources. On the other hand, a systematic approach was recently proposed to achieve O( N2) degrees of freedom (DOFs) using O( N) sensors based on a nested array, which is obtained by combining two or more ULAs with successively increased spacing.;This dissertation will focus on a fundamental study of statistical signal processing of nested arrays. Five important topics are discussed, extending the existing nested-array strategies to more practical scenarios. Novel signal models and algorithms are proposed.;First, based on the linear nested array, we consider the problem for wideband Gaussian sources. To employ the nested array to the wideband case, we propose effective strategies to apply nested-array processing to each frequency component, and combine all the spectral information of various frequencies to conduct the detection and estimation. We then consider the practical scenario with distributed sources, which considers the spreading phenomenon of sources.;Next, we investigate the self-calibration problem for perturbed nested arrays, for which existing works require certain modeling assumptions, for example, an exactly known array geometry, including the sensor gain and phase. We propose corresponding robust algorithms to estimate both the model errors and the DOAs. The partial Toeplitz structure of the covariance matrix is employed to estimate the gain errors, and the sparse total least squares is used to deal with the phase error issue.;We further propose a new class of nested vector-sensor arrays which is capable of significantly increasing the DOFs. This is not a simple extension of the nested scalar-sensor array. Both the signal model and the signal processing strategies are developed in the multidimensional sense. Based on the analytical results, we consider two main applications: electromagnetic (EM) vector sensors and acoustic vector sensors.;Last but not least, in order to make full use of the available limited valuable data, we propose a novel strategy, which is inspired by the jackknifing resampling method. Exploiting numerous iterations of subsets of the whole data set, this strategy greatly improves the results of the existing source number detection and DOA estimation methods.
机译:源数检测和到达方向(DOA)估计是传感器阵列的两个主要应用。两种应用通常都限于使用均匀线性阵列(ULA),这种阵列昂贵且难以产生大孔径。此外,带有N个标量传感器的ULA最多可以解析N-1个源。另一方面,最近提出了一种系统化的方法,以基于嵌套数组的O(N)传感器来实现O(N2)自由度(DOF),该嵌套数组是通过组合两个或多个具有连续增大的间距的ULA而获得的。本文将重点研究嵌套数组的统计信号处理的基础研究。讨论了五个重要主题,将现有的嵌套数组策略扩展到更实际的方案。首先提出了基于线性嵌套阵列的宽带高斯源问题。为了将嵌套阵列应用于宽带情况,我们提出了有效的策略,将嵌套阵列处理应用于每个频率分量,并结合各种频率的所有频谱信息来进行检测和估计。然后,我们考虑具有分布式源的实际情况,其中考虑了源的扩散现象。接下来,我们研究扰动嵌套阵列的自校准问题,为此,现有工作需要某些建模假设,例如,精确已知的阵列几何形状,包括传感器增益和相位。我们提出了相应的鲁棒算法来估计模型误差和DOA。利用协方差矩阵的局部Toeplitz结构来估计增益误差,并使用稀疏的总最小二乘法来处理相位误差问题。;我们进一步提出了一种新型的嵌套向量传感器阵列,该阵列能够增加自由度。这不是嵌套标量传感器数组的简单扩展。信号模型和信号处理策略都是在多维意义上发展的。根据分析结果,我们考虑了两个主要应用:电磁(EM)矢量传感器和声学矢量传感器。最后但同样重要的是,为了充分利用可用的有限有价值的数据,我们提出了一种新颖的策略,即受千斤顶重采样方法启发。利用整个数据集子集的多次迭代,此策略极大地改善了现有源编号检测和DOA估计方法的结果。

著录项

  • 作者

    Han, Keyong.;

  • 作者单位

    Washington University in St. Louis.;

  • 授予单位 Washington University in St. Louis.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 149 p.
  • 总页数 149
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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