Time Delay Estimation from Multiband Radio Channel Samples in Nonuniform Noise

T. Kazaz, G. Janssen, A. V. D. Veen
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引用次数: 6

Abstract

The multipath radio channel is considered to have a non-bandlimited channel impulse response. Therefore, it is challenging to achieve high resolution time-delay (TD) estimation of multipath components (MPCs) from bandlimited observations of communication signals. It this paper, we consider the problem of multiband channel sampling and TD estimation of MPCs. We assume that the nonideal multi-branch receiver is used for multiband sampling, where the noise is nonuniform across the receiver branches. The resulting data model of Hankel matrices formed from acquired samples has multiple shift-invariance structures, and we propose an algorithm for TD estimation using weighted subspace fitting. The subspace fitting is formulated as a separable nonlinear least squares (NLS) problem, and it is solved using a variable projection method. The proposed algorithm supports high resolution TD estimation from an arbitrary number of bands, and it allows for nonuniform noise across the bands. Numerical simulations show that the algorithm almost attains the Cramér Rao Lower Bound, and it outperforms previously proposed methods such as multiresolution TOA, MI-MUSIC, and ESPRIT.
非均匀噪声下多波段无线电信道样本的时延估计
多径无线电信道被认为具有非带限信道脉冲响应。因此,从通信信号的有限带宽观测中实现多径分量(MPCs)的高分辨率时延(TD)估计是一项挑战。本文主要研究了多频带信道的采样和多信道信道估计问题。我们假设使用非理想多支路接收机进行多波段采样,其中噪声在接收机支路上是不均匀的。采集样本形成的Hankel矩阵数据模型具有多重移不变性结构,提出了一种加权子空间拟合的TD估计算法。将子空间拟合表述为可分离非线性最小二乘问题,并采用变量投影法求解。该算法支持任意频带的高分辨率TD估计,并允许跨频带的非均匀噪声。数值仿真结果表明,该算法基本达到了cramsamr Rao下界,优于已有的多分辨率TOA、MI-MUSIC、ESPRIT等方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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