改进了部分已知或未知数组响应的信号拷贝

Jiankan Yang, S. Daas, A. Swindlehurst
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引用次数: 4

摘要

盲自适应算法通过利用信号的时间结构提取在时间和频率上重叠的信号,但忽略任何可用的空间(阵列响应)数据。另一方面,基于测向的方法利用信号方向的估计来计算信号的复制权值,但忽略了信号结构的信息。在本文中,我们提出了两种简单的迭代技术,试图在估计传感器阵列接收的信号波形时结合时间和空间信息。第一种方法假设初始盲信号估计是可用的,并使用最小二乘来近似阵列响应并改进信号估计。第二种方法适用于数字调制信号,并使用在初始信号估计上做出的位决定来重新计算信号复制权重向量。对两种算法在高信噪比情况下的性能进行了理论分析,并给出了一些具有代表性的仿真结果
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Improved signal copy with partially known or unknown array response
Blind adaptive algorithms extract signals that overlap in time and frequency by exploiting their temporal structure, but ignore any available spatial (array response) data. On the other hand, direction-finding based methods compute the signal copy weights using estimates of the signal directions, but ignore information about signal structure. In this paper, we present two simple iterative techniques that attempt to incorporate both temporal and spatial information in estimating the signal waveforms received by an array of sensors. The first technique assumes an initial blind signal estimate is available, and uses least-squares to approximate the array response and refine the signal estimate. The second method is applicable to digitally modulated signals, and uses bit decisions made on an initial signal estimate to recompute the signal copy weight vectors. A theoretical performance analysis of both algorithms is conducted for the high SNR case, and some representative simulation results are included.<>
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