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利用分数阶傅里叶变换分离重叠线性调频(LFM)信号。

Separation of overlapping linear frequency modulated (LFM) signals using the fractional fourier transform.

机构信息

Ultrasound Group, School of Electronicand Electrical Engineering, University of Leeds, Leeds, England.

出版信息

IEEE Trans Ultrason Ferroelectr Freq Control. 2010 Oct;57(10):2324-33. doi: 10.1109/TUFFC.2010.1693.

Abstract

Linear frequency modulated (LFM) excitation combined with pulse compression provides an increase in SNR at the receiver. LFM signals are of longer duration than pulsed signals of the same bandwidth; consequently, in many practical situations, maintaining temporal separation between echoes is not possible. Where analysis is performed on individual LFM signals, a separation technique is required. Time windowing is unable to separate signals overlapping in time. Frequency domain filtering is unable to separate signals with overlapping spectra. This paper describes a method to separate time-overlapping LFM signals through the application of the fractional Fourier transform (FrFT), a transform operating in both time and frequency domains. A short introduction to the FrFT and its operation and calculation are presented. The proposed signal separation method is illustrated by application to a simulated ultrasound signal, created by the summation of multiple time-overlapping LFM signals and the component signals recovered with ±0.6% spectral error. The results of an experimental investigation are presented in which the proposed separation method is applied to time-overlapping LFM signals created by the transmission of a LFM signal through a stainless steel plate and water-filled pipe.

摘要

线性调频(LFM)激励与脉冲压缩相结合,在接收器处提供 SNR 的增加。LFM 信号的持续时间比具有相同带宽的脉冲信号长;因此,在许多实际情况下,不可能在回波之间保持时间分离。在对单个 LFM 信号进行分析时,需要分离技术。时间窗无法分离时间重叠的信号。频域滤波无法分离具有重叠频谱的信号。本文描述了一种通过应用分数傅里叶变换(FrFT)来分离时间重叠的 LFM 信号的方法,该变换在时间和频率域中都有作用。介绍了 FrFT 的简要介绍及其操作和计算。通过应用于由多个时间重叠的 LFM 信号求和生成的模拟超声信号以及具有±0.6%频谱误差的分量信号,说明了所提出的信号分离方法。介绍了应用于通过不锈钢板和充满水的管道传输 LFM 信号生成的时间重叠的 LFM 信号的实验研究的结果。

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