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Short-time fractional Fourier methods for the time-frequency representation of chirp signals

机译:线性调频信号时频表示的短时分数阶傅里叶方法

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摘要

The fractional Fourier transform (FrFT) provides a valuable tool for the analysis of linear chirp signals. This paper develops two short-time FrFT variants which are suited to the analysis of multicomponent and nonlinear chirp signals. Outputs have similar properties to the short-time Fourier transform (STFT) but show improved time-frequency resolution. The FrFT is a parameterized transform with parameter, α, related to chirp rate. The two short-time implementations differ in how the value of α is chosen. In the first, a global optimization procedure selects one value of α with reference to the entire signal. In the second, α values are selected independently for each windowed section. Comparative variance measures based on the Gaussian function are given and are shown to be consistent with the uncertainty principle in fractional domains. For appropriately chosen FrFT orders, the derived fractional domain uncertainty relationship is minimized for Gaussian windowed linear chirp signals. The two short-time FrFT algorithms have complementary strengths demonstrated by time-frequency representations for a multicomponent bat chirp, a highly nonlinear quadratic chirp, and an output pulse from a finite-difference sonar model with dispersive change. These representations illustrate the improvements obtained in using FrFT based algorithms compared to the STFT.
机译:分数阶傅里叶变换(FrFT)为分析线性chi信号提供了一种有价值的工具。本文开发了两种短时FrFT变体,适用于分析多分量和非线性线性调频信号。输出具有与短时傅立叶变换(STFT)相似的属性,但显示出改进的时频分辨率。 FrFT是参数化的变换,其参数为与线性调频率有关的参数。两种短时实现在选择α值的方式上有所不同。首先,全局优化程序参照整个信号选择一个α值。在第二个中,为每个窗口部分独立选择α值。给出了基于高斯函数的比较方差测度,并被证明与分数域中的不确定性原理一致。对于适当选择的FrFT阶数,对于高斯窗口线性chi信号,导出的分数域不确定性关系最小。两种短时FrFT算法具有互补的优势,这些优势由时频表示法证明,适用于多分量蝙蝠chi,高度非线性的二次chi以及具有色散变化的有限差分声纳模型的输出脉冲。这些表示法说明了与STFT相比,使用基于FrFT的算法所获得的改进。

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