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Comparing the Time-Deformation Method with the Fractional Fourier Transform in Filtering Non-Stationary Processes

机译:在过滤非平稳过程中将时间变形方法与分数阶傅里叶变换进行比较

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The classical linear filter is able to extract components from multi-component stochastic processes where the frequencies of components do not overlap over time, but fail for those processes where the frequencies overlap over time. In this paper, we discuss two filtering methods for non-stationary processes: the G-filtering method and the Fractional Fourier transform (FrFT) method. The FrFT method is mainly designed for linear chirp signals where the frequency is linearly changing with time. The G-filter can be used to filter signals with wide range of frequency behaviors such as linear chirps, quadratic chirps and other type of chirp signals with strong time-varying frequency behavior. If frequencies of the components can be approximated or separated by a straight line or a polynomial curve, the G-filter can successfully extract components from the original series. We show that the G-filter is applicable to a wider variety of filtering applications than methods such as the FrFT which require data of a specified frequency behavior.
机译:经典的线性滤波器能够从多组件随机过程中提取组件,在多组件随机过程中,组件的频率不会随时间重叠,但是对于那些随时间而出现频率重叠的过程,则是失败的。在本文中,我们讨论了两种用于非平稳过程的滤波方法:G滤波方法和分数阶傅里叶变换(FrFT)方法。 FrFT方法主要设计用于线性chi信号,其中频率随时间线性变化。 G滤波器可用于过滤具有广泛频率特性的信号,例如线性线性调频,二次线性调频和其他类型的具有强时变频率特性的线性调频信号。如果可以通过直线或多项式曲线近似或分离分量的频率,则G滤波器可以成功地从原始序列中提取分量。我们证明,与要求诸如指定频率行为的数据的FrFT之类的方法相比,G滤波器适用于更广泛的滤波应用。

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