Adaptive Short-Time Fractional Fourier Transform Based on Minimum Information Entropy

B. Deng, Dan Jin, Junbao Luan
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引用次数: 0

Abstract

Traditional short-time fractional Fourier transform (STFrFT) has a single and fixed window function, which can not be adjusted adaptively according to the characteristics of frequency and frequency change rate. In order to overcome the shortcomings, the STFrFT method with adaptive window function is proposed. In this method, the window function of STFrFT is adaptively adjusted by establishing a library containing multiple window functions and taking the minimum information entropy as the criterion, so as to obtain a time-frequency distribution that better matches the desired signal. This method takes into account the time-frequency resolution characteristics of STFrFT and the excellent characteristics of adaptive adjustment to window function, improves the time-frequency aggregation on the basis of eliminating cross term interference, and provides a new tool for improving the time-frequency analysis ability of complex modulated signals.
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基于最小信息熵的自适应短时分数傅里叶变换
传统的短时分数阶傅里叶变换(STFrFT)具有单一且固定的窗函数,不能根据频率和频率变化率的特性进行自适应调整。为了克服这些缺点,提出了带自适应窗函数的STFrFT方法。该方法通过建立包含多个窗函数的库,以信息熵最小为准则,对STFrFT的窗函数进行自适应调整,从而获得更符合期望信号的时频分布。该方法充分考虑了STFrFT的时频分辨率特性和窗函数自适应调整的优良特性,在消除交叉项干扰的基础上改进了时频聚合,为提高复杂调制信号的时频分析能力提供了一种新的工具。
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1.10
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0.00%
发文量
2437
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