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首页> 外文期刊>Instrumentation and Measurement, IEEE Transactions on >A New Regularized Adaptive Windowed Lomb Periodogram for Time–Frequency Analysis of Nonstationary Signals With Impulsive Components
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A New Regularized Adaptive Windowed Lomb Periodogram for Time–Frequency Analysis of Nonstationary Signals With Impulsive Components

机译:具有脉冲分量的非平稳信号时频分析的新正则化自适应窗口化的Lomb周期图

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摘要

This paper proposes a new class of windowed Lomb periodogram (WLP) for time–frequency analysis of nonstationary signals, which may contain impulsive components and may be nonuniformly sampled. The proposed methods significantly extend the conventional Lomb periodogram in two aspects: 1) The nonstationarity problem is addressed by employing the weighted least squares (WLS) to estimate locally the time-varying periodogram and an intersection of confidence interval technique to adaptively select the window sizes of WLS in the time–frequency domain. This yields an adaptive WLP (AWLP) having a better tradeoff between time resolution and frequency resolution. 2) A more general regularized maximum-likelihood-type (M-) estimator is used instead of the LS estimator in estimating the AWLP. This yields a novel M-estimation-based regularized AWLP method which is capable of reducing estimation variance, accentuating predominant time–frequency components, restraining adverse influence of impulsive components, and separating impulsive components. Simulation results were conducted to illustrate the advantages of the proposed method over the conventional Lomb periodogram in adaptive time–frequency resolution, sparse representation for sinusoids, robustness to impulsive components, and applicability to nonuniformly sampled data. Moreover, as the computation of the proposed method at each time sample and frequency is independent of others, parallel computing can be conveniently employed without much difficulty to significantly reduce the computational time of our proposed method for real-time applications. The proposed method is expected to find a wide range of applications in instrumentation and measurement and related areas. Its potential applications to power quality analysis and speech signal analysis are also discussed and demonstrated.
机译:本文提出了一种新的加窗的Lomb周期图(WLP),用于非平稳信号的时频分析,该信号可能包含脉冲分量并且可能采样不均匀。所提出的方法从两个方面显着扩展了常规的Lomb周期图:1)通过使用加权最小二乘(WLS)本地估计时变周期图和置信区间技术来自适应选择窗口大小,可以解决非平稳性问题WLS在时频域中的分布。这产生了在时间分辨率和频率分辨率之间具有较好折衷的自适应WLP(AWLP)。 2)在估计AWLP时,使用更通用的正规化最大似然类型(M-)估计器代替LS估计器。这产生了一种新颖的基于M估计的正则化AWLP方法,该方法能够减少估计方差,加重主要的时频成分,抑制脉冲成分的不利影响以及分离脉冲成分。仿真结果表明了该方法在自适应时频分辨率,正弦曲线稀疏表示,对脉冲分量的鲁棒性以及对非均匀采样数据的适用性方面优于常规Lomb周期图的优势。而且,由于在每次采样和频率上所提出的方法的计算是相互独立的,因此可以方便地采用并行计算而没有太大的困难,可以大大减少我们所提出的用于实时应用的方法的计算时间。预期所提出的方法将在仪器和测量以及相关领域中找到广泛的应用。还讨论并演示了其在电能质量分析和语音信号分析中的潜在应用。

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