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High-Resolution Spectrum-Estimation Methods for Signal Analysis in Power Systems

机译:电力系统信号分析的高分辨率频谱估计方法

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The spectrum-estimation methods based on the Fourier transform suffer from the major problem of resolution. The methods were developed and are mostly applied for periodic signals under the assumption that only harmonics are present and the periodicity intervals are fixed, while periodicity intervals in the presence of interharmonics are variable and very long. A novel approach to harmonic and interharmonic analysis based on the "subspace" methods is proposed. Min-norm and music harmonic retrieval methods are examples of high-resolution eigenstructure-based methods. Their resolution is theoretically independent of the signal-to-noise ratio (SNR). The Prony method as applied for parameter estimation of signal components was also tested in the paper. Both the high-resolution methods do not show the disadvantages of the traditional tools and allow exact estimation of the interharmonic frequencies. To investigate the methods, several experiments were carried out using simulated signals, current waveforms at the output of an industrial frequency converter, and current waveforms during out-of-step operation of a synchronous generator. For comparison, similar experiments were repeated using the fast Fourier transform (FFT). The comparison proved the superiority of the new methods.
机译:基于傅立叶变换的频谱估计方法存在主要的分辨率问题。在仅存在谐波且周期间隔固定的前提下,开发了该方法并将其主要应用于周期信号,而存在间谐波的周期间隔是可变的且非常长。提出了一种基于“子空间”方法的谐波和间谐波分析新方法。最小范数和音乐谐波检索方法是基于高分辨率本征结构的方法的示例。从理论上讲,它们的分辨率与信噪比(SNR)无关。本文还测试了用于信号成分参数估计的Prony方法。两种高分辨率方法都没有显示出传统工具的缺点,并且可以精确估计间谐波频率。为了研究这些方法,使用模拟信号,工业变频器输出端的电流波形以及同步发电机失步运行期间的电流波形进行了一些实验。为了进行比较,使用快速傅里叶变换(FFT)重复了类似的实验。比较证明了新方法的优越性。

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