Optimization of the Processing Time of Cross-Correlation Spectra for Frequency Measurements of Noisy Signals

Yang Liu, Ji-Gou Liu, R. Kennel
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引用次数: 1

Abstract

Accurate frequency measurement plays an important role in many industrial and robotic systems. However, different influences from the application’s environment cause signal noises, which complicate frequency measurement. In rough environments, small signals are intensively disturbed by noises. Thus, even negative Signal-to-Noise Ratios (SNR) are possible in practice. Thus, frequency measuring methods, which can be used for low SNR signals, are in great demand. In previous work, the method of cross-correlation spectrum has been developed as an alternative to Fast Fourier-Transformation or Continuous Wavelet Transformation. It is able to determine the frequencies of a signal under strong noise and is not affected by Heisenberg’s uncertainty principle. However, in its current version, its creation is computationally very intensive. Thus, its application to real-time operations is limited. In this article, a new way to create the cross-correlation spectrum is presented. It is capable of reducing the calculation time by 89% without significant accuracy loss. In simulations, it achieves an average deviation of less than 0.1% on sinusoidal signals with an SNR of −14 dB and a signal length of 2000 data points. When applied to “self-mixing”-interferometry signals, the method can reach a normalized root-mean-square error of 0.21% with the aid of an estimation method and an averaging algorithm. Therefore, further research of the method is recommended.
噪声信号频率测量中互相关谱处理时间的优化
精确的频率测量在许多工业和机器人系统中起着重要的作用。然而,应用环境的不同影响会产生信号噪声,使频率测量复杂化。在恶劣的环境中,小信号受到噪声的强烈干扰。因此,甚至负信噪比(SNR)在实践中是可能的。因此,对能够用于低信噪比信号的频率测量方法的需求很大。在以往的工作中,互相关谱法已经发展成为替代快速傅立叶变换或连续小波变换的方法。它能够在强噪声下确定信号的频率,并且不受海森堡测不准原理的影响。然而,在其当前版本中,它的创建计算非常密集。因此,它在实时操作中的应用是有限的。本文提出了一种建立相互关联谱的新方法。它能够在没有显著精度损失的情况下减少89%的计算时间。在仿真中,它在信噪比为- 14 dB、信号长度为2000个数据点的正弦信号上实现了小于0.1%的平均偏差。将该方法应用于“自混频”干涉测量信号时,通过估计方法和平均算法,其归一化均方根误差可达0.21%。因此,建议对该方法进行进一步研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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