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基于变分模态分解和希尔伯特-黄变换的水下放电产生声信号的时频分析。

The time-frequency analysis of the acoustic signal produced in underwater discharges based on Variational Mode Decomposition and Hilbert-Huang Transform.

机构信息

College of Weapons Engineering, Naval University of Engineering, Wuhan, 430033, China.

Department of Weapons, Naval Petty Officer Academy, Bengbu, 233012, China.

出版信息

Sci Rep. 2023 Jan 2;13(1):22. doi: 10.1038/s41598-022-27359-5.

Abstract

The experiments of underwater discharges in an anechoic pool were carried out and analysis of the time-frequency characteristics of the acoustic signals was conducted based on Variational Mode Decomposition and Hilbert-Huang Transform (VMD-HHT). We propose a relative center frequency difference method to determine the decomposition numbers K which has to be given before the application of VMD and the result is satisfying. The HHT spectrum and marginal spectrum are obtained, then, some valuable conclusions are drawn. The high-frequency components of the acoustic signal are mainly attributed to the shock wave, and the low-frequency components mostly result from the bubble pulse. The frequency range of the acoustic signal is basically from 0 to 90kHz, and the ratio of energy in the low-frequency band(0-4kHz) to that of the total acoustic signal is up to 55.56%. Furthermore, this ratio versus gaps is also explored and it has the minimum at the gap of 1.5 mm which is the optimal gap for the peak pressure and radiated energy of the acoustic signal. Therefore, we can not obtain the maximum energy of the acoustic signal and the maximum ratio in the low-frequency band simultaneously.

摘要

在消声水池中进行水下放电实验,基于变分模态分解和希尔伯特-黄变换(VMD-HHT)对声信号的时频特性进行分析。我们提出了一种相对中心频率差方法来确定变分模态分解的分解数 K,这在 VMD 应用之前必须给出,结果令人满意。得到了 HHT 谱和边际谱,然后得出了一些有价值的结论。声信号的高频分量主要归因于冲击波,而低频分量主要来自气泡脉冲。声信号的频率范围基本上在 0 到 90kHz 之间,低频带(0-4kHz)的能量与总声信号的能量之比高达 55.56%。此外,还探索了该比值与间隙的关系,发现当间隙为 1.5mm 时比值最小,此时声信号的峰值压力和辐射能量达到最佳。因此,我们不能同时获得声信号的最大能量和低频带的最大比值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/56dd/9807635/f875d6e7141f/41598_2022_27359_Fig1_HTML.jpg

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