Mechanical Fault Sound Source Localization Estimation in a Multisource Strong Reverberation Environment

IF 1.2 4区 工程技术 Q3 ACOUSTICS Shock and Vibration Pub Date : 2024-02-24 DOI:10.1155/2024/6452897
Yaohua Deng, Xiali Liu, Zilin Zhang, Daolong Zeng
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Abstract

Aiming at the sound source localization of mechanical faults in a strong reverberation scenario with multiple sound sources, this paper investigates a mechanical fault source localization method using the U-net deep convolutional neural network. The method utilizes the SRP-PHAT algorithm to calculate the response power spectra of the collected multichannel fault signals. Through the utilization of the U-net neural network, the response power spectra containing spurious peaks are transformed into “clean” estimated source distribution maps. By employing interpolation search, the estimated source distribution maps are processed to obtain location estimations for multiple fault sources. To validate the effectiveness of the proposed method, this paper constructs an experimental dataset using mechanical fault data from electromechanical equipment relays and conducts sound source localization experiments. The experimental results show that the U-net network under 0.2 s/0.5 s/0.7 s reverberation time can effectively eliminate spurious peak interference in the response power spectrum. As the signal-to-noise ratio decreases, it can still distinguish the sound sources with a distance of 0.2 m. In the context of multifault source localization, the method is capable of simultaneously locating the positions of four fault sources, with an average localization error of less than 0.02 m. The method in this paper effectively eliminates spurious peaks in the response power spectra under conditions of multisource strong reverberation. It accurately locates multiple mechanical fault sources, thereby significantly enhancing the efficiency of mechanical fault detection.
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多声源强混响环境中的机械故障声源定位估计
针对多声源强混响场景下的机械故障声源定位,本文研究了一种使用 U-net 深度卷积神经网络的机械故障声源定位方法。该方法利用 SRP-PHAT 算法计算采集到的多通道故障信号的响应功率谱。通过利用 U-net 神经网络,将包含杂散峰值的响应功率谱转化为 "干净 "的估计源分布图。通过使用插值搜索,对估计的源分布图进行处理,以获得多个故障源的位置估计。为了验证所提方法的有效性,本文利用机电设备继电器的机械故障数据构建了一个实验数据集,并进行了声源定位实验。实验结果表明,在混响时间为 0.2 秒/0.5 秒/0.7 秒的条件下,U 网网络能有效消除响应功率谱中的杂散峰值干扰。随着信噪比的降低,它仍能分辨出 0.2 米距离内的声源。在多故障声源定位方面,该方法能够同时定位四个故障声源的位置,平均定位误差小于 0.02 m。本文的方法能有效消除多源强混响条件下响应功率谱中的杂散峰值。它能准确定位多个机械故障源,从而大大提高了机械故障检测的效率。
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来源期刊
Shock and Vibration
Shock and Vibration 物理-工程:机械
CiteScore
3.40
自引率
6.20%
发文量
384
审稿时长
3 months
期刊介绍: Shock and Vibration publishes papers on all aspects of shock and vibration, especially in relation to civil, mechanical and aerospace engineering applications, as well as transport, materials and geoscience. Papers may be theoretical or experimental, and either fundamental or highly applied.
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