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Resonance-Based Time-Frequency Manifold for Feature Extraction of Ship-Radiated Noise

机译:基于谐振的时频歧管,用于散发辐射噪声的特征提取

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摘要

In this paper, a novel time-frequency signature using resonance-based sparse signal decomposition (RSSD), phase space reconstruction (PSR), time-frequency distribution (TFD) and manifold learning is proposed for feature extraction of ship-radiated noise, which is called resonance-based time-frequency manifold (RTFM). This is suitable for analyzing signals with oscillatory, non-stationary and non-linear characteristics in a situation of serious noise pollution. Unlike the traditional methods which are sensitive to noise and just consider one side of oscillatory, non-stationary and non-linear characteristics, the proposed RTFM can provide the intact feature signature of all these characteristics in the form of a time-frequency signature by the following steps: first, RSSD is employed on the raw signal to extract the high-oscillatory component and abandon the low-oscillatory component. Second, PSR is performed on the high-oscillatory component to map the one-dimensional signal to the high-dimensional phase space. Third, TFD is employed to reveal non-stationary information in the phase space. Finally, manifold learning is applied to the TFDs to fetch the intrinsic non-linear manifold. A proportional addition of the top two RTFMs is adopted to produce the improved RTFM signature. All of the case studies are validated on real audio recordings of ship-radiated noise. Case studies of ship-radiated noise on different datasets and various degrees of noise pollution manifest the effectiveness and robustness of the proposed method.
机译:在本文中,使用谐振的基于稀疏信号分解(RSSD),相空间重构(PSR),时间 - 频率分布(TFD)和歧管学习一种新的时间 - 频率签名提出了一种用于特征提取舰船辐射噪声,这是所谓的基于共振的时间 - 频率歧管(RTFM)。这是适合于在严重噪声污染的情况分析与振荡,非平稳和非线性特性的信号。不同于对噪声敏感和只考虑振荡的一侧上的传统方法中,非平稳和非线性特性,所提出的RTFM可以提供所有这些特性的完整特征签名在由时间 - 频率签名的形式以下步骤:第一,RSSD采用对原始信号以提取所述高振荡分量,抛弃低振荡分量。第二,PSR是高振荡分量上执行,以映射的一维信号向高维相空间。采用三,TFD揭示相空间非固定信息。最后,歧管学习被施加到了TFD获取的固有非线性歧管中。成比例的附加顶部的两个RTFMs的采用,以产生改进的RTFM签名。所有案例研究都证实船舶辐射噪声的实时录音。对不同的数据集和不同程度的噪音污染明显了该方法的有效性和鲁棒性的舰船辐射噪声的案例研究。

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