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基于经验模态分解的舰船辐射噪声非线性特征的舰船分类方法

Ship classification using nonlinear features of radiated sound: an approach based on empirical mode decomposition.

机构信息

Key Laboratory of Modern Acoustics and Institute of Acoustics, Nanjing University, 22 Hankou Road, Nanjing 210093, China.

出版信息

J Acoust Soc Am. 2010 Jul;128(1):206-14. doi: 10.1121/1.3436543.

Abstract

Classification for ship-radiated underwater sound is one of the most important and challenging subjects in underwater acoustical signal processing. An approach to ship classification is proposed in this work based on analysis of ship-radiated acoustical noise in subspaces of intrinsic mode functions attained via the ensemble empirical mode decomposition. It is shown that detection and acquisition of stable and reliable nonlinear features become practically feasible by nonlinear analysis of the time series of individual decomposed components, each of which is simple enough and well represents an oscillatory mode of ship dynamics. Surrogate and nonlinear predictability analysis are conducted to probe and measure the nonlinearity and regularity. The results of both methods, which verify each other, substantiate that ship-radiated noises contain components with deterministic nonlinear features well serving for efficient classification of ships. The approach perhaps opens an alternative avenue in the direction toward object classification and identification. It may also import a new view of signals as complex as ship-radiated sound.

摘要

舰船噪声的分类是水下声信号处理中最重要和最具挑战性的课题之一。本文提出了一种基于船舶辐射噪声固有模态函数子空间分析的舰船分类方法。研究表明,通过对各个分解分量的时间序列进行非线性分析,可以实现稳定、可靠的非线性特征的检测和提取,每个分量都足够简单,可以很好地表示船舶动力的振荡模式。通过替代和非线性预测分析来探测和测量非线性和规律性。这两种方法互为验证,结果表明,舰船辐射噪声中包含具有确定性非线性特征的分量,这些分量可用于舰船的有效分类。该方法为目标分类和识别开辟了一条新的途径,也为舰船辐射噪声等复杂信号带来了新的视角。

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