Abstract

Due to the existence of marine environmental noise, coupled with the instability of underwater acoustic channel, ship-radiated noise (SRN) signals detected by sensors tend to suffer noise pollution as well as distortion caused by the transmission medium, making the denoising of the raw detected signals the new focus in the field of underwater acoustic target recognition. In view of this, this paper presents a novel hybrid feature extraction scheme integrating improved variational mode decomposition (IVMD), normalized maximal information coefficient (norMIC) and permutation entropy (PE) for SRN signals. Firstly, the IVMD method is employed to decompose the SRN signals into a number of finite intrinsic mode functions (IMFs). The noise IMFs are then filtered out by a denoising method before PE extraction. Next, the MIC between each retained IMF and the raw SRN signal and PE of retained IMFs are calculated, respectively. After this, the norMICs are used to weigh the PE values of the retained IMFs and the sum of the weighted PE results is regarded as the classification parameter. Finally, the feature vectors are fed into the particle swarm optimization-based support vector machine multi-class classifier (PSO-SVM) to identify different types of SRN samples. The experimental results have indicated that the classification accuracy of the proposed method is as high as 99.1667%, which is much higher than that of other currently existing methods. Hence, the method proposed in this paper is more suitable for feature extraction of SRN signals in practical application.

Highlights

  • Signal analysis of ship-radiated noise (SRN) is important, for military operations and for environmental protection [1,2]

  • Study in [31], a group of intrinsic mode functions (IMFs) were first obtained from variational mode decomposition (VMD) decomposition of SRN signals, The IMF with the closest fluctuation-based dispersion entropy (FDE) value to the original signal is used as the sensitive IMF, realizing a classification accuracy of 97.5%

  • In order to extract the inherent features that can characterize ship-radiated noise, a technique fully integrating improved variational mode decomposition (IVMD), normalized maximal information coefficient (norMIC) and permutation entropy (PE) is presented in this paper

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Summary

Introduction

Signal analysis of ship-radiated noise (SRN) is important, for military operations and for environmental protection [1,2]. EEMD has been presented as an improved version of EMD It has solved the issue of mode mixing parasitism in EMD by adding Gaussian white noise to the analyzed signal, and averaging the results of multiple decompositions to obtain the IMFs. EEMD, poses additional challenges. In a previous study [32], the improved complementary ensemble empirical mode decomposition with adaptive noise (ICEEMDAN) were first employed to decompose the SRN signals to calculate the IMFs. Removal of the noise-dominant IMFs was completed using the mutual information (MI) between the obtained. The mode number of VMD were only highlighted by these two methods without consideration of other parameters, such as the quadratic penalty term, which was the case in [19] On this basis, this paper proposes a new feature extraction method for SRN signals using improved.

Variational Mode Decomposition
Permutation Entropy
Reverse Weighted Permutation Entropy
The Proposed Feature Extraction Method for Ship-Radiated Noise
IVMD of Simulation Signals
Methods
Denoising of Simulation Signals
Analysis of PE Properties
IVMD of SRN Signals
Denoising of SRN Signals
Classification of SRN Samples
Findings
Conclusions
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