Abstract

Due to the complexity and variability of underwater acoustic channels, ship-radiated noise (SRN) detected using the passive sonar is prone to be distorted. The entropy-based feature extraction method can improve this situation, to some extent. However, it is impractical to directly extract the entropy feature for the detected SRN signals. In addition, the existing conventional methods have a lack of suitable de-noising processing under the presence of marine environmental noise. To this end, this paper proposes a novel feature extraction method based on enhanced variational mode decomposition (EVMD), normalized correlation coefficient (norCC), permutation entropy (PE), and the particle swarm optimization-based support vector machine (PSO-SVM). Firstly, EVMD is utilized to obtain a group of intrinsic mode functions (IMFs) from the SRN signals. The noise-dominant IMFs are then eliminated by a de-noising processing prior to PE calculation. Next, the correlation coefficient between each signal-dominant IMF and the raw signal and PE of each signal-dominant IMF are calculated, respectively. After this, the norCC is used to weigh the corresponding PE and the sum of these weighted PE is considered as the final feature parameter. Finally, the feature vectors are fed into the PSO-SVM multi-class classifier to classify the SRN samples. The experimental results demonstrate that the recognition rate of the proposed methodology is up to 100%, which is much higher than the currently existing methods. Hence, the method proposed in this paper is more suitable for the feature extraction of SRN signals.

Highlights

  • Ships play an important role in both the military and civilian fields

  • In the enhanced variational mode decomposition (EVMD) algorithm, the first few intrinsic mode functions (IMFs) carry rich amplitude information related to the raw signal, and the difference between the last few high-frequency components or noise gradually decreases, and they should not be included in the entropy feature analysis

  • In order to extract features of ship-radiated noise, a novel feature extraction approach based on EVMD, normalized correlation coefficient (norCC), and permutation entropy (PE) is proposed in this paper

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Summary

Introduction

Ships play an important role in both the military and civilian fields. The noise level and directivity of ships vary according to the type of ships. The empirical mode decomposition (EMD) method is considered to be a major breakthrough in linear and steady-state spectrum analysis based on FT in 2000 This method is based on the time scale characteristics of the signal itself, without the need to set any basis function. EMD, EEMD, and VMD can decompose signals into a group of intrinsic mode functions (IMFs) that can reflect the local characteristics of the raw signal from different time scales. In [29,30], the mode number K of VMD was calculated referring to the decomposition results of EMD, which will undoubtedly affect the accuracy of VMD decomposition In both studies, only one signal-dominant IMF was used for feature extraction without considering the others.

Variational Mode Decomposition
Correlation Coefficient and Normalized Correlation Coefficient
Permutation Entropy
Weighted Permutation Entropy
The Proposed Feature Extraction Method
Analysis of Simulated Signals Using EVMD
As shown
The decomposition layers corresponding to theare distribution intrinsic
Combining
Feature
De-Noising
Classification of Ship-Radiated Noise
Findings
Conclusions
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