Abstract

Noise reduction of underwater acoustic signals is of great significance in the fields of military and ocean exploration. Based on the adaptive decomposition characteristic of uniform phase empirical mode decomposition (UPEMD), a noise reduction method for underwater acoustic signals is proposed, which combines amplitude-aware permutation entropy (AAPE) and Pearson correlation coefficient (PCC). UPEMD is a recently proposed improved empirical mode decomposition (EMD) algorithm that alleviates the mode splitting and residual noise effects of EMD. AAPE is a tool to quantify the information content of nonlinear time series. Unlike permutation entropy (PE), AAPE can reflect the amplitude information on time series. Firstly, the original signal is decomposed into a series of intrinsic mode functions (IMFs) by UPEMD. The AAPE of each IMF is calculated. The modes are separated into high-frequency IMFs and low-frequency IMFs, and all low-frequency IMFs are determined as useful IMFs (UIMFs). Then, the PCC between the high-frequency IMF with the smallest AAPE and the original signal is calculated. If PCC is greater than the threshold, the IMF is also determined as a UIMF. Finally, all UIMFs are reconstructed and the denoised signal is obtained. Chaotic signals with different signal-to-noise ratios (SNRs) are used for denoising experiments. Compared with EMD and extreme-point symmetric mode decomposition (ESMD), the proposed method has higher SNR and smaller root mean square error (RMSE). The proposed method is applied to noise reduction of real underwater acoustic signals. The results show that the method can further eliminate noise and the chaotic attractors are smoother and clearer.

Highlights

  • The processing and analysis of underwater acoustic signals play a significant role in the area of military and marine exploration

  • A new noise reduction method for underwater acoustic signals based on uniform phase empirical mode decomposition (UPEMD), aware permutation entropy (AAPE), and Pearson correlation coefficient (PCC) is proposed

  • The proposed method uses UPEMD to decompose the original signal, distinguishes the high-frequency and low-frequency intrinsic mode functions (IMFs) by AAPE, judges whether the high-frequency IMF with the smallest AAPE is a useful IMFs (UIMFs) according to PCC, and reconstructs all

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Summary

Introduction

The processing and analysis of underwater acoustic signals play a significant role in the area of military and marine exploration. Empirical mode decomposition (EMD) [8] provides a new idea of underwater acoustic signals processing. It can decompose the original signal into a series of intrinsic mode functions (IMFs). Wang et al proposed the uniform phase empirical mode decomposition (UPEMD) algorithm [15], which selected sinusoidal functions with uniform phase distribution as perturbed signals, and significantly alleviated the mode splitting and residual noise effects of MS-EMD and EEMD simultaneously. Li et al [31] proposed a noise reduction method of underwater acoustic signals based on CEEMDAN, mutual information, PE and CWT. A noise reduction method of underwater acoustic signals based on UPEMD, AAPE and Pearson correlation coefficient (PCC) is proposed.

Basic Theory
The Multi-Level UPEMD
The Proposed Noise Reduction Method
Evaluation
3.2.Evaluation
Correlation Dimension
The Chaotic Signal Denoising Experiment
Choice the Threshold of AAPE
Method
Denoising for Noisy Chaotic Signal
The Underwater AcousticTable
Data Collection
Denoising for Underwater Acoustic Signals
The time-domainwaveform waveform before after noise reduction for the for
The phase diagram before and after noise reduction phase diagram diagram
Conclusions

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