Abstract

Extracting useful features from ship-radiated noise can improve the performance of passive sonar. The entropy feature is an important supplement to existing technologies for ship classification. However, the existing entropy feature extraction methods for ship-radiated noise are less reliable under noisy conditions because they lack noise reduction procedures or are single-scale based. In order to simultaneously solve these problems, a new feature extraction method is proposed based on improved complementary ensemble empirical mode decomposition with adaptive noise (ICEEMDAN), normalized mutual information (norMI), and multiscale improved permutation entropy (MIPE). Firstly, the ICEEMDAN is utilized to obtain a group of intrinsic mode functions (IMFs) from ship-radiated noise. The noise reduction process is then conducted by identifying and eliminating the noise IMFs. Next, the norMI and MIPE of the signal-dominant IMFs are calculated, respectively; and the norMI is used to weigh the corresponding MIPE result. The multi-scale entropy feature is finally defined as the sum of the weighted MIPE results. Experimental results show that the recognition rate of the proposed method achieves 90.67% and 83%, respectively, under noise free and 5 dB conditions, which is much higher than existing entropy feature extraction algorithms. Hence, the proposed method is more reliable and suitable for feature extraction of ship-radiated noise in practice.

Highlights

  • Ship-radiated noise contains abundant feature information of marine vessels, which can significantly improve the detection and recognition performance of passive sonar

  • In our previous study [22], we proposed a multiscale version of the IPE algorithm, termed multiscale improved permutation entropy (MIPE)

  • As the signal-to-noise ratio (SNR) decreases to 5 dB, the classification accuracy of the ICEEMDAN-normalized mutual information (norMI)-MIPE declines to 83%, while that of the MIPE and variational mode decomposition (VMD)-SIMF-fluctuation based dispersion (FDE) drops to 67.33%

Read more

Summary

Introduction

Ship-radiated noise contains abundant feature information of marine vessels, which can significantly improve the detection and recognition performance of passive sonar. The EEMD algorithm performs the EMD over an ensemble of the signal plus white Gaussian noise and obtains the final results by averaging the corresponding IMFs. Even if EEMD remarkably improve the reliability of EMD, it brings additional problems. FeatureInextraction ship-radiated noise is method for ship-radiated noise is proposed based on ICEEMDAN, norMI, and MIPE. After that the norMI and the MIPE of the signal-dominant IMFs are calculated. AfterFor that, are known as signal-dominant IMFs. In order to weigh the MIPE analysis results (see Section 2.4), the norMI of each signal-dominant IMF is defined as: 2.2. IMFs. After that, the remaining IMFs are known as signal-dominant IMFs. In order to weigh the MIPE analysis results (see Section 2.4), the norMI of each signal-dominant IMF is defined as: norMIi =. The MIPE result is obtained by computing the NIPEs with a varying scale factor

The Proposed Feature Extraction Method
Analysis
Analysis of Artificial Signal Based on MIPE
Experimental Results
Ship Classification
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call