Abstract

Automatic modulation classification (AMC) is challenging for short burst underwater acoustic (UWA) communication signals. Difficulties include but are not limited to the poor UWA channels, impulsive noise, and data scarcity. To address these problems, a method based on hybrid neural networks (HNNs) is proposed in this paper. First, an impulsive noise preprocessor is adopted to mitigate the impulse in the received signals. Subsequently, an HNN consisting of an attention aided convolutional neural network (Att-CNN) and a sparse auto-encoder is built to extract features from the temporal waveforms and square spectra of the preprocessed signals after burst detection. Finally, a late fusion is made to combine the prediction results of the two sub-networks. To overcome the variable signal duration relative to the fixed input size of the Att-CNN, a data-reusing approach is proposed to perform dimension preprocessing on the waveforms. Moreover, a transfer learning strategy is introduced to resolve the issue of insufficient training data from the testing channel. The results of simulation experiments and practical signal tests both demonstrate that the proposed method is robust against UWA channels and ambient noise. Our approach significantly outperforms existing deep learning-based methods in dealing with short and weak signal bursts, while requiring less training data from the testing channel.

Highlights

  • Automatic modulation classification (AMC) plays an important role in the attribute identification and information recovery of received communication signals

  • Conventional AMC for underwater acoustic (UWA) communication signals is mostly based on pattern recognition approaches

  • To improve the recognition performance for short burst UWA communication signals in complex marine environments, the idea of multimodal deep learning (DL) [24]–[28] is introduced and a novel hybrid neural networks (HNNs)-based AMC method is proposed in this paper

Read more

Summary

INTRODUCTION

Automatic modulation classification (AMC) plays an important role in the attribute identification and information recovery of received communication signals. Jiang et al [21] and Li et al [22] respectively trained an SAE and a CNN with the power spectra of received signals and the spectra obtained after square or quartic transformation Their approaches could effectively recognize most common UWA communication signals. To improve the recognition performance for short burst UWA communication signals in complex marine environments, the idea of multimodal DL [24]–[28] is introduced and a novel hybrid neural networks (HNNs)-based AMC method is proposed in this paper. The results of simulation experiments and practical signal tests both demonstrate that the proposed method is robust against UWA channels and ambient noise It can effectively recognize common UWA communication signals including PSK, frequency shift keying (FSK), orthogonal frequency division multiplexing (OFDM), and sweep spread carrier (S2C) [29] signals.

SYSTEM MODEL AND PROPOSED METHOD
PROPOSED AMC MODEL
SIMULATION EXPERIMENTS AND DISCUSSION
PRACTICAL SIGNAL TESTS
CONCLUSION
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