Machine Learning Based Biomimetic Underwater Covert Acoustic Communication Method Using Dolphin Whistle Contours

  • Ahn, Jongmin
  • Lee, Hojun
  • Kim, Yongcheol
  • Kim, Wanjin
  • Chung, Jaehak
Citations

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초록

For underwater acoustic covert communications, biomimetic covert communications have been developed using dolphin whistles. The conventional biomimetic covert communication methods transmit slightly different signal patterns from real dolphin whistles, which results in a low degree of mimic (DoM). In this paper, we propose a novel biomimetic communication method that preserves the large DoM with a low bit error rate (BER). For the transmission, the proposed method utilizes the various contours of real dolphin whistles with the link information among consecutive whistles, and the proposed receiver uses machine learning based whistle detectors with the aid of the link information. Computer simulations and practical ocean experiments were executed to demonstrate the better BER performance of the proposed method. Ocean experiments demonstrate that the BER of the proposed method was 0.002, while the BER of the conventional Deep Neural Network (DNN) based detector showed 0.36.

키워드

secure LPDLPI communicationmodulationsignal processingbio-mimeticAUTOMATIC DETECTIONSPREAD-SPECTRUMLOW PROBABILITYCLASSIFICATIONALGORITHMFREQUENCY
제목
Machine Learning Based Biomimetic Underwater Covert Acoustic Communication Method Using Dolphin Whistle Contours
저자
Ahn, JongminLee, HojunKim, YongcheolKim, WanjinChung, Jaehak
DOI
10.3390/s20216166
발행일
2020-11
유형
Article
저널명
Sensors
20
21