IEEE Open Journal of the Communications Society (Jan 2023)

Design of an M-Ary DLCSK Communication System Using Deep Transfer Learning

  • Majid Mobini,
  • Marijan Herceg,
  • Georges Kaddoum

DOI
https://doi.org/10.1109/OJCOMS.2023.3312050
Journal volume & issue
Vol. 4
pp. 2318 – 2342

Abstract

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Conventional coherent chaos-based communication systems require synchronization of chaotic signals, which is still practically unattainable in a noisy environment. Moreover, in non-coherent schemes, a part of the bit duration is spent sending non-information-bearing reference samples, which deteriorates the Bit Error Rate performance (BER) of these systems. To tackle these problems, this paper designs an $M$ -ary Deep Learning Chaos Shift Keying $(M$ -ary DLCSK) system. The proposed receiver uses a Convolutional Neural Network (CNN)-based classifier that recovers $M$ -ary modulated data. The trained NN model grasps different chaotic maps, estimates channels, and classifies the received signals effectively. Moreover, we consider a Transfer Learning (TL) framework that enhances the noise performance and classification results. Due to the generalization capabilities of TL, the trained NN can work in different Signal-to-Noise Ratio (SNR) conditions without the need for re-training. We compare the BER performance, complexity, and bandwidth efficiency of the $M$ -ary DLCSK receiver with existing receivers. The results demonstrate that the $M$ -ary DLCSK receiver is the first practical system that achieves the theoretical BER performance of the coherent CSK systems under Rayleigh fading channels. Moreover, the proposed system provides a considerable performance advantage compared to the existing DL-based receivers under Rayleigh fading channels. For example, the BER performance of 8-ary DLCSK shows a gain of 0.1 over the Long Short-Term Memory (LSTM)-aided DNN systems at the target $E_{b}/N_{0}=14dB$ . These features make $M$ -ary DLCSK an attractive candidate for several applications, such as Massive Multiple-Input Multiple Output (MIMO), Vehicle-to-everything (V2X), Quantum, and optical communication systems.

Keywords