Abstract:
The chaotic communication system can be applied to enhance the security of communication between vehicles by utilizing the randomness of chaotic signals. In the tradition...Show MoreMetadata
Abstract:
The chaotic communication system can be applied to enhance the security of communication between vehicles by utilizing the randomness of chaotic signals. In the traditional multi-carrier chaotic communication system, its application scenarios are greatly limited by bandwidth constraints and channel noise interference. Thus, the paper proposes a novel approach to enhance the reliability and transmission rate of multi-carrier chaos shift keying (MC-DCSK) systems. The proposed multi-carrier chaos shift keying (DL-IM-MCDCSK) system utilizes deep learning (DL) and index mapping (IM) techniques to mitigate the information leakage risk associated with conventional MC-DCSK systems. The system operates without a reference signal and utilizes a two-dimensional reshaping (TDR) index mapping structure to equalize the chaotic signals in both frequency and time domains. In addition, an auxiliary deep neural network (DNN) classifier with an improved LeNet5 architecture is designed to assist the receiver in information demodulation. The DNN classifier mainly consists of two convolutional layers (CLs) for extracting features of chaotic signals and two fully connected layers (FCLs) for classifying information symbols. The offline-trained DNN classifier can significantly improve the bit error rate (BER) performance during information recovery without requiring conventional maximum likelihood estimation (MLE). The performance of the proposed system was evaluated through Monte Carlo simulations over additive white Gaussian noise (AWGN) and multipath Rayleigh fading channels (RFC). The simulations demonstrated that the system outperforms various conventional multi-carrier systems in terms of transmission rate, spectral efficiency, and reliability.
Published in: IEEE Transactions on Vehicular Technology ( Volume: 73, Issue: 7, July 2024)
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- IEEE Keywords
- Index Terms
- Deep Learning ,
- Communication Systems ,
- Chaotic System ,
- Chaotic Communication ,
- Chaotic Communication System ,
- Neural Network ,
- Maximum Likelihood Estimation ,
- Deep Neural Network ,
- Convolutional Layers ,
- White Noise ,
- Time Domain ,
- Frequency Domain ,
- Transmission Rate ,
- Additive Noise ,
- Fully-connected Layer ,
- Reference Signal ,
- Bit Error Rate ,
- Spectral Efficiency ,
- Index Function ,
- Bit Error ,
- Peak-to-average Power Ratio ,
- System In This Paper ,
- Batch Normalization Layer ,
- Signal Length ,
- Cybersecurity ,
- Max-pooling Layer ,
- Two-dimensional Matrix ,
- Matrix In Fig ,
- Feature Maps ,
- Convolution Kernel
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Deep Learning ,
- Communication Systems ,
- Chaotic System ,
- Chaotic Communication ,
- Chaotic Communication System ,
- Neural Network ,
- Maximum Likelihood Estimation ,
- Deep Neural Network ,
- Convolutional Layers ,
- White Noise ,
- Time Domain ,
- Frequency Domain ,
- Transmission Rate ,
- Additive Noise ,
- Fully-connected Layer ,
- Reference Signal ,
- Bit Error Rate ,
- Spectral Efficiency ,
- Index Function ,
- Bit Error ,
- Peak-to-average Power Ratio ,
- System In This Paper ,
- Batch Normalization Layer ,
- Signal Length ,
- Cybersecurity ,
- Max-pooling Layer ,
- Two-dimensional Matrix ,
- Matrix In Fig ,
- Feature Maps ,
- Convolution Kernel
- Author Keywords