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Deep Learning Based Reliable and Intelligent Chaotic OFDM Communications for Cognitive Radio System

机译:认知无线电系统中基于深度学习的可靠智能混沌OFDM通信

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In this paper, we present a deep learning based modulation scheme for chaotic orthogonal frequency division multiplex (OFDM) transmissions over non-contiguous frequency bands of cognitive radio systems. In cognitive radio systems, the users access the spectrum bands dynamically and the corresponding channel characteristics also changes. Different from the traditional modulation scheme that uses the fixed mapping pattern to modulate the signals, we propose to apply the deep learning method to build up the constellations intelligently. Based on the autoencoder architecture of deep learning, we construct the constellation mapping and demapping patterns adaptively with the aim to minimize the bit error rate (BER) over the dynamically changing non-contiguous channels. Simulation results over additive white Gaussian noise (AWGN) channel and Rayleigh fading channel show that our proposed system achieves better BER performances for legitimate receivers when compared with the conventional modulation schemes. In addition, the presented scheme remains the high security performance thanks to the usage of the chaotic sequences.
机译:在本文中,我们提出了一种基于深度学习的调制方案,用于认知无线电系统的非连续频带上的混沌正交频分复用(OFDM)传输。在认知无线电系统中,用户动态访问频谱带,并且相应的信道特性也会改变。与使用固定映射模式对信号进行调制的传统调制方案不同,我们建议应用深度学习方法来智能地构建星座图。基于深度学习的自动编码器体系结构,我们自适应地构建星座映射和解映射模式,以最小化动态变化的非连续信道上的误码率(BER)。在加性高斯白噪声(AWGN)信道和瑞利衰落信道上的仿真结果表明,与常规调制方案相比,我们提出的系统为合法接收机提供了更好的BER性能。另外,由于使用了混沌序列,所提出的方案仍然具有很高的安全性能。

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