幅值噪声移位键控扩频信号的深度学习解调

Mykola Kozlenko, Ihor Lazarovych, Valerii Tkachuk, M. Kuz
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引用次数: 0

摘要

基于随机、混沌或噪声载波的数字通信技术是众所周知的,并成功地应用于许多应用中。简单的开关或移幅噪声键控调制方案是最受欢迎的。在本文1中,我们提出使用基于人工密集神经网络和深度学习方法的分类模型对振幅噪声移位键控扩频信号进行软件定义解调。处理此类信号的主要挑战是信号和干扰的统计特性非常相似。研究的目的是为了证明所提出的技术的可行性,并获得抗噪指标。研究方法是对人工合成数据集上预训练的深度学习解调模型进行评估。该数据集包含带有加性高斯白干扰的噪声载波信号的自动标记混合物。数据集中的平均信噪比范围从-30 dB到0 dB。利用仿真结果对解调性能进行了评价。我们用误码率和误码率来表示解调性能,并将结果与其他已知方法进行比较。本文报道的噪声抗扰度比“功率接收”法的抗扰度至少大3.5 dB。此外,我们评估了时间复杂度,并验证了实时处理能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Demodulation of Amplitude Noise Shift Keying Spread Spectrum Signals
Digital communications techniques based on random, chaotic, or noisy carriers are well known and successfully used in a number of applications. Simple on-off or amplitude shift noise keying modulation schemes are among the most popular. In this paper 1, we propose to use a classification model based on an artificial dense neural network and a deep learning approach for software-defined demodulation of amplitude noise shift keying spread spectrum signals. The main challenge with processing of such signals is that statistical properties of signal and interference are very similar. The aim of the research is to proof the feasibility of the proposed technique and to obtain the noise-immunity metrics. The methodology of the research is to evaluate the deep learning demodulation model pre-trained on the artificially synthesized dataset. The dataset contains the automatically labeled mixtures of noise carrier signals with additive white Gaussian interferences. The average signal-to-noise ratios in the dataset range from -30 dB to 0 dB. The numerical results from simulations are used to evaluate the demodulation performance. We present the demodulation performance as symbol and bit error rates and compare results with other well-known approaches. The paper reports noise immunity greater than immunity of “power reception” method at least for 3.5 dB. In addition, we assessed the time complexity and proved real-time processing capability.
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