SimNet: OFDM信道估计的简化深度神经网络

Yicheng Bao, Zeyu Tan, Haifeng Sun, Zhikang Jiang
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引用次数: 4

摘要

本文提出了一种简化的深度神经网络,可用于OFDM系统中的信道估计和信号检测,降低了复杂度。具体来说,引入深度学习的方法来优化OFDM系统的信道估计模块。通过构建深度神经网络,分别以10dB和25dB的信噪比训练参数,可以在更大的信噪比范围内优化信道估计结果。此外,还研究了训练模型大小对信道估计和信号检测的影响。与其他人工智能辅助OFDM接收机相比,本文提出的深度神经网络具有训练时间短、结构简单等优点。仿真结果表明,将所提出的深度神经网络和训练方法应用于OFDM信道估计,可以获得较小的均方误差和较低的误码率,特别是在有裁剪失真和宽信噪比范围的情况下。
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SimNet: Simplified Deep Neural Networks for OFDM Channel Estimation
In this paper, a simplified deep neural network is proposed, which can be used for channel estimation and signal detection in OFDM system and reduce complexity. To be specific, the method of deep learning is introduced to optimize the channel estimation module of OFDM system. By building deep neural networks and training parameters at the signal-to-noise ratio of 10dB and 25dB, respectively, the channel estimation results can be optimized at a wider range of signal-to-noise ratio. In addition, the influence of training model size for channel estimation and signal detection is also researched. Compared with some other artificial intelligence aided OFDM receivers, proposed deep neural networks has shorter training time and simpler architecture. The simulation results show that by using proposed deep neural networks and training method in OFDM channel estimation, smaller mean square error and lower bit error rate can be obtained, especially in the case of clipping distortion and wide range of signal-to-noise ratio.
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