The (inverse) discrete Fourier transform (DFT/IDFT) is often perceived as essential to orthogonal frequency-division multiplexing (OFDM) systems. In this paper, a deep complex-valued convolutional network (DCCN) is developed to recover bits from time-domain OFDM signals without relying on any explicit DFT/IDFT. The DCCN can exploit the cyclic prefix (CP) of OFDM waveform for increased SNR by replacing DFT with a learned linear transform, and has the advantage of combining CP-exploitation, channel estimation, and intersymbol interference (ISI) mitigation, with a complexity of $\mathcal{O}(N^2)$. Numerical tests show that the DCCN receiver can outperform the legacy channel estimators based on ideal and approximate linear minimum mean square error (LMMSE) estimation and a conventional CP-enhanced technique in Rayleigh fading channels with various delay spreads and mobility. The proposed approach benefits from the expressive nature of complex-valued neural networks, which, however, currently lack support from popular deep learning platforms. In response, guidelines of exact and approximate implementations of a complex-valued convolutional layer are provided for the design and analysis of convolutional networks for wireless PHY. Furthermore, a suite of novel training techniques are developed to improve the convergence and generalizability of the trained model in fading channels. This work demonstrates the capability of deep neural networks in processing OFDM waveforms and the results suggest that the FFT processor in OFDM receivers can be replaced by a hardware AI accelerator.
翻译:Fleier 离散变异(反向) Fleier (DFT/IDFT) 通常被视为对正方位频率调异多功能系统(OFDM)至关重要。 在本文中,开发了一个深重复杂价值的变速网络(DCCN),以便在不依赖任何明确的 DFT/IDFT 的情况下从时空DM 信号中回收DM 信号的比特。 DCCN可以利用DM 波形的周期前缀(CP) 来增加 SNR, 代之以知识化的线性变异, 并具有将CP- 探索、 频道估测和 间相干扰(ISI) 的深度干扰(ISI) 整合起来的深层次变速网络。 数字测试显示, DCCN 接收器可以在理想和近线性最低正方平方位错误(LMMSE) 估计的基础上, 利用常规的CP强化技术来增加 SNRR, 以各种延展延展和移动的方式。 拟议的方法是从复杂值变现的变现变现的变现变现变现变现的变现变现变现的变现网络的变现过程和变现的变现过程的变现, 和变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变的变现的变的变现的变的变的变的变现的变现的变现的变现的变现的变现和变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变的变的变现的变现的变现的变现和变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现的变现