Channel estimation and signal detection are essential steps to ensure the quality of end-to-end communication in orthogonal frequency-division multiplexing (OFDM) systems. In this paper, we develop a DDLSD approach, i.e., Data-driven Deep Learning for Signal Detection in OFDM systems. First, the OFDM system model is established. Then, the long short-term memory (LSTM) is introduced into the OFDM system model. Wireless channel data is generated through simulation, the preprocessed time series feature information is input into the LSTM to complete the offline training. Finally, the trained model is used for online recovery of transmitted signal. The difference between this scheme and existing OFDM receiver is that explicit estimated channel state information (CSI) is transformed into invisible estimated CSI, and the transmit symbol is directly restored. Simulation results show that the DDLSD scheme outperforms the existing traditional methods in terms of improving channel estimation and signal detection performance.
翻译:频道估计和信号探测是确保在正方位频率多路转换系统(OFDM)中端到端通信质量的必要步骤。 在本文中,我们开发DDLSD 方法,即由数据驱动的OFDM系统信号探测深学习。 首先,建立OFDM系统模型。然后,将长期短期内存(LSTM)引入OFDM系统模型。通过模拟生成无线频道数据,预处理的时间序列特征信息输入LSTM,以完成离线培训。最后,经过培训的模型用于在线恢复传输信号。这个方法与现有的DLSDM接收器之间的差别是,明确的估计频道状态信息(CSI)被转换为无形估计的CSI,传输符号被直接恢复。模拟结果表明DDLSD计划在改进频道估计和信号检测性能方面超越了现有的传统方法。