Non-orthogonal communications are expected to play a key role in future wireless systems. In downlink transmissions, the data symbols are broadcast from a base station to different users, which are superimposed with different power to facilitate high-integrity detection using successive interference cancellation (SIC). However, SIC requires accurate knowledge of both the channel model and channel state information (CSI), which may be difficult to acquire. We propose a deep learningaided SIC detector termed SICNet, which replaces the interference cancellation blocks of SIC by deep neural networks (DNNs). Explicitly, SICNet jointly trains its internal DNN-aided blocks for inferring the soft information representing the interfering symbols in a data-driven fashion, rather than using hard-decision decoders as in classical SIC. As a result, SICNet reliably detects the superimposed symbols in the downlink of non-orthogonal systems without requiring any prior knowledge of the channel model, while being less sensitive to CSI uncertainty than its model-based counterpart. SICNet is also robust to changes in the number of users and to their power allocation. Furthermore, SICNet learns to produce accurate soft outputs, which facilitates improved soft-input error correction decoding compared to model-based SIC. Finally, we propose an online training method for SICNet under block fading, which exploits the channel decoding for accurately recovering online data labels for retraining, hence, allowing it to smoothly track the fading envelope without requiring dedicated pilots. Our numerical results show that SICNet approaches the performance of classical SIC under perfect CSI, while outperforming it under realistic CSI uncertainty.
翻译:在未来无线系统中,预计非口头通信将在未来无线通信中发挥关键作用。 在下行传输中,数据符号将从一个基站向不同的用户广播,而数据符号是用不同的力量叠加起来的,以便通过连续的干扰取消(SIC)来促进高完整性检测。然而,SIC需要准确了解频道模型和频道国家信息(CSI),这可能难以获得。我们建议使用一个深层次的学习辅助SIC探测器,用深层的神经网络网络网络网络取代SIC的干扰取消块。 很明显,SICNet共同培训其内部的DNN辅助组件,以便用数据驱动的方式推断代表干扰符号的软信息,而不是使用经典SICS的硬决定解码器。因此,SICNet可靠地检测非垂直连接系统的下端连接中的超级符号,而不需要事先对频道模型的任何了解,同时对基于模型的CISIC不确定性不甚敏感。 SIC网络内部的精确度调整中,让我们的SIC的内向下运行变化变化变化,在SISISB下,最后我们进行精确的SIC的在线数据转换,同时学习SISIC的轨道,我们正在逐渐的运行的运行,然后进行它的运行的SIC。