This paper investigates a novel method for designing linear precoders with finite alphabet inputs based on autoencoders (AE) without the knowledge of the channel model. By model-free training of the autoencoder in a multiple-input multiple-output (MIMO) system, the proposed method can effectively solve the optimization problem to design the precoders that maximize the mutual information between the channel inputs and outputs, when only the input-output information of the channel can be observed. Specifically, the proposed method regards the receiver and the precoder as two independent parameterized functions in the AE and alternately trains them using the exact and approximated gradient, respectively. Compared with previous precoders design methods, it alleviates the limitation of requiring the explicit channel model to be known. Simulation results show that the proposed method works as well as those methods under known channel models in terms of maximizing the mutual information and reducing the bit error rate.
翻译:本文调查了在不了解频道模型的情况下,根据自动读数器(AE)设计具有有限字母输入的线性预言器的新颖方法。通过在多输入多输出产出系统(MIMO)中对自动编码器进行不使用模型的培训,拟议方法能够有效地解决设计优化问题,以设计最大限度地增加频道输入和输出之间相互信息的预言器,而只有能够观察到频道输入-输出信息。具体地说,拟议方法将接收器和预译器视为AE中两个独立的参数化功能,并使用精确和近似梯度分别对其进行其他培训。与以前的预译数设计方法相比,该方法减少了要求明确频道模型为人所知的限制。模拟结果显示,拟议的方法以及已知频道模型下的方法在最大限度地共享信息和降低位误率方面起作用。