Ultra-reliable short-packet communication is a major challenge in future wireless networks with critical applications. To achieve ultra-reliable communications beyond 99.999%, this paper envisions a new interaction-based communication paradigm that exploits the feedback from the receiver for the sixth generation (6G) communication networks and beyond. We present AttentionCode, a new class of feedback codes leveraging deep learning (DL) technologies. The underpinnings of AttentionCode are three architectural innovations: AttentionNet, input restructuring, and adaptation to fading channels, accompanied by several training methods, including large-batch training, distributed learning, look-ahead optimizer, training-test signal-to-noise ratio (SNR) mismatch, and curriculum learning. The training methods can potentially be generalized to other wireless communication applications with machine learning. Numerical experiments verify that AttentionCode establishes a new state of the art among all DL-based feedback codes in both additive white Gaussian noise (AWGN) channels and fading channels. In AWGN channels with noiseless feedback, for example, AttentionCode achieves a block error rate (BLER) of $10^{-7}$ when the forward channel SNR is 0dB for a block size of 50 bits, demonstrating the potential of AttentionCode to provide ultra-reliable short-packet communications for 6G.
翻译:超可信任短片通信是未来具有关键应用程序的无线网络的一大挑战。为了实现99.999 % 以上的超可靠通信,本文件设想了一个新的基于互动的通信模式,利用第六代(6G)通信网络及以后的接收者的反馈,利用第六代(6G)通信网络及以后的通信网络的反馈。我们提出了“注意守则”,这是利用深层次学习(DL)技术的新型反馈代码。“注意守则”的基础是三个建筑创新:注意力网、投入重组和适应逐渐消失的渠道,同时辅以若干培训方法,包括大型批次培训、分布式学习、外观优化器、培训测试信号对噪音比率(SNR)不匹配和课程学习。培训方法有可能推广到其他无线通信应用程序,而机器学习。“注意守则”在所有基于DL的反馈代码中,在添加白高音频道(AWGN)频道和淡化的频道中,在有无噪音反馈的情况下,“注意焦点”网络在S-七号频道前方显示S-B的50号区块潜力时,提供S-DLRUUUUUU的10的快速通信。