Due to the rapid development of autonomous driving, the Internet of Things and streaming services, modern communication systems have to cope with varying channel conditions and a steadily rising number of users and devices. This, and the still rising bandwidth demands, can only be met by intelligent network automation, which requires highly flexible and blind transceiver algorithms. To tackle those challenges, we propose a novel adaptive equalization scheme, which exploits the prosperous advances in deep learning by training an equalizer with an adversarial network. The learning is only based on the statistics of the transmit signal, so it is blind regarding the actual transmit symbols and agnostic to the channel model. The proposed approach is independent of the equalizer topology and enables the application of powerful neural network based equalizers. In this work, we prove this concept in simulations of different -- both linear and nonlinear -- transmission channels and demonstrate the capability of the proposed blind learning scheme to approach the performance of non-blind equalizers. Furthermore, we provide a theoretical perspective and highlight the challenges of the approach.
翻译:由于自主驾驶、物联网和流传服务的迅速发展,现代通信系统必须应对不同的频道条件和不断增加的用户和装置数量。这以及仍在不断上升的带宽需求只能通过智能网络自动化来满足,而智能网络自动化需要高度灵活和盲目收发器算法。为了应对这些挑战,我们提议一个新的适应性均衡计划,利用深层次学习的繁荣进步,培训一个与对立网络的对称器。学习仅以传输信号的统计为基础,因此在实际传输符号和对频道模型的不可知性方面是盲目的。拟议的方法独立于平衡器表层学,能够应用以均衡器为基础的强大的神经网络。在这项工作中,我们在模拟不同 -- -- 线性和非线性 -- -- 传输渠道中证明了这一概念,并展示了拟议的盲人学习计划处理非盲性平等器表现的能力。此外,我们提供了理论视角,并突出了该方法的挑战。