Machine learning (ML) has shown great promise in optimizing various aspects of the physical layer processing in wireless communication systems. In this paper, we use ML to learn jointly the transmit waveform and the frequency-domain receiver. In particular, we consider a scenario where the transmitter power amplifier is operating in a nonlinear manner, and ML is used to optimize the waveform to minimize the out-of-band emissions. The system also learns a constellation shape that facilitates pilotless detection by the simultaneously learned receiver. The simulation results show that such an end-to-end optimized system can communicate data more accurately and with less out-of-band emissions than conventional systems, thereby demonstrating the potential of ML in optimizing the air interface. To the best of our knowledge, there are no prior works considering the power amplifier induced emissions in an end-to-end learned system. These findings pave the way towards an ML-native air interface, which could be one of the building blocks of 6G.
翻译:机器学习( ML) 在优化无线通信系统物理层处理的各个方面方面显示了巨大的希望。 在本文中, 我们使用 ML 联合学习传输波形和频率域接收器。 特别是, 我们考虑的是发射器电源放大器以非线性方式运行的情景, 并且 ML 被用于优化波形以最大限度地减少波段外排放。 系统还学习了一个星座形状, 便于同时学习的接收器进行无引导的检测。 模拟结果表明, 这种端到端优化的系统可以比常规系统更精确地传输数据, 并且带外排放更少, 从而展示 ML 在优化空气界面方面的潜力。 据我们所知, 先前没有考虑到电源放大器在端到端学习的系统中引发排放的工程。 这些发现也为ML-native空气界面铺平了道路, 这可能是6G 的构件之一 。