Orthogonal frequency-division multiplexing (OFDM) is widely used in modern wireless networks thanks to its efficient handling of multipath environment. However, it suffers from a poor peak-to-average power ratio (PAPR) which requires a large power backoff, degrading the power amplifier (PA) efficiency. In this work, we propose to use a neural network (NN) at the transmitter to learn a high-dimensional modulation scheme allowing to control the PAPR and adjacent channel leakage ratio (ACLR). On the receiver side, a NN-based receiver is implemented to carry out demapping of the transmitted bits. The two NNs operate on top of OFDM, and are jointly optimized in and end-to-end manner using a training algorithm that enforces constraints on the PAPR and ACLR. Simulation results show that the learned waveforms enable higher information rates than a tone reservation baseline, while satisfying predefined PAPR and ACLR targets.
翻译:由于对多路环境的高效处理,在现代无线网络中广泛使用矫形频率分流多氧化法(OFDM),但是,它受到低峰对平均电率的困扰,需要大量回压,降低电力放大器(PA)的效率。在这项工作中,我们提议在发射机上使用神经网络(NN)学习高维调制,以控制PAPR和相邻通道渗漏率(ACLR)。在接收器方面,一个基于NN的接收器用于对传输的位子进行测量。两个NPM在DM的顶部操作,并使用对PAPR和ACLR施加限制的培训算法,在终端对终端和终端进行联合优化。模拟结果表明,所学的波形使信息率高于音调基准,同时满足了预先确定的PPR和ACLR的目标。