论文标题

波带全双工系统中的自我干预管理

Self Interference Management in In-Band Full-Duplex Systems

论文作者

Mohammadi, Hossein, Sabbaghian, Maryam, Marojevic, Vuk

论文摘要

无线系统的演变导致对射频频谱的需求不断增加。为了解决这个问题,一项引起很多关注的技术是波段全双工(IBFD)。对IBFD系统的兴趣源于其同时传输和接收数据频率同时传输数据的能力。从发射器到相处的接收器取消自我干扰(SI)在系统性能中起关键作用。 SI取消(SIC)方法有两种类型,即被动和主动。在这项研究中,重点是在数字领域中的主动取消,尤其是SIC。在直接和反向散射的SI中,对前者进行了很长时间的研究。因此,在这项研究中考虑了反向散射,并分析了两种SIC方法。第一个通过波束形成实现了SIC。这需要知道接收的Si的角度将光束空间置于此方向上。第二种方法通过使用人工神经网络(ANN)来消除SI。使用ANN,无需知道SI的方向。神经网络经过飞行员的训练,导致网络能够将所需信号与接收器的SI分开。贝叶斯神经网络显示了权重的重要性,并分配了一个参数,该参数促进了忽略较少重要的参数。通过比较模拟,我们证明了基于ANN的SIC作为两种波束成型方法的同等位错误率性能。

The evolution of wireless systems has led to a continuous increase in the demand for radio frequency spectrum. To address this issue, a technology that has received a lot of attention is In-Band Full-Duplex (IBFD). The interest in IBFD systems stems from its capability to simultaneously transmit and receive data in the same frequency. Cancelling the self interference (SI) from the transmitter to the collocated receiver plays a pivotal role in the performance of the system. There are two types of SI cancellation (SIC) approaches, passive and active. In this research, the focus is on active cancellation and, in particular, SIC in the digital domain. Among the direct and backscattered SI, the former has been studied for a long time; therefore, the backscatter is considered in this research and two SIC approaches are analyzed. The first achieves SIC through beamforming. This requires knowing the angle of the received SI to put the beam null-space in this direction. The second method removes SI by employing an Artificial Neural Networks (ANNs). Using an ANN, there is no need to know the direction of the SI. The neural network is trained with pilots which results in the network being able to separate the desired signal from the SI at the receiver. Bayesian Neural Networks show the importance of the weights and assign a parameter that facilitates ignoring the less significant ones. Through comparative simulations we demonstrate that the ANN-based SIC achieves equivalent bit error rate performance as two beamforming methods.

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