论文标题

神经自我释放取消的硬件实施

Hardware Implementation of Neural Self-Interference Cancellation

论文作者

Kurzo, Yann, Kristensen, Andreas Toftegaard, Burg, Andreas, Balatsoukas-Stimming, Alexios

论文摘要

带内全双工系统可以在同一频段上同时传输和接收信息。但是,由于发射器向其接收器引起的强烈自我干扰,因此使用非线性数字自我干预取消是必不可少的。在这项工作中,我们描述了基于神经网络的非线性自我干扰(SI)Canceller的硬件体系结构,并将其与我们自己的常规基于多项式SI Canceller的硬件实现进行了比较。特别是,我们介绍了浅层神经网络Si canceller以及多项式SI canceller的实施结果。我们的结果表明,深神经网络癌症的硬件效率高达$ 312.8 $ MSAMPLES/s/mm $ $^2 $,能源效率高达$ 0.9 $ NJ/样品,这是$ 2.1 \ tims $ $ 2 \ $ 2 \ $ 2 \ timple $均优于polynomial Si Canceller。这些结果表明,从性能的角度来看,应用于通信的基于NN的方法不仅有用,而且也可能是降低实现复杂性的一种非常有效的手段。

In-band full-duplex systems can transmit and receive information simultaneously on the same frequency band. However, due to the strong self-interference caused by the transmitter to its own receiver, the use of non-linear digital self-interference cancellation is essential. In this work, we describe a hardware architecture for a neural network-based non-linear self-interference (SI) canceller and we compare it with our own hardware implementation of a conventional polynomial based SI canceller. In particular, we present implementation results for a shallow and a deep neural network SI canceller as well as for a polynomial SI canceller. Our results show that the deep neural network canceller achieves a hardware efficiency of up to $312.8$ Msamples/s/mm$^2$ and an energy efficiency of up to $0.9$ nJ/sample, which is $2.1\times$ and $2\times$ better than the polynomial SI canceller, respectively. These results show that NN-based methods applied to communications are not only useful from a performance perspective, but can also be a very effective means to reduce the implementation complexity.

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