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Learning to Beamform for Intelligent Reflecting Surface with Implicit Channel Estimate

机译:学习智能反射表面的敏感性频道估计

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Intelligent reflecting surface (IRS), consisting of massive number of tunable reflective elements, is capable of boosting spectral efficiency between a base station (BS) and a user by intelligently tuning the phase shifters at the IRS according to the channel state information (CSI). However, due to the large number of passive elements which cannot transmit and receive signals, acquisition of CSI for IRS is a practically challenging task. Instead of using the received pilots to estimate the channels explicitly, this paper shows that it is possible to learn the effective IRS reflection pattern and beamforming at the BS directly based on the received pilots. This is achieved by parameterizing the mapping from the received pilots to the optimal configuration of IRS and the beamforming matrix at the BS by properly tuning a deep neural network using unsupervised training. Simulation results indicate that the proposed neural network can efficiently learn to maximize the system sum rate from much fewer received pilots as compared to the traditional channel estimation based solutions.
机译:由大量的可调谐反射元件组成的智能反射表面(IRS)能够通过根据信道状态信息(CSI)智能地调谐IRS处的相移器来升高基站(BS)和用户之间的频谱效率。然而,由于无法传输和接收信号的大量无源元件,获取IRS的CSI是实际上具有挑战性的任务。该论文表示可以基于所接收的导频直接在BS中直接学习有效的IRS反射模式并在BS中学习有效的IRS反射模式和波束成形。这是通过将来自所接收的导频的映射与BS的IRS和波束成形矩阵的最佳配置进行参数来实现,通过使用无监督的训练正确调整深神经网络。模拟结果表明,与传统信道估计的解决方案相比,所提出的神经网络可以有效地学会最大化从更少的接收飞行员的系统和速率。

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