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Intelligent Spectrum Learning for Wireless Networks With Reconfigurable Intelligent Surfaces

机译:具有可重新配置智能曲面的无线网络智能频谱学习

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摘要

Reconfigurable intelligent surface (RIS) has become a promising technology for enhancing the reliability of wireless communications, since an RIS is capable of reflecting the desired signals through appropriate phase shifts. However, the intended signals that impinge upon an RIS are often mixed with interfering signals, which are usually dynamic and unknown. In particular, the received signal-to-interference-plus-noise ratio (SINR) may be degraded by the signals reflected from the RISs that originate from non-intended users. To tackle this issue, we introduce the concept of intelligent spectrum learning (ISL), which uses an appropriately trained convolutional neural network (CNN) at the RIS controller to help the RISs infer the interfering signals directly from the incident signals. By capitalizing on the ISL, a distributed control algorithm is proposed to maximize the received SINR by dynamically configuring the active/inactive binary status of the RIS elements. Simulation results validate the performance improvement offered by deep learning and demonstrate the superiority of the proposed ISL-aided approach.
机译:可重新配置的智能表面(RIS)已成为提高无线通信可靠性的有希望的技术,因为RIS能够通过适当的相移反映所需信号。然而,在RIS上冲击的预期信号通常与干扰信号混合,这通常是动态和未知的。特别地,接收的信号到干扰 - 加噪声比(SINR)可以由来自来自非预期用户的RIS反射的信号来降低。为了解决这个问题,我们介绍了智能频谱学习(ISL)的概念,它在RIS控制器处使用适当训练的卷积神经网络(CNN)来帮助RIS直接从入射信号推断干扰信号。通过大写ISL,提出了一种分布式控制算法,通过动态配置RIS元素的主动/无效二进制状态来最大化接收的SINR。仿真结果验证了深度学习提供的性能改进,并展示了所提出的ISL辅助方法的优越性。

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