超大规模智能反射面无线通信

Chao Feng, Haiquan Lu, Yong Zeng, Shi Jin, Rui Zhang
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引用次数: 17

摘要

智能反射面(IRS)是一种很有前途的无线通信技术,由于它具有设计无线电环境的潜在能力。然而,在实践中,只有当无源IRS具有足够大的尺寸时,才能实现这种设想的效益,而传统的基于均匀平面波(UPW)的通道模型可能会变得不准确。在本文中,我们对具有超大规模IRS (xml -IRS)的无线通信进行了新的信道建模和性能分析。通过考虑信号振幅和投影孔径在不同反射元件上的变化,我们推导了基于一般均匀平面阵列(UPA)的XL-IRS的接收信噪比(SNR)的下界和上界。我们的研究结果表明,与传统UPW模型中随着反射元素M数量的增加而二次成比例不同,在更实际适用的非UPW模型中,信噪比随着M的增加而增加,但收益递减,最终趋于饱和。为了获得更多的见解,我们进一步研究了基于均匀线性阵列(ULA)的xml -IRS的特殊情况,推导了IRS大小和发射机/接收机位置的封闭形式信噪比表达式。结果表明,信噪比主要取决于发射/接收位置与IRS形成的两个几何角度,以及IRS的边界点。数值结果验证了我们的分析,并证明了适当的信道建模对xml - irs辅助无线通信的重要性。
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Wireless Communication with Extremely Large-Scale Intelligent Reflecting Surface
Intelligent reflecting surface (IRS) is a promising technology for wireless communications, thanks to its potential capability to engineer the radio environment. However, in practice, such an envisaged benefit is attainable only when the passive IRS is of a sufficiently large size, for which the conventional uniform plane wave (UPW)-based channel model may become inaccurate. In this paper, we pursue a new channel modelling and performance analysis for wireless communications with extremely large-scale IRS (XL-IRS). By taking into account the variations in signal’s amplitude and projected aperture across different reflecting elements, we derive both lower- and upper-bounds of the received signal-to-noise ratio (SNR) for the general uniform planar array (UPA)-based XL-IRS. Our results reveal that, instead of scaling quadratically with the increased number of reflecting elements M as in the conventional UPW model, the SNR under the more practically applicable non-UPW model increases with M only with a diminishing return and gets saturated eventually. To gain more insights, we further study the special case of uniform linear array (ULA)-based XL-IRS, for which a closed-form SNR expression in terms of the IRS size and transmitter/receiver location is derived. This result shows that the SNR mainly depends on the two geometric angles formed by the transmitter/receiver locations with the IRS, as well as the boundary points of the IRS. Numerical results validate our analysis and demonstrate the importance of proper channel modelling for wireless communications aided by XL-IRS.
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