Initial Analysis of Dynamic Panel Activation for Large Intelligent Surfaces

N. Mazloum, O. Edfors
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Abstract

Large intelligent surfaces (LIS) have the potential to be the beyond-massive-MIMO solution, even further improving spectral efficiency, coverage, reliability and other performance measures. They also open up for entirely new services, such as precise localization, environment sensing, and wireless energy transfer. By constructing larger surfaces as a grid of panels, we can activate and deactivate these panels depending on their individual contributions to an overall service-defined performance measure and thereby use as little resources as possible. In this paper, we take initial steps in this direction by analyzing how surfaces built as grids of panels, of which only a fraction are activated, compare. We present three types of results, for an example environment: i) received power gain when allowing dynamic activation over a large surface rather than a single central located panel, ii) the required number of activated antenna elements to reach a minimum received power for different panel sizes, and iii) the locations of activated surface areas.
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大型智能曲面动态面板激活的初步分析
大型智能表面(LIS)具有超越大规模mimo解决方案的潜力,甚至可以进一步提高频谱效率、覆盖范围、可靠性和其他性能指标。它们还开辟了全新的服务,如精确定位、环境传感和无线能量传输。通过将较大的表面构建为面板网格,我们可以根据这些面板对整体服务定义性能的贡献来激活和停用这些面板,从而尽可能少地使用资源。在本文中,我们通过分析作为面板网格构建的表面(其中只有一小部分被激活)如何比较,在这个方向上迈出了初步的步骤。我们给出了三种类型的结果,例如环境:i)允许在大表面而不是单个位于中央的面板上动态激活时的接收功率增益,ii)在不同面板尺寸下达到最小接收功率所需的激活天线元件数量,以及iii)激活表面积的位置。
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