Wirelessly Powered Over-the-Air Computation for High-Mobility Sensing

Xiaoyang Li, Guangxu Zhu, Yi Gong, Kaibin Huang
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引用次数: 5

Abstract

For a dense sensor network in a smart city, efficient data aggregation can be realized by deploying readers mounted on unmanned aerial vehicles (UAVs), At high mobility and given dense sensors, the requirement of ultra-low latency cannot be met using a traditional multi-access scheme such as time-division or orthogonal-frequency-division multiple access. A technique called over-the-air computation (AirComp) has emerged to be a promising solution for high-mobility sensing, which integrates functional computation (e.g., averaging and geometric mean) and multi-access by exploiting analog waveform addition. Targeting high-mobility sensing, the technique supports ultra-fast simultaneous access and function computation. In this paper, building on multi-antenna AirComp, we present a new frame-work of wirelessly powered (WP) AirComp to enable UAVs for simultaneous data aggregation and wirelessly powering sensors, where wireless power solves a key design challenge of battery recharging for many sensors. The key feature of WP-AirComp is the leverage of down-link wireless power transfer (WPT) as an additional design dimension for reducing the sum computation error in up-link AirComp. Designing the framework involves the joint optimization of power control, energy beamforming and AirComp equalization. To derive a practical solution, we recast the non-convex problem into equivalent outer and inner problems for (inner) wireless power control and energy beamforming and (outer) AirComp equalization, respectively. The former is solved in closed form while the latter via semi-definite relaxation, which is shown to reach the global optimum with high probability. The solution reveals that the optimal power beams point to the WPT channels, and the optimal power allocation tends to equalize the round-trip attenuation over sensors.
用于高机动性传感的无线供电空中计算
对于智慧城市中密集的传感器网络,通过在无人机上部署读取器可以实现高效的数据汇聚。在高机动性和给定密集传感器的情况下,传统的时分多址或正交频分多址等多址方案无法满足超低时延的要求。一种称为空中计算(AirComp)的技术已经成为高移动性传感的一种有前途的解决方案,它通过利用模拟波形加法集成了功能计算(例如,平均和几何平均值)和多址访问。针对高移动性传感,该技术支持超快速的同时访问和功能计算。在本文中,基于多天线AirComp,我们提出了一种新的无线供电(WP) AirComp框架,使无人机能够同时进行数据聚合和无线供电传感器,其中无线供电解决了许多传感器电池充电的关键设计挑战。WP-AirComp的主要特点是利用下行链路无线功率传输(WPT)作为减少上行链路AirComp求和计算误差的额外设计维度。该框架的设计涉及功率控制、能量波束形成和AirComp均衡的联合优化。为了推导出一个实用的解决方案,我们将非凸问题分别转化为(内部)无线电源控制和能量波束形成以及(外部)AirComp均衡的等效外部和内部问题。前者采用封闭形式求解,后者采用半定松弛方法求解,结果表明该方法有高概率达到全局最优。结果表明,最优功率波束指向WPT信道,最优功率分配倾向于均衡传感器间的往返衰减。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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