SAGIN-ISAC 中的无人机辅助通信:移动用户跟踪和鲁棒波束成形

Weihao Mao;Yang Lu;Gaofeng Pan;Bo Ai
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摘要

空间-空地综合网络(SAGIN)和综合传感与通信(ISAC)都是未来通信系统中很有前途的技术。研究了SAGIN-ISAC系统中无人机的移动用户跟踪和鲁棒波束形成设计。提出了两种无人机目标位置信息获取方案,即空间辅助和isac辅助方案。前者需要通过空-空传输获取卫星的精确位置信息,后者则通过提出的基于扩展卡尔曼滤波的算法估计目标的位置信息。然后利用获得的位置信息来预测mu的通道分布,这可以用来制定停电约束下的能源效率(EE)最大化问题。首先根据bernstein型不等式对所考虑的问题进行了重新表述,得到了可计算的停机概率约束形式。然后,利用半定松弛法和逐次凸逼近法求解了重新表述的问题,从理论上证明了采用半定松弛法的严密性。数值结果说明了空间辅助和isac辅助两种方案下无人机跟踪机动目标的轨迹,并讨论了空-气传输对无人机跟踪性能的影响。观察到空-空传输开销与卫星定位预测精度之间存在一定的权衡关系。通过在SAGIN中集成ISAC,与传统SAGIN相比,减少了对空间的信息需求。
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UAV-Assisted Communications in SAGIN-ISAC: Mobile User Tracking and Robust Beamforming
Both the space-air-ground integrated networks (SAGIN) and the integrated sensing and communication (ISAC) are promising technologies in future communication systems. This paper investigates the mobile user (MU) tracking and robust beamforming design by the unmanned aerial vehicle (UAV) in an SAGIN-ISAC system. Two schemes for acquiring the location information of MUs at the UAV are proposed, namely the space-assisted and ISAC-assisted schemes. The former requires the precise location information from the satellite by the space-air transmission, while the latter estimates the location information of MUs via a proposed extended Kalman filter based algorithm. The obtained location information is then utilized to predict the channel distribution of MUs, which can be used to formulate an outage-constrained energy efficiency (EE) maximization problem. The considered problem is first reformulated based on the Bernstein-type inequality to derive computationally tractable forms of the outage probability constraints. Then, the reformulated problem is solved via the semi-definite relaxation (SDR) and successive convex approximation methods, where the tightness of employing SDR is theoretically proved. Numerical results illustrate the trajectories of the UAV for tracking MUs under the space-assisted and ISAC-assisted schemes, and discuss the impact of the space-air transmission on the EE performance. It is observed that there exists a trade-off between space-air transmission overhead and location prediction precision of MUs. By integrating the ISAC in SAGIN, the information demand from the space is reduced compared with traditional SAGIN.
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Table of Contents IEEE Communications Society Information Corrections to “Coverage Rate Analysis for Integrated Sensing and Communication Networks” IEEE Journal on Selected Areas in Communications Publication Information Guest Editorial: Integrated Ground-Air-Space Wireless Networks for 6G Mobile—Part II
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