论文标题
无人机辅助多群集无线计算
UAV-Assisted Multi-Cluster Over-the-Air Computation
论文作者
论文摘要
在本文中,我们研究了多个群集网络中无人驾驶飞机(UAV)辅助无线数据聚合(WDA),其中多个无人机通过无地面计算(AIRCOMP)同时执行不同的WDA任务,而无需地层基础站。这项工作着重于通过优化无人机的轨迹和收发器设计以及集群调度和关联,同时考虑WDA准确性要求,从而最大程度地提高所有集群中WDA任务的最低量。这种联合设计对于多群集AIRCOMP网络中的干扰管理至关重要,通过增强每个无人机与其相关群集之间的信号质量以进行信号对齐,同时减少每个无人机及其非相关集群之间的群集间干扰。尽管通常具有挑战性地解决公式的非凸混合构成非线性编程,但是通过利用分分分配和块坐标下降方法来开发一种有效的迭代算法作为折衷方法,从而在每种迭代中产生一个最佳的接收器解决方案。最佳的二进制变量和次优轨迹是通过使用双重方法和连续的凸近似获得的。仿真显示了拟议的设计优于基准测试的性能增长,以及在减少访问延迟的同时增加执行任务数量时要增加多个无人机的优势。
In this paper, we study unmanned aerial vehicles (UAVs) assisted wireless data aggregation (WDA) in multicluster networks, where multiple UAVs simultaneously perform different WDA tasks via over-the-air computation (AirComp) without terrestrial base stations. This work focuses on maximizing the minimum amount of WDA tasks performed among all clusters by optimizing the UAV's trajectory and transceiver design as well as cluster scheduling and association, while considering the WDA accuracy requirement. Such a joint design is critical for interference management in multi-cluster AirComp networks, via enhancing the signal quality between each UAV and its associated cluster for signal alignment and meanwhile reducing the inter-cluster interference between each UAV and its nonassociated clusters. Although it is generally challenging to optimally solve the formulated non-convex mixed-integer nonlinear programming, an efficient iterative algorithm as a compromise approach is developed by exploiting bisection and block coordinate descent methods, yielding an optimal transceiver solution in each iteration. The optimal binary variables and a suboptimal trajectory are obtained by using the dual method and successive convex approximation, respectively. Simulations show the considerable performance gains of the proposed design over benchmarks and the superiority of deploying multiple UAVs in increasing the number of performed tasks while reducing access delays.