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Joint Trajectory-Resource Optimization in UAV-Enabled Edge-Cloud System With Virtualized Mobile Clone

机译:具有虚拟化移动克隆的支持UAV的边缘云系统中的联合轨迹资源优化

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This article studies an unmanned aerial vehicle (UAV)-enabled edge-cloud system, where UAV acts as a mobile edge computing (MEC) server interplaying with remote central cloud to provide computation services to ground terminals (GTs). The UAV-enabled edge-cloud system implements a virtualized network function, namely, mobile clone (MC), for each GT to help execute their offloaded tasks. Through such network function virtualization (NFV) implemented on top of the UAV-enabled edge-cloud system, GTs can have extended computation capability and prolonged battery lifetime. We aim to jointly optimize the allocation of resource and the UAV trajectory in the 3-D spaces to minimize the overall energy consumption of the UAV. The proposed solution, therefore, can extend the endurance of the UAV and support reliable MC functions for GTs. This article solves the complicated optimization problem through a block coordinate descent algorithm in an iterative way. In each iteration, the allocation of resource is modeled as a multiple constrained optimization problem given predefined UAV trajectory, which can be reformulated into a more tractable convex form and solved by successive convex optimization and Lagrange duality. Second, given the allocated resource, the optimization of the trajectory of rotary-wing/fixed-wing UAV can be formulated into a series of convex quadratically constrained quadratically program (QCQP) problems and solved by the standard convex optimization techniques. After the block coordinate descent algorithm converges to a prescribed accuracy, a high-quality suboptimal solution can be found. According to the simulation, the numerical results verify the effectiveness of our proposed solution in contrast to the baseline solutions.
机译:本文研究了一个无人驾驶飞行器(UAV)的边缘云系统,其中UAV充当与远程中央云相互作用的移动边缘计算(MEC)服务器,为接地端子(GTS)提供计算服务。启用了UAV的边缘云系统实现了虚拟化网络功能,即移动克隆(MC),用于每个GT帮助执行其卸载任务。通过这种网络功能虚拟化(NFV)在启用了UAV的边缘云系统顶部,GTS可以具有扩展的计算能力和延长电池寿命。我们的目标是共同优化3-D空间中的资源分配和UAV轨迹,以最大限度地减少无人机的整体能源消耗。因此,所提出的解决方案可以延长UAV的耐久性并支持GTS的可靠MC功能。本文通过以迭代方式通过块坐标缩进算法解决了复杂的优化问题。在每次迭代中,资源的分配被建模为给定预定义的UAV轨迹的多个约束优化问题,这可以将其重新格式化为更易诊的凸形形式,并通过连续的凸优化和拉格朗日二元进行解决。其次,考虑到分配资源,旋翼/固定翼UAV的轨迹的优化可以配制成一系列凸起的二次约束的二次编程(QCQP)问题,并通过标准凸优化技术解决。在块坐标缩减算法收敛到规定的精度之后,可以找到高质量的次优解决方案。根据模拟,数值结果与基线解决方案相比,我们提出的解决方案的有效性。

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