A Proactive Joint Strategy on Trajectory and Caching for UAV-Assisted Networks: A Data-Driven Distributionally Robust Approach

Xuanheng Li, Jiahong Liu, Nan Zhao, Nianmin Yao
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引用次数: 3

Abstract

With the soaring growth of data traffic, unmanned aerial vehicle (UAV) based edge caching has been regarded as a promising solution to alleviate network congestion and enable users to obtain their desired contents with reduced delay. For the UAV-based edge caching, how to jointly plan the trajectory and caching strategy is the key, which determines how much benefit can achieve accordingly. Such a joint strategy design highly depends on the content demands in the network. However, the content demands are usually heterogeneous both temporally and spatially, and hardly known in advance. Such demand uncertainty makes the joint strategy design extremely challenging. In this paper, aiming at maximizing the reduced delay brought by the UAV-based edge caching, we propose a proactive joint trajectory and caching strategy under uncertain content demands. We formulate it into a risk-averse stochastic optimization problem to guarantee the maximal benefit with a high probability. Furthermore, considering the fact that the precise distributional information might be unavailable in practice, we focus on the worst case and develop a data-driven distributionally robust solution, making the strategy trustworthy. Simulation results demonstrate the effectiveness of the proposed strategy.
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无人机辅助网络的轨迹和缓存的主动联合策略:数据驱动的分布式鲁棒方法
随着数据流量的飞速增长,基于无人机(UAV)的边缘缓存被认为是缓解网络拥塞、使用户能够以更低的延迟获得所需内容的一种很有前途的解决方案。对于基于无人机的边缘缓存,如何联合规划轨迹和缓存策略是关键,决定了相应的效益能达到多少。这种联合策略的设计高度依赖于网络中的内容需求。然而,内容需求通常在时间和空间上都是异质的,很难事先知道。这种需求的不确定性使得联合战略设计极具挑战性。为了最大限度地降低无人机边缘缓存带来的延迟,本文提出了一种不确定内容需求下的主动联合轨迹和缓存策略。我们将其转化为一个规避风险的随机优化问题,以保证高概率的最大效益。此外,考虑到在实践中可能无法获得精确的分布信息,我们将重点放在最坏情况下,并开发了一个数据驱动的分布鲁棒解决方案,使该策略值得信赖。仿真结果验证了该策略的有效性。
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