无人机云任务卸载的分散连续博弈

Ang Gao, Tianli Geng, Yansu Hu, Wei Liang, Weijun Duan
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引用次数: 3

摘要

无人机云将移动云计算(MCC)的灵活性和弹性与多无人机系统相结合,通过将任务卸载到云上,为无人机提供处理计算密集型应用的能力。然而,这种由大量无人机产生的异构体验质量(QoE)需求的任务成为云资源分配的麻烦负担。特别是与能量效率相关的续航问题使问题更加复杂。提出了一种基于博弈论的分散连续卸载算法。无人机云中的每架无人机优化了在云上执行的卸载任务的百分比,同时最小化了由QoE要求和能耗组成的开销。通过有限迭代,可以证明该算法是一种能够达到双边满意纳什均衡的潜在博弈。各种场景下的数值结果不仅证实了所提出的连续卸载策略的有效性和稳定性,而且证明了计算复杂度和通信开销的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decentralized Continuous Game for Task Offloading in UAV Cloud
UAV cloud which integrates the flexibility and re-silience of mobile cloud computing (MCC) with multiple UAV system provides drones the ability of processing compute-intensive application by offloading task to cloud. However, such task with heterogeneous quality of experience (QoE) requirement generated by massive drones becomes a troublesome burden for cloud resource allocation. Especially the endurance issue related to the energy efficiency makes the problem more complicated. This paper proposes a game theory based decentralized continuous offloading algorithm. Each drone in the UAV cloud optimizes the percentage of offloading task executed at cloud, while minimizes its overhead composed by QoE requirement and energy consumption. This algorithm can be proved to a potential game that can reach a bilateral satisfaction Nash Equilibrium (NE) by finite iteration. Numerical results under various scenario corroborate not only the effectiveness and stability of the proposed continuous offloading game, but also the superiority of computation complexity and communication overhead.
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