无人机计算向共享雾节点卸载的性能瓶颈分析

Qingyang Zhang, F. Machida, E. Andrade
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引用次数: 2

摘要

无人机上的计算最近在各种实际应用中变得流行起来。为了确保无人机计算的性能和可靠性,系统还可以通过无线网络将计算卸载到附近的雾服务器或边缘服务器。由于负载量、网络稳定性和共享资源的竞争性使用会显著影响卸载性能,因此对此类系统进行性能评估至关重要。在本文中,我们分析了由多个无人机组成的无人机系统将任务卸载到共享雾节点的性能瓶颈。我们研究了由于计算卸载引起的资源冲突如何导致无人机计算系统的性能瓶颈。为了模拟系统的行为并分析性能和可用性,我们使用了随机奖励网(SRN)。通过数值实验,我们证实了计算卸载的好处随着竞争无人机数量的增加而恶化。为了克服性能瓶颈,我们还讨论了缓解共享雾节点问题的潜在解决方案。
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Performance Bottleneck Analysis of Drone Computation Offloading to a Shared Fog Node
Computing in drones has recently become popular for various real-world applications. To assure the performance and reliability of drone computing, systems can also adopt computation offloading to a nearby fog or edge server through a wireless network. As the offloading performance is significantly affected by the amount of workload, the network stability, and the competing use of a shared resource, performance estimation is essential for such systems. In this paper, we analyze the performance bottleneck of a drone system consisting of multiple drones that offload the tasks to a shared fog node. We investigate how resource conflict due to computation offloading causes the performance bottleneck of the drone computation system. To model the behavior of the system and analyze the performance and availability, we use Stochastic Reward Nets (SRN s). Through the numerical experiments, we confirm that the benefit of computation offloading deteriorates as the number of competing drones increases. To overcome the performance bottleneck, we also discuss potential solutions to mitigate the issue of a shared fog node.
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