Reducing the Mission Time of Drone Applications through Location-Aware Edge Computing

Theodoros Kasidakis, Giorgos Polychronis, Manos Koutsoubelias, S. Lalis
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引用次数: 2

Abstract

In data-driven applications, which go beyond simple data collection, drones may need to process sensor measurements at certain locations, during the mission. However, the onboard computing platforms typically have strong resource limitations, which may lead to significant delays and long mission times. To address this problem, we explore the potential of offloading heavyweight computations from the drone to nearby edge computing infrastructure. We discuss a concrete implementation for a service-oriented application software stack, which takes offloading decisions based on the expected service invocation time and the locations of the servers expected to be available in the mission area. We evaluate our implementation using an experimental setup that combines a hardware-in-the-loop and software-in-the-loop configuration. Our results show that the proposed approach can reduce the total mission time significantly, by up to 48% vs local-only processing, and by 10% vs more naive opportunistic offloading, depending on the mission scenario.
通过位置感知边缘计算减少无人机应用的任务时间
在数据驱动的应用中,无人机可能需要在任务期间处理特定位置的传感器测量数据,而不仅仅是简单的数据收集。然而,机载计算平台通常具有很强的资源限制,这可能导致重大延迟和较长的任务时间。为了解决这个问题,我们探索了将重型计算从无人机卸载到附近边缘计算基础设施的潜力。我们将讨论面向服务的应用程序软件堆栈的具体实现,它根据预期的服务调用时间和任务区域中预期可用的服务器位置做出卸载决策。我们使用结合了硬件在环和软件在环配置的实验设置来评估我们的实现。我们的结果表明,所提出的方法可以显着减少总任务时间,根据任务场景,与本地处理相比,最多可减少48%,与更天真的机会主义卸载相比,可减少10%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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