基于改进蝙蝠算法的无人机计算卸载策略

Fei Xu , Shun Zi , Jianguo Wang , Jiajun Ma
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引用次数: 0

摘要

在多无人机协同侦察作战过程中,由于无人机的电池容量和计算资源有限,处理任务不仅会导致过度延迟,还会增加无人机的能耗,从而降低无人机的续航时间。因此,我们提出了一种由单架无人直升机和多架侦察无人机组成的移动边缘计算系统架构。其中,UH作为MEC服务器为侦察无人机提供计算服务。通过求解多无人机的卸载策略计算问题,目标是最小化多无人机任务执行的能耗和延迟的加权和。在解决该问题时,以前的启发式算法,如粒子群优化算法(PSO),通常被用作研究的基本算法,但它们往往收敛较早,容易陷入局部最优,并且求解精度较低,难以获得最优卸载策略。因此,本文提出了一种具有快速收敛能力和全局搜索能力的改进bat算法(IBA)。通过PSO、BA、IPSO和IBA的仿真实验和比较分析,证明了基于本文提出的系统架构的IBA在解决这一问题时更准确、更稳定、更高效,并有效地降低了多无人机任务执行的能耗和延迟的加权和。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A computing offloading strategy for UAV based on improved bat algorithm

In the process of multi-UAVs cooperative reconnaissance operations, due to the limited battery capacity and computing resources of the unmanned aerial vehicle (UAV), processing tasks can not only lead to excessive delay, but also increase the energy consumption of the UAV, which reduces the endurance time of the UAV. Therefore, we have proposed a mobile edge computing (MEC) system architecture composed of single unmanned helicopter (UH) and multiple reconnaissance UAVs. Among them, the UH as a MEC server to provide computing services for reconnaissance UAVs. By solving the computing offloading strategy problem of multi-UAVs, the objective is to minimize the weighted sum of energy consumption and delay for the multi-UAVs' task execution. In solving the problem, previous heuristic algorithms such as the Particle Swarm Optimization (PSO) are often used as basic algorithms for research, but they tend to converge early, fall into local optimum easily, and have low solution accuracy, making it difficult to obtain the optimal offloading strategy. Therefore, this paper proposes an improved bat algorithm (IBA) with fast convergence ability and global search ability. Through the simulation experiments and comparative analysis of PSO, BA, IPSO and IBA, it is proved that the IBA is more accurate, stable, and efficient in solving this problem based on the system architecture proposed in this paper, and effectively reduces the weighted sum of energy consumption and delay for the multi-UAVs' task execution.

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