An Iterative Stochastic Approach to Constrained Drones' Communications

Giovanni Iacovelli, Pietro Boccadoro, L. Grieco
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引用次数: 3

Abstract

The Internet of Drones paradigm is considered as a key enabler for several cutting edge verticals, including surveillance, planetary exploration, protection, loads transportation, and aerology. The main limitations to its wide-scale adoption arise from the constraints on the resources available onboard of drones: this concerns energy, computational and storage capabilities. Unfortunately, current literature mainly focuses on energy limitations, leaving unexplored the interplay with other constraints. To bridge this gap, the present contribution also encompasses the limitations on the memory onboard, which can be critical when drones have to acquire high resolution multimedia signals for ambient awareness services. In particular, an iterative stochastic approach is conceived hereby to tune data flows from/to drones subject to energy and memory constraints in order to fulfill an Out-of-Service probability below a given threshold. Stemming from the proposed approach, two algorithms have been also designed that seek a different complexity-performance tradeoff. The first one is less complex and more conservative, since it plans the mission once at the beginning. The second, instead, is slightly more complex and aggressive but it allows the drone to gather and upload a higher volume of data and shorten the gap with respect to the ideal case.
无人机互联网范式被认为是几个前沿垂直领域的关键推动者,包括监视、行星探测、保护、负载运输和航空学。其大规模采用的主要限制来自无人机上可用资源的限制:这涉及能源、计算和存储能力。不幸的是,目前的文献主要集中在能源限制上,而没有探索与其他限制的相互作用。为了弥补这一差距,目前的贡献还包括机载内存的限制,当无人机必须为环境感知服务获取高分辨率多媒体信号时,这一点至关重要。特别地,本文设想了一种迭代随机方法来调整来自/到无人机的数据流,这些数据流受能量和内存约束,以实现低于给定阈值的停机概率。基于所提出的方法,还设计了两种算法来寻求不同的复杂性-性能权衡。第一个方案不那么复杂,也更保守,因为它一开始就计划好了任务。相反,第二种方法稍微复杂一些,也更激进一些,但它允许无人机收集和上传更多的数据,并缩短与理想情况的差距。
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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