航空边缘计算中基于强化学习的任务卸载技术综述

IF 6 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Internet of Things Pub Date : 2024-08-22 DOI:10.1016/j.iot.2024.101342
Ahmadun Nabi, Tanmay Baidya, Sangman Moh
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引用次数: 0

摘要

空中边缘计算(AEC)已成为一个关键平台,可为终端用户的物联网(IoT)设备提供低延迟计算服务、无缝部署、快速运行和高机动性。不同的空中计算平台为处理物联网设备的任务提供不同的计算支持,这影响了卸载决策。然而,在这种情况下,有效的任务卸载(TO)决策仍然是一个严峻的挑战,因为它会影响服务质量、能源消耗、资源分配和延迟要求。由于环境的不确定性和计算平台的异质性,目前的大多数研究都在 AEC 中使用基于强化学习(RL)的卸载决策。因此,本调查针对环境的固有不确定性和计算平台的异构性,探讨了 AEC 中基于 RL 的卸载算法的普遍使用情况。本研究系统地回顾和比较了在异构航空计算平台中用于高效卸载决策的基于 RL 的技术。它深入探讨了近期的研究成果,重点介绍了所应用的各种方法和手段。此外,本文还全面概述了广泛用于评估基于 RL 的卸载决策技术有效性的性能指标。最后,本调查报告指出了研究空白并概述了未来方向,旨在指导学者和从业人员在 AEC 中推进基于 RL 的卸载决策领域的发展。
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Comprehensive survey on reinforcement learning-based task offloading techniques in aerial edge computing

Aerial edge computing (AEC) has emerged as a pivotal platform offering low-latency computation services, seamless deployability, rapid operationality, and high maneuverability to the Internet of things (IoT) devices of end users. Different aerial computing platforms offer different computation support to process the tasks of IoT devices, which affects the offloading decision. However, effective task offloading (TO) decision-making in this context remains a critical challenge because it impacts the quality of service, energy consumption, resource allocation, and latency requirements. Most current research uses reinforcement learning (RL)-based offloading decisions in AEC owing to the uncertainty of the environment and the heterogeneity of computation platforms. Therefore, this survey explores the prevailing use of RL-based algorithms for TO in AEC, addressing the inherent uncertainty of the environment and the heterogeneity of computation platforms. This study systematically reviews and compares RL-based techniques employed for efficient offloading decisions in heterogeneous aerial computing platforms. It delves into recent research findings, highlighting the various approaches and methodologies applied. Additionally, the paper provides a comprehensive overview of the performance metrics widely used to evaluate the efficacy of RL-based offloading decision techniques. In conclusion, this survey identifies research gaps and outlines future directions, aiming to guide scholars and practitioners in advancing the field of RL-based TO in AEC.

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来源期刊
Internet of Things
Internet of Things Multiple-
CiteScore
3.60
自引率
5.10%
发文量
115
审稿时长
37 days
期刊介绍: Internet of Things; Engineering Cyber Physical Human Systems is a comprehensive journal encouraging cross collaboration between researchers, engineers and practitioners in the field of IoT & Cyber Physical Human Systems. The journal offers a unique platform to exchange scientific information on the entire breadth of technology, science, and societal applications of the IoT. The journal will place a high priority on timely publication, and provide a home for high quality. Furthermore, IOT is interested in publishing topical Special Issues on any aspect of IOT.
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