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Learning-Based URLLC-Aware Task Offloading for Internet of Health Things

机译:基于学习的URLLC感知任务卸载了健康互联网

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摘要

In the Internet of Health Things (IoHT)-based e-Health paradigm, a large number of computational-intensive tasks have to be offloaded from resource-limited IoHT devices to proximal powerful edge servers to reduce latency and improve energy efficiency. However, the lack of global state information (GSI), the adversarial competition among multiple IoHT devices, and the ultra reliable and low latency communication (URLLC) constraints have imposed new challenges for task offloading optimization. In this article, we formulate the task offloading problem as an adversarial multi-armed bandit (MAB) problem. In addition to the average-based performance metrics, bound violation probability, occurrence probability of extreme events, and statistical properties of excess values are employed to characterize URLLC constraints. Then, we propose a URLLC-aware Task Offloading scheme based on the exponential-weight algorithm for exploration and exploitation (EXP3) named UTO-EXP3. URLLC awareness is achieved by dynamically balancing the URLLC constraint deficits and energy consumption through online learning. We provide a rigorous theoretical analysis to show that guaranteed performance with a bounded deviation can be achieved by UTO-EXP3 based on only local information. Finally, the effectiveness and reliability of UTO-EXP3 are validated through simulation results.
机译:在健康互联网上(IOHT)的电子健康范式,大量的计算密集型任务必须从资源限制的IOHT设备卸载到近端强大的边缘服务器,以减少延迟并提高能效。然而,缺乏全球州信息(GSI),多个IOHT设备之间的对抗竞争以及超可靠和低延迟通信(URLLC)约束对任务卸载优化的新挑战造成了新的挑战。在本文中,我们将任务卸载问题作为对抗性多武装强盗(MAB)问题。除了基于平均的绩效度量,绑定违规概率,极端事件的发生概率以及超值的统计属性被用来表征URLLC约束。然后,我们提出了一种基于名为Uto-Exp3的指数重量算法的URLLC感知任务卸载方案。通过在线学习动态平衡URLLC约束缺陷和能量消耗来实现URLLC意识。我们提供了一个严格的理论分析,以表明,通过基于本地信息,Uto-Exp3可以通过Uto-Exp3实现具有有界偏差的保证性能。最后,通过仿真结果验证了UTO-EXP3的有效性和可靠性。

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    State Key Laboratory of Alternate Electrical Power System with Renewable Energy Sources School of Electrical and Electronic Engineering North China Electric Power University Beijing China;

    State Key Laboratory of Alternate Electrical Power System with Renewable Energy Sources School of Electrical and Electronic Engineering North China Electric Power University Beijing China;

    State Key Laboratory of Alternate Electrical Power System with Renewable Energy Sources School of Electrical and Electronic Engineering North China Electric Power University Beijing China;

    State Key Laboratory of Alternate Electrical Power System with Renewable Energy Sources School of Electrical and Electronic Engineering North China Electric Power University Beijing China;

    Instituto de Telecomunicações Campus Universitário de Santiago University of Aveiro Aveiro Portugal;

    Polytechnic Institute of Tomar Tomar Portugal;

    Intel Deutschland GmbH Neubiberg Germany;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Task analysis; Optimization; Delays; Energy consumption; Probability; Servers; Reliability;

    机译:任务分析;优化;延迟;能量消耗;概率;服务器;可靠性;

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