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Learning-Based Offloading of Tasks with Diverse Delay Sensitivities for Mobile Edge Computing

机译:移动边缘计算的基于学习的具有不同延迟敏感度的任务分载

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The ever-evolving mobile applications need more and more computing resources to smooth user experience and sometimes meet delay requirements. Therefore, mobile devices (MDs) are gradually having difficulties to complete all tasks in time due to the limitations of computing power and battery life. To cope with this problem, mobile edge computing (MEC) systems were created to help with task processing for MDs at nearby edge servers. Existing works have been devoted to solving MEC task offloading problems, including those with simple delay constraints, but most of them neglect the coexistence of deadline-constrained and delay- sensitive tasks (i.e., the diverse delay sensitivities of tasks). In this paper, we propose an actor-critic based deep reinforcement learning (ADRL) model that takes the diverse delay sensitivities into account and offloads tasks adaptively to minimize the total penalty caused by deadline misses of deadline-constrained tasks and the lateness of delay-sensitive tasks. We train the ADRL model using a real data set that consists of the diverse delay sensitivities of tasks. Our simulation results show that the proposed solution outperforms several heuristic algorithms in terms of total penalty, and it also retains its performance gains under different system settings.
机译:不断发展的移动应用程序需要越来越多的计算资源来平滑用户体验,有时还满足延迟要求。因此,由于计算能力和电池寿命的限制,移动设备(MD)逐渐难以及时完成所有任务。为了解决此问题,创建了移动边缘计算(MEC)系统以帮助处理附近边缘服务器上MD的任务。现有工作致力于解决MEC任务卸载问题,包括那些具有简单延迟约束的问题,但是它们中的大多数都忽略了期限限制和延迟敏感任务的并存(即任务的各种延迟敏感性)。在本文中,我们提出了一种基于行为者批评的深度强化学习(ADRL)模型,该模型考虑了各种延迟敏感性,并自适应地卸载任务,以最大程度地减少因截止期限约束任务的截止期限缺失和延迟延迟而造成的总损失。敏感任务。我们使用包含任务的各种延迟敏感性的真实数据集训练ADRL模型。我们的仿真结果表明,提出的解决方案在总惩罚方面优于几种启发式算法,并且在不同的系统设置下仍保持其性能提升。

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