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Sleep-Scheduling and Joint Computation-Communication Resource Allocation in MEC Networks for 5G IIoT

机译:MEC网络中的睡眠调度和联合计算 - 通信资源分配5G IIot

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Industrial 4.0 will be supported by Internet of Things (IIoT), which will bring profound revolutions to the industrial manufacturing. The fifth generation wireless communication system (5G) will be one of the key technologies to support IIoT. However, the connectivity-massive, computation-intensive and time-critical features of IIoT pose great challenges to the spectrum and computation resource in 5G IIoT networks. Non-orthogonal multiple access (NOMA) and mobile edge computing (MEC) are regarded as promising paradigms to tackle these problems, called NOMA-based MEC. To enhance computing performance of MEC system, we consider that devices can also offload their computation tasks to some idle devices with rich computation resources through machine-to-machine (M2M) communication, called M2M-assisted NOMA-based MEC scheme. We formulate an optimization problem under tasks delay constraints to minimize the system energy consumption through sleep-scheduling and joint computation-communication resource allocation. Specifically, we propose a deep reinforcement learning (DRL) based sleep-scheduling scheme to arrange some idle devices to work at sleep-mode for saving energy while satisfies the system computation requirements. Furthermore, we design an iterative algorithm for the joint computation-communication resource allocation problem. Numerical results demonstrate our proposed scheme and algorithm achieve significantly reduction of system energy consumption, while satisfying network computation requirements.
机译:工业4.0将由物联网(IIOT)提供支持,这将为工业制造提供深远的革命。第五代无线通信系统(5G)将是支持IIOT的关键技术之一。然而,IIOT的连接巨大,计算 - 密集型和时间关键特征对5G IIOT网络中的频谱和计算资源产生了巨大挑战。非正交多次访问(NOMA)和移动边缘计算(MEC)被视为有前途的范式,以解决这些问题,称为基于NOMO的MEC。为提高MEC系统的计算性能,我们认为设备还可以通过机器到机器(M2M)通信,将其计算任务卸载到具有丰富计算资源的空闲设备,称为M2M辅助基于NOMA的MEC方案。我们在任务延迟约束下制定了优化问题,以通过睡眠调度和联合计算 - 通信资源分配最小化系统能量消耗。具体地,我们提出了一种基于深度加强学习(DRL)的睡眠调度方案,以在睡眠模式下布置一些空闲设备以节省能量,同时满足系统计算要求。此外,我们设计了一种迭代算法,用于联合计算 - 通信资源分配问题。数值结果展示了我们所提出的方案和算法实现了系统能耗的显着降低,同时满足网络计算要求。

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