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Deep reinforcement learning based mobile edge computing for intelligent Internet of Things

机译:基于深度加强学习的智能互联网移动边缘计算

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In this paper, we investigate mobile edge computing (MEC) networks for intelligent internet of things (IoT), where multiple users have some computational tasks assisted by multiple computational access points (CAPs). By offloading some tasks to the CAPs, the system performance can be improved through reducing the latency and energy consumption, which are the two important metrics of interest in the MEC networks. We devise the system by proposing the offloading strategy intelligently through the deep reinforcement learning algorithm. In this algorithm, Deep Q-Network is used to automatically learn the offloading decision in order to optimize the system performance, and a neural network (NN) is trained to predict the offloading action, where the training data is generated from the environmental system. Moreover, we employ the bandwidth allocation in order to optimize the wireless spectrum for the links between the users and CAPs, where several bandwidth allocation schemes are proposed. In further, we use the CAP selection in order to choose one best CAP to assist the computational tasks from the users. Simulation results are finally presented to show the effectiveness of the proposed reinforcement learning offloading strategy. In particular, the system cost of latency and energy consumption can be reduced significantly by the proposed deep reinforcement learning based algorithm. (c) 2020 Elsevier B.V. All rights reserved.
机译:在本文中,我们调查用于智能信息的移动边缘计算(MEC)网络(物联网),其中多个用户具有多个计算接入点(帽)辅助的一些计算任务。通过将一些任务卸载到帽子,可以通过降低延迟和能量消耗来提高系统性能,这是MEC网络中感兴趣的两个重要指标。我们通过智能地通过深度加强学习算法提出卸载策略来设计系统。在该算法中,深Q-Network用于自动学习卸载决定,以便优化系统性能,并且训练神经网络(NN)以预测从环境系统生成训练数据的卸载动作。此外,我们采用带宽分配,以便优化用于用户和帽之间的链路的无线频谱,其中提出了多个带宽分配方案。进一步地,我们使用帽子选择来选择一个最佳帽,以帮助用户提供计算任务。终结仿真结果旨在表明提出的加强学习卸载策略的有效性。特别地,所提出的基于深度加强学习的算法可以显着降低延迟和能量消耗的系统成本。 (c)2020 Elsevier B.v.保留所有权利。

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