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Distributed Learning Based Joint Communication and Computation Strategy of IoT Devices in Smart Cities

机译:基于分布式学习的智慧城市物联网设备联合通信与计算策略

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摘要

With the development of global urbanization, the Internet of Things (IoT) and smart cities are becoming hot research topics. As an emerging model, edge computing can play an important role in smart cities because of its low latency and good performance. IoT devices can reduce time consumption with the help of a mobile edge computing (MEC) server. However, if too many IoT devices simultaneously choose to offload the computation tasks to the MEC server via the limited wireless channel, it may lead to the channel congestion, thus increasing time overhead. Facing a large number of IoT devices in smart cities, the centralized resource allocation algorithm needs a lot of signaling exchange, resulting in low efficiency. To solve the problem, this paper studies the joint policy of communication and computing of IoT devices in edge computing through game theory, and proposes distributed Q-learning algorithms with two learning policies. Simulation results show that the algorithm can converge quickly with a balanced solution.
机译:随着全球城市化的发展,物联网(IoT)和智慧城市正成为热门的研究主题。作为一种新兴的模型,边缘计算由于其低延迟和良好的性能在智能城市中可以发挥重要作用。物联网设备可以借助移动边缘计算(MEC)服务器来减少时间消耗。但是,如果太多的物联网设备同时选择通过有限的无线信道将计算任务卸载到MEC服务器,则可能导致信道拥塞,从而增加了时间开销。面对智慧城市中大量的物联网设备,集中式资源分配算法需要大量的信令交换,效率低下。为解决这一问题,本文通过博弈论研究了边缘计算中物联网设备通信与计算的联合策略,并提出了两种学习策略的分布式Q学习算法。仿真结果表明,该算法可以快速地收敛于平衡解。

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