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Resource Allocation for Edge Computing in IoT Networks via Reinforcement Learning

机译:通过强化学习在物联网网络中进行边缘计算的资源分配

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In this paper, we consider resource allocation for edge computing in internet of things (IoT) networks. Specifically, each end device is considered as an agent, which makes its decisions on whether offloading the computation tasks to the edge devices or not. To minimize the long-term weighted sum cost which includes the power consumption and the task execution latency, we consider the channel conditions between the end devices and the gateway, the computation task queue as well as the remaining computation resource of the end devices as the network states. The problem of making a series of decisions at the end devices is modelled as a Markov decision process and solved by the reinforcement learning approach. Therefore, we propose a near optimal task offloading algorithm based on ϵ-greedy Q-learning. Simulations validate the feasibility of our proposed algorithm, which achieves a better trade-off between the power consumption and the task execution latency compared to these of edge computing and local computing modes.
机译:在本文中,我们考虑了物联网(IoT)网络中用于边缘计算的资源分配。具体来说,每个终端设备都被视为一个代理,它决定是否将计算任务卸载到边缘设备。为了最小化包括功率消耗和任务执行等待时间在内的长期加权总和成本,我们将终端设备与网关之间的信道条件,计算任务队列以及终端设备的剩余计算资源都考虑在内。网络状态。在终端设备上做出一系列决策的问题被建模为马尔可夫决策过程,并通过强化学习方法得以解决。因此,我们提出了一种基于ϵ贪婪Q学习的近最优任务卸载算法。仿真验证了我们提出的算法的可行性,与边缘计算和本地计算模式相比,该算法在功耗和任务执行等待时间之间实现了更好的折衷。

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