Energy-Efficient Resource Allocation with Dynamic Cache Using Reinforcement Learning

Zeyu Hu, Zexu Li, Yong Li
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引用次数: 1

Abstract

With the increasing amount of data in wireless network, the problem of energy consumption becomes more serious due to energy requirement for massive data transmission. This paper proposes an energy-efficient resource allocation algorithm with dynamic cache, which can adjust the caching strategy dynamically according to the channel state to reduce energy consumption under the constraint of smooth video streaming. The mathematical models of energy consumption for video transmission and decision selection are established, respectively. Given the dynamic channel environment, an on-line algorithm using reinforcement learning is proposed. In order to reduce the overall energy consumption of the system, and maintain the balance of energy consumption between transmission and calculation, the model of the off-line part is trained by using the neural network, and the calculation accuracy is adjusted adaptively. The simulation results show that the proposed algorithm can improve the total energy efficiency of the system effectively.
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基于强化学习的动态缓存节能资源分配
随着无线网络中数据量的不断增加,大量数据传输所需的能量消耗问题日益严重。本文提出了一种基于动态缓存的节能资源分配算法,该算法可以在视频流平滑的约束下,根据信道状态动态调整缓存策略,以降低能耗。分别建立了视频传输能耗和决策选择的数学模型。针对动态信道环境,提出了一种基于强化学习的在线算法。为了降低系统整体能耗,保持传输与计算能耗的平衡,利用神经网络对脱机部分的模型进行训练,并自适应调整计算精度。仿真结果表明,该算法能有效提高系统的总能效。
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