Deep Reinforcement Learning-Based Method of Mobile Data Offloading

Daisuke Mochizuki, Yu Abiko, H. Mineno, Takato Saito, Daizo Ikeda, M. Katagiri
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引用次数: 2

Abstract

The demand for mobile data communication is increasing due to diversification and the increase in the number of mobile devices accessing mobile networks. This demand is likely to increase further. In a mobile network, communication quality deteriorates due to the congestion of the cellular infrastructure because of the concentration of demand for mobile data communication. Therefore, improving the cellular infrastructure bandwidth utilization efficiency is crucial. To improve the cellular infrastructure bandwidth utilization efficiency, we previously proposed the mobile data offloading protocol. Although this method balances the load by focusing on the delay tolerance of contents in the uplink, accurately balancing the load is challenging. In this paper, we propose a mobile data offloading method using deep reinforcement learning for increasing offloading performance of the uplink. The proposed method can balance the load appropriately by learning what the bandwidth and transmission timing provide to the user equipment when the previous method does not work properly.
基于深度强化学习的移动数据卸载方法
由于多样化和接入移动网络的移动设备数量的增加,对移动数据通信的需求正在增加。这种需求可能会进一步增加。在移动网络中,由于移动数据通信需求的集中,蜂窝基础设施的拥塞导致通信质量下降。因此,提高蜂窝基础设施带宽利用效率至关重要。为了提高蜂窝基础设施的带宽利用效率,我们提出了移动数据卸载协议。虽然这种方法通过关注上行链路中内容的延迟容限来平衡负载,但准确地平衡负载是具有挑战性的。在本文中,我们提出了一种使用深度强化学习的移动数据卸载方法,以提高上行链路的卸载性能。当前一种方法不能正常工作时,所提出的方法可以通过了解带宽和传输时序向用户设备提供的内容来适当地平衡负载。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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