Q-Learning based Dynamic Cooperative Communication in Time Varying Underwater Acoustic Channels

Yue Su, Yuzhi Zhang, R. Bai, Yang Liu, Bin Wang, Yanjing Sun
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引用次数: 2

Abstract

As underwater acoustic (UWA) channels usually experience temporally variation, link disconnection usually occurs during long time deployment of UWA networks. In the UWA data collection network, one destination needs to collect data from multiple underwater nodes. With the thought of node cooperation, one node can be selected as a potential relay to forward data for another failure node in the retransmission phase. One of the key points is that the selection schedule depends on the channel state information. Whereas, the channel usually varies during the information collection time which will make the decision schedule not accurate. In this paper, a Q-Learning based cooperation scheme has been proposed for node selection in time varying UWA channels, with the setup of proper states, action and rewards. The state is a combination of channel state information (CSI) and mutual information, and the rewards updating functions have been given. With the proposed method, the cooperative forwarding relay nodes can be chosen by the rewards which has been updated with channel variation information. Simulation results indicate that proposed Q-Learning based cooperative scheme can achieve better system capacity compared to random schemes. And with predicted CSI, the performance is close to the bench mark with ideal CSI.
时变水声信道中基于q学习的动态协同通信
由于水声(UWA)信道具有时变特性,在UWA网络的长时间部署过程中,经常会出现链路断开的情况。在UWA数据采集网络中,一个目的地需要从多个水下节点采集数据。采用节点协作的思想,可以选择一个节点作为潜在中继,在重传阶段为另一个故障节点转发数据。其中一个关键点是选择调度依赖于通道状态信息。然而,在信息收集过程中,信道通常会发生变化,这将导致决策时间表不准确。本文提出了一种基于Q-Learning的合作方案,用于时变UWA信道中的节点选择,并设置适当的状态、动作和奖励。该状态是信道状态信息(CSI)和互信息的组合,并给出了奖励更新函数。利用该方法,可以根据信道变化信息更新后的奖励来选择合作转发中继节点。仿真结果表明,与随机方案相比,基于Q-Learning的协作方案可以获得更好的系统容量。在预测CSI的情况下,性能接近理想CSI的基准。
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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