优化认知网络:级联信道上的强化学习与能量收集

IF 4 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS IEEE Systems Journal Pub Date : 2024-08-26 DOI:10.1109/JSYST.2024.3442017
Deemah H. Tashman;Soumaya Cherkaoui;Walaa Hamouda
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引用次数: 0

摘要

本文提出了一种基于强化学习的方法来提高级联信道上底层认知无线电网络的物理层安全性。这些渠道被用于高度移动的网络,如认知车辆网络(CVN)。另外,窃听器的目的是拦截辅助用户之间的通信。SU接收机具有全双工和能量收集能力,能够产生干扰信号,迷惑窃听者,提高安全性。此外,SU发射器从环境射频信号中提取能量,以便为后续传输提供动力到其预期的接收器。为了优化CVN中SU的隐私性和可靠性,在需要多个DQN代理的情况下使用了深度q网络(DQN)策略,以便在每个SU发送器上分配一个代理。SUs的目标是确定最优的传输功率,并决定在每个时间段内是收集能量还是发送消息,以最大限度地提高其保密率。此后,我们提出了一种DQN方法,以最大限度地提高单元的吞吐量,同时尊重主用户接收端可接受的干扰阈值。根据我们的发现,我们的策略在安全性和可靠性方面优于其他两种基准策略。
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Optimizing Cognitive Networks: Reinforcement Learning Meets Energy Harvesting Over Cascaded Channels
This article presents a reinforcement learning-based approach to improve the physical layer security of an underlay cognitive radio network over cascaded channels. These channels are utilized in highly mobile networks such as cognitive vehicular networks (CVN). In addition, an eavesdropper aims to intercept the communications between secondary users (SUs). The SU receiver has full-duplex and energy harvesting capabilities to generate jamming signals to confound the eavesdropper and enhance security. Moreover, the SU transmitter extracts energy from ambient radio frequency signals in order to power subsequent transmissions to its intended receiver. To optimize the privacy and reliability of the SUs in a CVN, a deep Q-network (DQN) strategy is utilized where multiple DQN agents are required such that an agent is assigned at each SU transmitter. The objective for the SUs is to determine the optimal transmission power and decide whether to collect energy or transmit messages during each time period in order to maximize their secrecy rate. Thereafter, we propose a DQN approach to maximize the throughput of the SUs while respecting the interference threshold acceptable at the receiver of the primary user. According to our findings, our strategy outperforms two other baseline strategies in terms of security and reliability.
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来源期刊
IEEE Systems Journal
IEEE Systems Journal 工程技术-电信学
CiteScore
9.80
自引率
6.80%
发文量
572
审稿时长
4.9 months
期刊介绍: This publication provides a systems-level, focused forum for application-oriented manuscripts that address complex systems and system-of-systems of national and global significance. It intends to encourage and facilitate cooperation and interaction among IEEE Societies with systems-level and systems engineering interest, and to attract non-IEEE contributors and readers from around the globe. Our IEEE Systems Council job is to address issues in new ways that are not solvable in the domains of the existing IEEE or other societies or global organizations. These problems do not fit within traditional hierarchical boundaries. For example, disaster response such as that triggered by Hurricane Katrina, tsunamis, or current volcanic eruptions is not solvable by pure engineering solutions. We need to think about changing and enlarging the paradigm to include systems issues.
期刊最新文献
2024 Index IEEE Systems Journal Vol. 18 Front Cover Editorial Table of Contents IEEE Systems Council Information
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