基于强化学习的认知无线电网络频谱和功率高效抗干扰方法

Hussein Jdeed, Wissam Altabban, Samer Jamal
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引用次数: 0

摘要

频谱稀缺、频谱效率、功率限制和干扰攻击是无线网络面临的核心挑战。虽然认知无线电网络(CRN)可以在空闲时共享许可频段,但二级用户(SU)应有效使用频谱,以确保高数据传输速率。此外,次级用户(SU)的移动性也使功耗成为无线网络中的一个令人担忧的问题。为了减轻攻击者对认知无线电网络(CRN)的影响,人们提出了各种抗干扰方案,其中一些方案旨在增加信道容量或提高频谱效率增益。我们的目标是提高 CRN 的性能,并通过确保有效利用频谱和延长网络寿命,在智能干扰器存在的情况下为 SU 建立更可靠的连接。我们的方法假定 SU 观察到频谱可用性和信道增益。然后,SU 会了解干扰者的行为,并根据数据和控制信道的数量选择适当的策略,从而共同优化频谱效率和功耗。在这一博弈中,SU 与干扰者之间的互动被模拟为零和随机博弈,我们采用强化学习来解决这一博弈。仿真结果表明,低信道增益会导致 SU 选择大量数据信道。然而,当信道增益较高时,SU 会增加控制信道的数量,以保证更可靠的连接。考虑到频谱效率,SU 会通过减少使用信道的数量来节省能量。在干扰攻击下,考虑到已用信道的增益,SU 选择适当数量的控制信道和数据信道,以确保可靠、高效和长期的连接。
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Spectrum and Power Efficient Anti-Jamming Approach for Cognitive Radio Networks Based on Reinforcement Learning
Spectrum scarcity, spectrum efficiency, power constraints, and jamming attacks are core challenges that face wireless networks. While cognitive radio networks (CRNs) enable the sharing of licensed bands when they are unoccupied, the spectrum should be used efficiently by the SU to ensure a high data rate transmission. In addition, the mobility of the secondary users (SUs) makes power consumption a matter of concern in wireless networks. Because of the open environment, the jamming attack can easily deteriorate the performance and disrupt the connections. Various anti-jamming schemes have been proposed to mitigate the attacker's impact on Cognitive Radio Networks (CRNs), some of the proposed schemes aim to increase channel capacity or improve spectrum-efficient gain. However, few of them have considered the secondary user's (SU’s) power consumption. We aim to enhance the performance of CRN and establish more reliable connections for the SU in the presence of smart jammer by ensuring efficient spectrum utilization and extending the network lifetime. To achieve our objectives, we propose an anti-jamming approach that adopts frequency hopping. Our approach assumes that SUs observe spectrum availability and channel gain. Then, SU learns the jammer behaviour and goes for the appropriate policy in terms of the number of data and control channels that optimize jointly spectrum efficiency and power consumption. Within, the interaction between the SU and the jammer is modelled as a zero-sum stochastic game, and we employ reinforcement learning to address this game. SUs learn the optimal policy that maximizes the spectrum efficiency and minimizes the power consumption in the presence of a smart jammer. Simulation results show that the low channel gain leads the SU to select a high number of data channels. However, when the channel gain is high, the SU increases the number of control channels to guarantee a more reliable connection. Taking into account the spectrum efficiency, SUs save their energy by decreasing the number of used channels. The proposed strategy achieves better performance in comparison with myopic learning and the random strategy. Under a jamming attack, considering the gain of utilized channels, SUs select the appropriate number of control and data channels to ensure a reliable, efficient, and long-term connection.
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