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Reinforcement Learning-Based Routing Protocol to Minimize Channel Switching and Interference for Cognitive Radio Networks

机译:基于加强学习的路由协议,以最大限度地减少认知无线电网络的信道切换和干扰

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In the existing network-layered architectural stack of Cognitive Radio Ad Hoc Network (CRAHN), channel selection is performed at the Medium Access Control (MAC) layer. However, routing is done on the network layer. Due to this limitation, the Secondary/Unlicensed Users (SUs) need to access the channel information from the MAC layer whenever the channel switching event occurred during the data transmission. This issue delayed the channel selection process during the immediate routing decision for the channel switching event to continue the transmission. In this paper, a protocol is proposed to implement the channel selection decisions at the network layer during the routing process. The decision is based on past and expected future routing decisions of Primary Users (PUs). A learning agent operating in the cross-layer mode of the network-layered architectural stack is implemented in the spectrum mobility manager to pass the channel information to the network layer. This information is originated at the MAC layer. The channel selection is performed on the basis of reinforcement learning algorithms such as No-External Regret Learning, Q-Learning, and Learning Automata. This leads to minimizing the channel switching events and user interferences in the Reinforcement Learning- (RL-) based routing protocol. Simulations are conducted using Cognitive Radio Cognitive Network simulator based on Network Simulator (NS-2). The simulation results showed that the proposed routing protocol performed better than all the other comparative routing protocols in terms of number of channel switching events, average data rate, packet collision, packet loss, and end-to-end delay. The proposed routing protocol implies the improved Quality of Service (QoS) of the delay sensitive and real-time networks such as Cellular and Tele Vision (TV) networks.
机译:在现有的网络分层架构堆栈的认知无线电ad hoc网络(CRAHN)中,在媒体访问控制(MAC)层上执行频道选择。但是,路由在网络层上完成。由于这种限制,每当在数据传输期间发生信道切换事件时,辅助/未许可用户(SUS)需要从MAC层访问信道信息。此问题延迟了通道切换事件的直接路由决定期间的频道选择过程以继续传输。在本文中,提出了一种协议来在路由过程期间在网络层处实现信道选择决策。该决定是基于过去和预期的主要用户(PU)的未来路由决策。在频谱移动管理器中实现在网络分层架构栈的横向模式中操作的学习代理,以将信道信息传递给网络层。此信息源自MAC层。基于加强学习算法,例如无外部遗憾学习,Q学习和学习自动机进行频道选择。这导致最小化基于加强学习的信道切换事件和用户干扰 - (RL-)的路由协议。使用基于网络仿真器(NS-2)的认知无线电认知网络仿真器进行仿真。仿真结果表明,所提出的路由协议在信道切换事件的数量,平均数据速率,分组冲突,分组丢失和端到端延迟方面比所有其他比较路由协议更好地执行。所提出的路由协议意味着提高延迟敏感和实时网络的服务质量(QoS),例如蜂窝和远程视觉(电视)网络。

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