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Time-based cross-layer adaptations in wireless cognitive radio ad hoc networks

机译:无线认知无线电自组织网络中基于时间的跨层适应

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Secondary ad hoc users of Cognitive Radio networks experience constant fluctuations of their link quality due to dynamic traffic behavior of their primary network counterparts. Several cognitive-aware MAC and routing protocols have been proposed in order to counterfeit properly such spectrum variations. In this paper, we introduce a vertical time-based control mechanism in the traditional protocol stack, aiming at properly balancing the inherent trade-off between instant local adaptations at MAC layer, against slower, but more globally aware rerouting reaction mechanisms. Based on localized and independent node decisions, an optimal feedback policy is proposed in order to exploit the most appropriate protocol layer in each case and provide per link channel assignments, such that flow rate requirements are satisfied with the least cost. We use Markov theory to examine the coexistence of primary and secondary networks, while the optimal decision policy is derived via a Markov Decision Process (MDP) and linear programming. Analysis and simulations are used for performance evaluation and together they confirm that the proposed time-based cross-layer feedback strategy contributes to higher network performance regarding flow rate requirements, sensing and rerouting costs.
机译:认知无线电网络的次要临时用户由于其主要网络对等方的动态流量行为,其链路质量会不断波动。为了正确地伪造这种频谱变化,已经提出了几种认知感知的MAC和路由协议。在本文中,我们在传统协议栈中引入了一种基于时间的垂直控制机制,旨在适当地平衡MAC层的即时本地自适应与较慢但更具有全局意识的重路由反应​​机制之间的固有权衡。基于局部和独立的节点决策,提出了一种最佳反馈策略,以便在每种情况下利用最合适的协议层并提供每个链路通道分配,从而以最低的成本满足流量要求。我们使用马尔可夫理论来检验主次网络的共存性,而最优决策策略是通过马尔可夫决策过程(MDP)和线性规划得出的。分析和模拟用于性能评估,它们一起证实了所提出的基于时间的跨层反馈策略有助于提高网络性能,例如流量需求,感测和路由成本。

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