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A Cross-Layer Routing Protocol Based on Quasi-Cooperative Multi-Agent Learning for Multi-Hop Cognitive Radio Networks

机译:基于多跳认知无线网络的准合作多Agent学习的跨层路由协议

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摘要

Transmission latency minimization and energy efficiency improvement are two main challenges in multi-hop Cognitive Radio Networks (CRN), where the knowledge of topology and spectrum statistics are hard to obtain. For this reason, a cross-layer routing protocol based on quasi-cooperative multi-agent learning is proposed in this study. Firstly, to jointly consider the end-to-end delay and power efficiency, a comprehensive utility function is designed to form a reasonable tradeoff between the two measures. Then the joint design problem is modeled as a Stochastic Game (SG), and a quasi-cooperative multi-agent learning scheme is presented to solve the SG, which only needs information exchange with previous nodes. To further enhance performance, experience replay is applied to the update of conjecture belief to break the correlations and reduce the variance of updates. Simulation results demonstrate that the proposed scheme is superior to traditional algorithms leading to a shorter delay, lower packet loss ratio and higher energy efficiency, which is close to the performance of an optimum scheme.
机译:传输延迟的最小化和能效的提高是多跳认知无线电网络(CRN)的两个主要挑战,在这些网络中,拓扑和频谱统计知识很难获得。因此,本文提出了一种基于准合作多智能体学习的跨层路由协议。首先,为了共同考虑端到端的延迟和功率效率,设计了一个全面的效用函数,以在这两种措施之间形成合理的权衡。然后将联合设计问题建模为随机博弈(SG),并提出了一种准合作的多智能体学习方案来求解该SG,该方案只需要与先前的节点交换信息即可。为了进一步提高性能,将经验重播应用于猜想信念的更新,以打破相关性并减少更新的方差。仿真结果表明,该方案优于传统算法,具有较短的延迟,较低的丢包率和较高的能效,接近于最优方案的性能。

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