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Competing Cognitive Resilient Networks

机译:竞争性认知弹性网络

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摘要

We introduce competing cognitive resilient network (CCRN) of mobile radios challenged to optimize data throughput and networking efficiency under dynamic spectrum access and adversarial threats (e.g., jamming). Unlike the conventional approaches, CCRN features both communicator and jamming nodes in a friendly coalition to take joint actions against hostile networking entities. In particular, this paper showcases hypothetical blue force and red force CCRNs and their competition for open spectrum resources. We present state-agnostic and stateful solution approaches based on the decision theoretic framework. The state-agnostic approach builds on multiarmed bandit to develop an optimal strategy that enables the exploratory-exploitative actions from sequential sampling of channel rewards. The stateful approach makes an explicit model of states and actions from an underlying Markov decision process and uses multiagent ${Q}$ -learning to compute optimal node actions. We provide a theoretical framework for CCRN and propose new algorithms for both approaches. Simulation results indicate that the proposed algorithms outperform some of the most important algorithms known to date.
机译:我们介绍了竞争性的移动无线电认知弹性网络(CCRN),在动态频谱访问和对抗性威胁(例如干扰)下,它们面临着优化数据吞吐量和网络效率的挑战。与传统方法不同,CCRN在友好联盟中同时具有通信器节点和干扰节点,可以共同采取行动打击敌对的网络实体。特别是,本文展示了假设的蓝力量和红力量CCRN及其对开放频谱资源的竞争。我们提出基于决策理论框架的状态不可知和状态解决方案。状态不可知的方法建立在多臂匪徒的基础上,以开发出一种最佳策略,该策略可以通过对通道奖励的顺序采样来实现探索性剥削行动。有状态方法通过底层的马尔可夫决策过程建立了状态和动作的显式模型,并使用多主体$ {Q} $-学习来计算最佳节点动作。我们为CCRN提供了理论框架,并针对这两种方法提出了新的算法。仿真结果表明,所提出的算法优于目前为止已知的一些最重要的算法。

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