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Conjectural variations in multi-agent reinforcement learning for energy-efficient cognitive wireless mesh networks

机译:节能认知无线网格网络的多主体强化学习中的猜想变化

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As energy saving and environmental protection become an inevitable trend, researchers need to shift their focus to “green” oriented architecture design. Recent advances in the area of cognitive radio (CR) have significant potential towards “green” communications. One of the critical challenges for operating CRs in a wireless mesh network is how to efficiently allocate transmission powers and frequency resource among the secondary users (SUs) while satisfying the quality-of-service constraints of primary users. Due to the SUs'' intelligent and selfish properties, this paper focuses on the non-cooperative spectrum sharing in cognitive wireless mesh networks formed by a number of clusters. In order to study the competition behaviors of SUs in a dynamic environment, the problem is modeled as a stochastic learning process. We first extend the single-agent reinforcement learning (RL) to a multi-user context, based on which a conjecture based multi-agent RL algorithm is proposed. A rational SU learns the optimal transmission strategy from the conjecture over the other SUs'' responses.
机译:随着节能和环保成为必然趋势,研究人员需要将重点转移到“绿色”导向的建筑设计上。认知无线电(CR)领域的最新进展对于“绿色”通信具有巨大的潜力。在无线网状网络中操作CR的关键挑战之一是如何在满足主要用户的服务质量约束的同时,在次要用户(SU)之间高效地分配传输功率和频率资源。由于SU的智能和自私特性,本文着重研究了由多个集群组成的认知无线网状网络中的非合作频谱共享。为了研究SU在动态环境中的竞争行为,将该问题建模为随机学习过程。我们首先将单智能体强化学习(RL)扩展到多用户上下文,在此基础上提出了一种基于猜想的多智能体RL算法。一个有理性的SU从猜想中学习其他SU响应中的最优传输策略。

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