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首页> 外文期刊>Energies >An Energy-Efficient Cross-Layer Routing Protocol for Cognitive Radio Networks Using Apprenticeship Deep Reinforcement Learning
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An Energy-Efficient Cross-Layer Routing Protocol for Cognitive Radio Networks Using Apprenticeship Deep Reinforcement Learning

机译:使用学徒深度强化学习的认知无线电网络的节能跨层路由协议

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摘要

Deep reinforcement learning (DRL) has been successfully used for the joint routing and resource management in large-scale cognitive radio networks. However, it needs lots of interactions with the environment through trial and error, which results in large energy consumption and transmission delay. In this paper, an apprenticeship learning scheme is proposed for the energy-efficient cross-layer routing design. Firstly, to guarantee energy efficiency and compress huge action space, a novel concept called dynamic adjustment rating is introduced, which regulates transmit power efficiently with multi-level transition mechanism. On top of this, the Prioritized Memories Deep Q-learning from Demonstrations (PM-DQfD) is presented to speed up the convergence and reduce the memory occupation. Then the PM-DQfD is applied to the cross-layer routing design for power efficiency improvement and routing latency reduction. Simulation results confirm that the proposed method achieves higher energy efficiency, shorter routing latency and larger packet delivery ratio compared to traditional algorithms such as Cognitive Radio Q-routing (CRQ-routing), Prioritized Memories Deep Q-Network (PM-DQN), and Conjecture Based Multi-agent Q-learning Scheme (CBMQ).
机译:深度强化学习(DRL)已成功用于大规模认知无线电网络中的联合路由和资源管理。但是,它需要通过反复试验与环境进行大量交互,从而导致大量的能耗和传输延迟。本文针对高能效跨层路由设计提出了一种学徒学习方案。首先,为了保证能量效率并压缩巨大的动作空间,引入了一种称为动态调整额定值的新概念,该概念通过多级过渡机制有效地调节发射功率。除此之外,还提供了优先级的演示记忆深度Q学习(PM-DQfD),以加快收敛速度​​并减少内存占用。然后将PM-DQfD应用于跨层路由设计,以提高功率效率并减少路由等待时间。仿真结果证明,与传统算法(例如认知无线电Q路由(CRQ-routing),优先级存储器深度Q网络(PM-DQN)和基于猜想的多主体Q学习方案(CBMQ)。

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