强化学习在认知无线电网络中的应用

K. Yau, P. Komisarczuk, Paul D. Teal
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引用次数: 43

摘要

认知无线电(CR)使未经许可的用户能够在广泛的许可信道范围内根据频谱可用性自适应地改变其发射和接收参数。认知周期(CC)的概念是CR的关键元素,它提供上下文感知和智能,以便每个未授权用户能够观察并对其操作环境执行最佳操作,以提高性能。CC可用于CR网络中的各种应用方案,如DCS (Dynamic Channel Selection)、拓扑管理、拥塞控制、调度等。在本文中,强化学习(RL)被应用于实现CC的概念。我们提供了我们的工作的广泛概述,包括单智能体和多智能体方法,以表明强化学习是一种很有前途的技术。我们在本文中的贡献是提出了使用我们的RL方法的各种应用方案,以保证在CR网络中进一步研究RL。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applications of Reinforcement Learning to Cognitive Radio Networks
Cognitive Radio (CR) enables an unlicensed user to change its transmission and reception parameters adaptively according to spectrum availability in a wide range of licensed channels. The concept of a Cognition Cycle (CC) is the key element of CR to provide context awareness and intelligence so that each unlicensed user is able to observe and carry out an optimal action on its operating environment for performance enhancement. The CC can be applied in various application schemes in CR networks such as Dynamic Channel Selection (DCS), topology management, congestion control, and scheduling. In this paper, Reinforcement Learning (RL) is applied to implement the conceptual of the CC. We provide an extensive overview of our work including single-agent and multi-agent approaches to show that RL is a promising technique. Our contribution in this paper is to propose various application schemes using our RL approach to warrant further research on RL in CR networks.
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