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Multi-Objective Reinforcement Learning for Cognitive Radio-Based Satellite Communications

机译:基于认知无线电的卫星通信的多目标强化学习

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Previous research on cognitive radios has addressed the performance of various machine-learning and optimization techniques for decision making of terrestrial link properties. In this paper, we present our recent investigations with respect to reinforcement learning that potentially can be employed by future cognitive radios installed onboard satellite communications systems specifically tasked with radio resource management. This work analyzes the performance of learning, reasoning, and decision making while considering multiple objectives for time-varying communications channels, as well as different cross-layer requirements. Based on the urgent demand for increased bandwidth, which is being addressed by the next generation of high-throughput satellites, the performance of cognitive radio is assessed considering links between a geostationary satellite and a fixed ground station operating at Ka-band (26 GHz). Simulation results show multiple objective performance improvements of more than 3.5 times for clear sky conditions and 6.8 times for rain conditions.
机译:先前对认知无线电的研究已经解决了用于决策地面链路属性的各种机器学习和优化技术的性能。在本文中,我们介绍了有关强化学习的最新研究,强化学习可能被安装在专门负责无线电资源管理的卫星通信系统上的未来认知无线电所采用。这项工作分析了学习,推理和决策的性能,同时考虑了时变通信渠道的多个目标以及不同的跨层需求。基于下一代高吞吐量卫星所解决的对增加带宽的迫切需求,评估认知无线电的性能时考虑了对地静止卫星与工作在Ka频段(26 GHz)的固定地面站之间的链路。仿真结果表明,多目标性能在晴空条件下提高了3.5倍以上,在雨天条件下提高了6.8倍。

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