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Learning-Based Channel Selection of VDSA Networks in Shared TV Whitespace

机译:共享电视空间中VDSA网络的基于学习的频道选择

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In this paper, we propose a reinforcement learning-based approach for enabling vehicles to make intelligent channel selection choices across TV whitespace spectrum. In order for vehicle communication networks to dynamically access TV whitespace in a secondary manner, it is imperative that these communication systems be capable of coexisting with other types of secondary wireless networks operating within the same frequency range. Consequently, we first propose a TV whitespace channel sharing scheme that would facilitate the coexistence between WLAN, WRAN, and vehicular communication networks. Using the channel utilization variations observed by a collection of mobile vehicular communication systems, we then devised a reinforcement learning-based adaptive channel selection algorithm that employs channel utilization sensing in order to reinforce the decisions made by the vehicular communication system. Moreover, the parameters of the proposed learning approach are adaptively tuned in order to achieve better adaptation to a particular environment. A computer emulation environment composed of actual real-world sensing measurement data and a simulated TV whitespace network is created in order to accurately model the characteristics of future wireless environment, as well as to test the proposed learning-based channel access approach. Experimental results show a significant performance improvement with respect to vehicle communication.
机译:在本文中,我们提出了一种加强基于学习的方法,使车辆能够在电视空间频谱上制作智能频道选择选择。为了使车辆通信网络以次要方式动态访问电视空间,必须必须与在相同频率范围内操作的其他类型的次要无线网络共存。因此,我们首先提出了一种电视空间信道共享方案,其将促进WLAN,WRAN和车辆通信网络之间的共存。使用由移动车辆通信系统的集合观察到的信道利用变化,我们设计了一种基于加强学习的自适应信道选择算法,该自适应信道选择算法采用信道利用感测,以便加强由车辆通信系统制成的决定。此外,建议的学习方法的参数被自适应地调整,以便更好地适应特定环境。创建由实际现实世界传感测量数据和模拟电视空间网络组成的计算机仿真环境,以便准确地模拟未来无线环境的特征,以及测试所提出的基于学习的信道访问方法。实验结果表明,关于车辆通信的显着性能改善。

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