Interference Constrained Beam Alignment for Time-Varying Channels via Kernelized Bandits

Yuntian Deng, Xingyu Zhou, A. Ghosh, Abhishek K. Gupta, N. Shroff
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引用次数: 3

Abstract

To fully utilize the abundant spectrum resources in millimeter wave (mmWave), Beam Alignment (BA) is necessary for large antenna arrays to achieve large array gains. In practical dynamic wireless environments, channel modeling is challenging due to time-varying and multipath effects. In this paper, we formulate the beam alignment problem as a nonstationary online learning problem with the objective to maximize the received signal strength under interference constraint. In particular, we employ the non-stationary kernelized bandit to leverage the correlation among beams and model the complex beamforming and multipath channel functions. Furthermore, to mitigate interference to other user equipment, we leverage the primal-dual method to design a constrained UCB-type kernelized bandit algorithm. Our theoretical analysis indicates that the proposed algorithm can adaptively adjust the beam in time-varying environments, such that both the cumulative regret of the received signal and constraint violations have sublinear bounds with respect to time. This result is of independent interest for applications such as adaptive pricing and news ranking. In addition, the algorithm assumes the channel is a black-box function and does not require any prior knowledge for dynamic channel modeling, and thus is applicable in a variety of scenarios. We further show that if the information about the channel variation is known, the algorithm will have better theoretical guarantees and performance. Finally, we conduct simulations to highlight the effectiveness of the proposed algorithm.
时变信道的干扰约束波束核束对准
为了充分利用毫米波(mmWave)中丰富的频谱资源,大型天线阵列必须进行波束对准(BA)才能获得较大的阵列增益。在实际的动态无线环境中,由于时变和多径效应,信道建模具有挑战性。在本文中,我们将波束对准问题表述为一个非平稳在线学习问题,其目标是在干扰约束下使接收信号强度最大化。特别地,我们采用非平稳核化带宽来利用波束之间的相关性,并对复杂的波束形成和多径信道函数进行建模。此外,为了减轻对其他用户设备的干扰,我们利用原始对偶方法设计了一种约束ucb型核化强盗算法。理论分析表明,该算法可以在时变环境中自适应调整波束,使得接收信号的累积遗憾量和约束违反量都随时间具有亚线性边界。这一结果对于自适应定价和新闻排名等应用具有独立的意义。此外,该算法假定信道为黑盒函数,动态信道建模不需要任何先验知识,因此适用于多种场景。我们进一步证明,如果信道变化信息是已知的,算法将有更好的理论保证和性能。最后,通过仿真验证了算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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