Sample-Efficient Learning of Cellular Antenna Parameter Settings

Ezgi Tekgul, T. Novlan, S. Akoum, J. Andrews
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引用次数: 4

Abstract

Finding an optimum configuration of base station (BS) antenna parameters is a challenging, non-convex problem for cellular networks. The chosen configuration has major implications for coverage and throughput in real-world systems, as it effects signal strength differently throughout the cell, as well as dictating the interference caused to other cells. In this paper, we propose a novel and sample-efficient data-driven methodology for optimizing antenna downtilt angles. Our approach combines Bayesian optimization (BO) with Differential Evolution (DE): BO decreases the computational burden of DE, while DE helps BO avoid the curse of dimensionality. We evaluate the performance on a realistic state-of-the-art cellular system simulator developed by AT&T Labs, that includes all layers of the protocol stack and sophisticated channel models. Our results show that the proposed algorithm outperforms Bayesian optimization, random selection, and the baseline settings adopted in 3GPP by nontrivial amounts in terms of both capacity and coverage. Also, our approach is notably more time-efficient than DE alone.
蜂窝天线参数设置的样本高效学习
对于蜂窝网络来说,寻找基站(BS)天线参数的最佳配置是一个具有挑战性的非凸问题。所选择的配置对实际系统的覆盖和吞吐量具有重要影响,因为它对整个小区的信号强度有不同的影响,并且决定了对其他小区造成的干扰。在本文中,我们提出了一种新颖的、样本效率高的数据驱动方法来优化天线向下倾斜角度。我们的方法将贝叶斯优化(BO)与差分进化(DE)相结合:差分进化减少了差分进化的计算负担,而差分进化帮助差分进化避免了维数诅咒。我们在AT&T实验室开发的最先进的蜂窝系统模拟器上评估了性能,该模拟器包括协议栈的所有层和复杂的信道模型。我们的研究结果表明,该算法在容量和覆盖范围方面都优于贝叶斯优化、随机选择和3GPP中采用的基线设置。而且,我们的方法明显比单独使用DE更省时。
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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