论文标题
部分可观测时空混沌系统的无模型预测
Joint Uplink-Downlink Capacity and Coverage Optimization via Site-Specific Learning of Antenna Settings
论文作者
论文摘要
我们提出了一个新型框架,用于优化异质细胞网络中的天线参数设置。我们为覆盖范围和容量提出了优化问题 - 在下行链路(DL)和上行链路(UL)中,它配置了倾斜角度,垂直半功率束宽(HPBW)以及整个网络跨网络的天线阵列的水平HPBW。针对此非凸面问题提出的新型数据驱动框架,灵感来自贝叶斯优化(BO)和差异进化算法,是样本效率高效的,并且很快收敛,同时可扩展到大型网络。通过共同优化DL和UL性能,我们考虑了这两个链接的不同信号功率和干扰特征,从而可以在每个链接和容量之间进行优雅的权衡。我们对由AT&T实验室开发的最先进的5G NR细胞系统级模拟器进行的实验表明,所提出的算法始终如一,并且显着优于3GPP默认设置,随机搜索和常规BO。在一个现实的环境中,与常规BO相比,我们的方法将平均总和量率提高了60%以上,同时将中断概率降低了80%以上。与3GPP默认设置相比,我们方法的收益大大更大。结果还表明,通过关节UL-DL优化,可以极大地改善DL吞吐量和UL覆盖范围的重要组合。
We propose a novel framework for optimizing antenna parameter settings in a heterogeneous cellular network. We formulate an optimization problem for both coverage and capacity - in both the downlink (DL) and uplink (UL) - which configures the tilt angle, vertical half-power beamwidth (HPBW), and horizontal HPBW of each cell's antenna array across the network. The novel data-driven framework proposed for this non-convex problem, inspired by Bayesian optimization (BO) and differential evolution algorithms, is sample-efficient and converges quickly, while being scalable to large networks. By jointly optimizing DL and UL performance, we take into account the different signal power and interference characteristics of these two links, allowing a graceful trade-off between coverage and capacity in each one. Our experiments on a state-of-the-art 5G NR cellular system-level simulator developed by AT&T Labs show that the proposed algorithm consistently and significantly outperforms the 3GPP default settings, random search, and conventional BO. In one realistic setting, and compared to conventional BO, our approach increases the average sum-log-rate by over 60% while decreasing the outage probability by over 80%. Compared to the 3GPP default settings, the gains from our approach are considerably larger. The results also indicate that the practically important combination of DL throughput and UL coverage can be greatly improved by joint UL-DL optimization.