Device mobility in dense Wi-Fi networks offers several challenges. Two well-known problems related to device mobility are handover prediction and access point selection. Due to the complex nature of the radio environment, analytical models may not characterize the wireless channel, which makes the solution of these problems very difficult. Recently, cognitive network architectures using sophisticated learning techniques are increasingly being applied to such problems. In this paper, we propose data-driven machine learning (ML) schemes to efficiently solve these problems in wireless LAN (WLAN) networks. The proposed schemes are evaluated and results are compared with traditional approaches to the aforementioned problems. The results report significant improvement in network performance by applying the proposed schemes. The proposed scheme for handover prediction outperforms traditional methods i.e. received signal strength method and traveling distance method by reducing the number of unnecessary handovers by 60% and 50% respectively. Similarly, in AP selection, the proposed scheme outperforms the strongest signal first and least loaded first algorithms by achieving higher throughput gains up to 9.2% and 8% respectively.
翻译:在密集的Wi-Fi网络中,与设备移动有关的两个众所周知的问题提出了若干挑战。与设备移动有关的两个问题是移交预测和接入点的选择。由于无线电环境的复杂性,分析模型可能不会说明无线频道的特点,这使得解决这些问题非常困难。最近,使用尖端学习技术的认知网络结构正在越来越多地应用于这些问题。在本文中,我们提出了数据驱动机器学习计划,以有效解决无线局域网网络中的这些问题。对拟议的计划进行了评估,并将结果与上述问题的传统方法进行比较。结果显示,通过应用拟议的计划,网络的性能有了显著改善。拟议的传输预测计划比传统方法(即收到信号强度方法和旅行距离方法,将不必要的传输的数量分别减少60%和50%)要好得多。同样,在AP选择中,拟议的计划通过实现更高水平的吞吐收益,分别达到9.2%和8%,从而超过了最强的信号第一算算法。