Tian Le, Khorov Evgeny, Latré Steven, Famaey Jeroen
IDLab, Department of Mathematics and Computer Science, University of Antwerp-imec, 2020 Antwerp, Belgium.
Network Protocols Research Lab, Institute for Information Transmission Problems, Russian Academy of Sciences, 127051 Moscow, Russia.
Sensors (Basel). 2017 Jul 4;17(7):1559. doi: 10.3390/s17071559.
IEEE 802.11ah, marketed as Wi-Fi HaLow, extends Wi-Fi to the sub-1 GHz spectrum. Through a number of physical layer (PHY) and media access control (MAC) optimizations, it aims to bring greatly increased range, energy-efficiency, and scalability. This makes 802.11ah the perfect candidate for providing connectivity to Internet of Things (IoT) devices. One of these new features, referred to as the Restricted Access Window (RAW), focuses on improving scalability in highly dense deployments. RAW divides stations into groups and reduces contention and collisions by only allowing channel access to one group at a time. However, the standard does not dictate how to determine the optimal RAW grouping parameters. The optimal parameters depend on the current network conditions, and it has been shown that incorrect configuration severely impacts throughput, latency and energy efficiency. In this paper, we propose a traffic-adaptive RAW optimization algorithm (TAROA) to adapt the RAW parameters in real time based on the current traffic conditions, optimized for sensor networks in which each sensor transmits packets with a certain (predictable) frequency and may change the transmission frequency over time. The TAROA algorithm is executed at each target beacon transmission time (TBTT), and it first estimates the packet transmission interval of each station only based on packet transmission information obtained by access point (AP) during the last beacon interval. Then, TAROA determines the RAW parameters and assigns stations to RAW slots based on this estimated transmission frequency. The simulation results show that, compared to enhanced distributed channel access/distributed coordination function (EDCA/DCF), the TAROA algorithm can highly improve the performance of IEEE 802.11ah dense networks in terms of throughput, especially when hidden nodes exist, although it does not always achieve better latency performance. This paper contributes with a practical approach to optimizing RAW grouping under dynamic traffic in real time, which is a major leap towards applying RAW mechanism in real-life IoT networks.
IEEE 802.11ah,即市场上所称的Wi-Fi HaLow,将Wi-Fi扩展到了低于1GHz的频段。通过一系列物理层(PHY)和媒体访问控制(MAC)优化,它旨在大幅增加覆盖范围、提高能源效率并增强可扩展性。这使得802.11ah成为为物联网(IoT)设备提供连接的理想选择。这些新特性之一,即受限访问窗口(RAW),专注于在高密度部署中提高可扩展性。RAW将站点分成组,并通过一次只允许一个组访问信道来减少竞争和冲突。然而,该标准并未规定如何确定最佳的RAW分组参数。最佳参数取决于当前的网络状况,并且已经表明,错误的配置会严重影响吞吐量、延迟和能源效率。在本文中,我们提出了一种流量自适应RAW优化算法(TAROA),以便根据当前的流量状况实时调整RAW参数,该算法针对传感器网络进行了优化,其中每个传感器以一定(可预测)频率发送数据包,并且可能随时间改变传输频率。TAROA算法在每个目标信标传输时间(TBTT)执行,它首先仅根据接入点(AP)在上一个信标间隔期间获得的数据包传输信息来估计每个站点的数据包传输间隔。然后,TAROA根据这个估计的传输频率确定RAW参数并将站点分配到RAW时隙。仿真结果表明,与增强分布式信道访问/分布式协调功能(EDCA/DCF)相比,TAROA算法在吞吐量方面可以显著提高IEEE 802.11ah密集网络的性能,尤其是在存在隐藏节点的情况下,尽管它并不总是能实现更好的延迟性能。本文提供了一种在动态流量下实时优化RAW分组的实用方法,这是朝着在实际物联网网络中应用RAW机制迈出的重要一步。