The innovation of Wi-Fi 6, IEEE 802.11ax, was be approved as the next sixth-generation (6G) technology of wireless local area networks (WLANs) by improving the fundamental performance of latency, throughput, and so on. The main technical feature of orthogonal frequency division multiple access (OFDMA) supports multi-users to transmit respective data concurrently via the corresponding access points (APs). However, the conventional IEEE 802.11 protocol for Wi-Fi roaming selects the target AP only depending on received signal strength indication (RSSI) which is obtained by the received Response frame from the APs. In the long term, it may lead to congestion in a single channel under the scenarios of dense users further increasing the association delay and packet drop rate, even reducing the quality of service (QoS) of the overall system. In this paper, we propose a multi-agent deep Q-learning for fast roaming (MADAR) algorithm to effectively minimize the latency during the station roaming for Smart Warehouse in Wi-Fi 6 system. The MADAR algorithm considers not only RSSI but also channel state information (CSI), and through online neural network learning and weighting adjustments to maximize the reward of the action selected from Epsilon-Greedy. Compared to existing benchmark methods, the MADAR algorithm has been demonstrated for improved roaming latency by analyzing the simulation result and realistic dataset.
翻译:Wi-Fi 6,即 IEEE 802.11ax 技术创新,通过改进延迟、吞吐量等基本性能,获得了成为下一代无线局域网(WLANs)的六代技术(6G)的批准。正交频分多址(OFDMA)的主要技术特点支持多用户通过相应的接入点(APs)同时传输各自的数据。然而,Wi-Fi漫游的传统 IEEE 802.11协议仅根据接收到的 AP 反应帧获取的接收信号强度指示(RSSI)选择目标 AP。从长远来看,这可能会导致在密集用户场景下单个通道拥塞,进一步增加关联延迟和数据包丢失率,甚至降低整个系统的服务质量(QoS)。本文提出了一种针对 Wi-Fi 6 系统中智能仓库的快速漫游的多智能体深度 Q-学习(MADAR)算法,以有效地最小化站漫游时延。MADAR 算法不仅考虑 RSSI,还考虑了信道状态信息(CSI),并通过在线神经网络学习和加权调整,使 Epsilon-Greedy 的选择动作获得最大化的奖励。通过分析模拟结果和实际数据集,与现有基准方法相比,证明了 MADAR 算法具有改进的漫游延迟。