Over the last decade, the bandwidth expansion and MU-MIMO spectral efficiency have promised to increase data throughput by allowing concurrent communication between one Access Point and multiple users. However, we are still a long way from enjoying such MU-MIMO MAC protocol improvements for bandwidth hungry applications such as video streaming in practical WiFi network settings due to heterogeneous channel conditions and devices, unreliable transmissions, and lack of useful feedback exchange among the lower and upper layers' requirements. This paper introduces MuViS, a novel dual-phase optimization framework that proposes a Quality of Experience (QoE) aware MU-MIMO optimization for multi-user video streaming over IEEE 802.11ac. MuViS first employs reinforcement learning to optimize the MU-MIMO user group and mode selection for users based on their PHY/MAC layer characteristics. The video bitrate is then optimized based on the user's mode (Multi-User (MU) or Single-User (SU)). We present our design and its evaluation on smartphones and laptops using 802.11ac WiFi. Our experimental results in various indoor environments and configurations show a scalable framework that can support a large number of users with streaming at high video rates and satisfying QoE requirements.
翻译:在过去的十年中,宽频扩大和MU-MIMO光谱效率承诺通过允许一个接入点和多个用户之间同时进行通信来增加数据输送量,然而,我们仍然远远不能享受MU-MIMOMMAC协议的改进,用于在实用的WiFi网络设置中,在实用的WiFi网络设置中进行视频流,例如,由于不同的频道条件和装置、不可靠的传输以及低层和上层要求之间缺乏有用的反馈交流,在实际的WiFi网络设置中进行视频流流流,如视频流流,从而实现宽度的宽度,这是一个新的双阶段优化框架,它提出了在IEEE 802.11ac的多用户视频流中认识MU-MIMO优化。MUS首先利用强化学习来优化MU-MIMO用户群和用户基于其PHY/MAC层特性的模式选择。然后根据用户模式(MU(MU)或单层用户(SU)进行优化。我们用802.11A WiFI对智能手机和笔记本机质量进行设计和评价的质量质量。我们在各种室内环境和高流用户的实验结果中可以显示一个高流流要求的精确度框架。