Beamforming (BF) training is crucial to establishing reliable millimeter-wave communication connections between stations (STAs) and an access point. In IEEE 802.11ad BF training protocol, all STAs contend for limited BF training opportunities, i.e., associated BF training (A-BFT) slots, which results in severe collisions and significant BF training latency, especially in dense user scenarios. In this paper, we first develop an analytical model to evaluate the BF training protocol performance. Our analytical model accounts for various protocol components, including user density, the number of A-BFT slots, and protocol parameters, i.e., retry limit and contention window size. We then derive the average successful BF training probability, the BF training efficiency and latency. Since the derived BF training efficiency is an implicit function, to reveal the relationship between system parameters and BF training performance, we also derive an approximate expression of BF training efficiency. Theoretical analysis indicates that the BF training efficiency degrades drastically in dense user scenarios. To address this issue, we propose an enhancement scheme which adaptively adjusts the protocol parameters in tune with user density, to improve the BF training performance in dense user scenarios. Extensive simulations are carried out to validate the accuracy of the developed analytical model. In addition, simulation results show that the proposed enhancement scheme can improve the BF training efficiency by 35% in dense user scenarios.
翻译:在IEEE 802.11ad BF培训协议中,所有STA都争抢有限的BF培训机会,即相关的BF培训(A-BFT)空档,这导致严重碰撞和BF培训的显著延迟,特别是在密集用户情况下。在本文件中,我们首先开发了一个分析模型,以评估BF培训协议绩效。我们的分析模型计算了各种协议组成部分,包括用户密度、A-BFT空格数和协议参数,即再试限制和争议窗口大小。然后我们得出平均成功的BF培训概率、BF培训效率和耐久性。由于衍生的BF培训效率是一种隐含的功能,因此我们还可以得出BF培训拟议效率的大致表现。理论分析表明,BF培训效率在密集用户假设中急剧下降。为了解决这个问题,我们建议了一个增强计划,在B级培训中,将B级用户的改进率调整为B级。