The unlicensed spectrum has been utilized to make up the shortage on frequency spectrum in new radio (NR) systems. To fully exploit the advantages brought by the unlicensed bands, one of the key issues is to guarantee the fair coexistence with WiFi systems. To reach this goal, timely and accurate estimation on the WiFi traffic loads is an important prerequisite. In this paper, a machine learning (ML) based method is proposed to detect the number of WiFi users on the unlicensed bands. An unsupervised Neural Network (NN) structure is applied to filter the detected transmission collision probability on the unlicensed spectrum, which enables the NR users to precisely rectify the measurement error and estimate the number of active WiFi users. Moreover, NN is trained online and the related parameters and learning rate of NN are jointly optimized to estimate the number of WiFi users adaptively with high accuracy. Simulation results demonstrate that compared with the conventional Kalman Filter based detection mechanism, the proposed approach has lower complexity and can achieve a more stable and accurate estimation.
翻译:利用无许可证频谱来弥补新无线电系统频率频谱的短缺。为了充分利用无许可证带带来的优势,一个关键问题是保证与无许可证带的公平共存。为了实现这一目标,及时和准确地估计无线网络的交通负荷是一个重要的先决条件。在本文件中,提议采用基于机器学习(ML)的方法来检测无许可证带上的无许可证带无线网络用户的数量。采用了未经监督的神经网络结构来过滤无许可证带的已检测传输碰撞概率,使无许可证带的用户能够准确纠正测量错误并估计活跃无许可证带用户的数量。此外,NNN接受在线培训,并联合优化NNN的相关参数和学习率,以精确地估计无线网络用户的适应性数量。模拟结果表明,与传统的Kalman过滤检测机制相比,拟议方法的复杂性较低,可以实现更稳定、更准确的估算。