As multipath components (MPCs) are experimentally observed to appear in clusters, cluster-based channel models have been focused in the wireless channel study. However, most of the MPC clustering algorithms for MIMO channels with delay and angle information of MPCs are based on the distance metric that quantifies the similarity of two MPCs and determines the preferred cluster shape, greatly impacting MPC clustering quality. In this paper, a general framework of Mahalanobis-distance metric is proposed for MPC clustering in MIMO channel analysis, without user-specified parameters. Remarkably, the popular multipath component distance (MCD) is proved to be a special case of the proposed distance metric framework. Furthermore, two machine learning algorithms, namely, weak-supervised Mahalanobis metric for clustering and supervised large margin nearest neighbor, are introduced to learn the distance metric. To evaluate the effectiveness, a modified channel model is proposed based on the 3GPP spatial channel model to generate clustered MPCs with delay and angular information, since the original 3GPP spatial channel model (SCM) is incapable to evaluate clustering quality. Experiment results show that the proposed distance metric can significantly improve the clustering quality of existing clustering algorithms, while the learning phase requires considerably limited efforts of labeling MPCs.
翻译:由于实验观测到多路体组件(MPCs)会出现在集群中,基于集群的频道模型已经集中在无线频道研究中,然而,MIMO频道延迟和角信息的MIMO频道的MPC群集算法大多基于测算两个MPC的相似性并确定偏好群集形状的距离度量,从而极大地影响MPC群集质量。在本文中,在MIMO频道分析中,为MPC群集提出了马哈拉诺比-距离指标总框架,没有用户指定的参数。显著的是,流行多路体组件距离(MCD)被证明是拟议的远程衡量框架的一个特例。此外,引入了两种机器学习算法,即用于集聚和近邻大宽度的薄弱监督马哈拉诺比衡量法,以学习远程测量。为了评估效果,根据3GPPPS空间信道模型提出了一个修改的频道模型,以延迟和三角信息生成聚集集集体聚体聚体,因为最初的3GPPPS空间信道模型(MC)无法评估远程测量质量。实验结果显示,在大幅改进现有的MC质量阶段的标签需要大幅改进现有的MC。