基于类平稳分割的车对车通信聚类信道模型

IF 4.8 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Fan Yu;Mingqi Guo;Qi Wang;Pengqi Zhu;Yixiao Tong;José Rodríguez-Piñeiro;Xuefeng Yin
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引用次数: 0

摘要

车对车(V2V)无线通信对于智能交通系统(ITSs)至关重要。收发器的高移动性,以及低天线高度和短通信距离导致的复杂3D传播,对传播建模提出了挑战。准确的V2V通道模型对于捕获这些特性以设计可靠的V2V系统至关重要。现有的基于聚类的V2V信道模型在聚类分类中忽略了多普勒频率的变化,降低了分类和模型的精度。它们在单个快照中描述集群,缺少时间通道平稳性,并且它们的复杂结构减慢了模型生成,阻碍了ITS的应用。本文提出了一种基于簇的V2V通道模型,并结合准平稳分割。SAGE算法首先提取多路径分量(mpc),然后进行聚类和跟踪。通过分析集群的多普勒频率变化以及角度、延迟和功率变化,可以更准确地将集群分为全局、静态和动态类型。接下来,该模型使用相关矩阵距离(cmd)对每种簇类型执行准平稳段,通过簇间和簇内参数表征它们在每个段内的分布。与单快照模型相比,简化了模型结构,提高了生成效率。段持续时间和数量统计特征通道平稳性。通过将模拟的二阶信道统计量与可比模型和实测数据进行比较,验证了该模型的有效性。通过比较模型生成时间和文献中其他模型来评估其复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Cluster-Based Channel Model Incorporating Quasi-Stationary Segmentation for Vehicle-to-Vehicle Communications
Vehicle-to-vehicle (V2V) wireless communication is vital for intelligent transportation systems (ITSs). The high mobility of transceivers, along with the complex 3D propagation caused by low antenna heights and short communication ranges, present challenges to propagation modeling. Accurate V2V channel models are crucial for capturing these characteristics to design reliable V2V systems. Existing cluster-based V2V channel models neglect Doppler frequency variations in cluster classification, reducing classification and model accuracy. They describe clusters in single snapshot, missing temporal channel stationarity, and their complex structures slow model generation, hampering ITS applications. This paper presents a cluster-based V2V channel model incorporating quasi-stationary segmentation. First, SAGE algorithm extracts Multipath components (MPCs), followed by clustering and tracking. By analyzing clusters' Doppler frequency variations alongside angle, delay, and power changes, clusters are more accurately classified into global, static and dynamic types. Next, the model uses Correlation matrix distances (CMDs) to perform quasi-stationary segments for each cluster type, characterizing their distributions within each segment via inter- and intra-cluster parameters. This simplifies the model structure compared to single-snapshot models, improving generation efficiency. Segment duration and quantity statistics characterize channel stationarity. The model is validated by comparing simulated second-order channel statistics with comparable models and measured data. Its complexity is evaluated by comparing model generation time with alternative models in the literature.
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来源期刊
CiteScore
9.60
自引率
0.00%
发文量
25
审稿时长
10 weeks
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