大蜂窝无线网络中的移动模式

M. S. Sricharan, V. Vaidehi
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引用次数: 3

摘要

对移动性预测算法进行性能评估,必须建立真实的用户模型。所述大蜂窝无线业务用户群包括具有不同移动性特征的用户。本文基于从几个用户收集的经验数据,研究了大蜂窝无线网络中的移动模式。根据观察到的统计信息,实现了基于移动性的用户分类。此外,本文还描述了小区停留时间(CRT)的分布,即用户在进入另一个小区的服务区域之前在一个小区中花费的时间长度。文献报道的研究集中于会话中移动终端(分配专用信道)的小区驻留时间分布,而忽略了会话外移动终端(空闲模式)的特性,这些特性对若干网络管理任务具有重要影响。调查表明,与文献中的假设相反,用户的非会话CRT分布可以使用具有无限均值和方差的重尾算术分布准确地建模
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mobility Patterns in Macrocellular Wireless Networks
Realistic user models are indispensable for performance evaluation of mobility prediction algorithms. The macrocellular wireless service user population comprises users with diverse mobility characteristics. This paper investigates mobility patterns in macrocellular wireless networks, based on empirical data gathered from several users. Based on the observed statistics a user classification based on mobility is achieved. Further the paper characterizes the distribution of cell residence time (CRT), which is the length of time that a user spends in a cell, before moving into the service area of another cell. Studies reported in literature concentrate on cell residence time distribution of mobile terminals in-session (dedicated channel allocated) and ignore their out-of-session (idle mode) characteristics, which critically influence several network management tasks. Investigation shows that a user's out-of-session CRT distribution can be accurately modeled using heavy-tailed arithmetic distribution with infinite mean and variance, contrary to the assumptions made in the literature
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