Synthesis and Analysis of Spatio-Temporal Spectrum Demand Patterns: A First Principles Approach

R. Beckman, K. Channakeshava, Fei Huang, V. S. A. Kumar, A. Marathe, M. Marathe, Guanhong Pei
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引用次数: 12

Abstract

Modeling and analysis of Primary User (PU) spectrum requirement is key to effective Dynamic Spectrum Access (DSA). Allocation of long term licenses, as well as opportunistic spectrum usage by secondary users (SU) cannot be done without accurate modeling of PU behavior. This is especially important in the case of cellular network traffic, which exhibits a significant spatio-temporal variation. Recently, there has been a lot of interest in modeling PU behavior in cellular networks by means of detailed analysis of proprietary data from wireless providers (e.g., Willcomm et al., IEEE DySpan 2008). While such analysis gives useful insights, major shortcomings of such an approach include (i) unavailability of data for open scientific study, and (ii) hard to predict future trends, and changes resulting from behavioral modifications. In this paper, we develop a methodology to generate synthetic network traffic data to model primary usage, by combining a number of different data sets for mobility, device ownership and call generation in a large synthetic urban population. Unlike simple random graph techniques, these methods use real world data sources and combine them with behavioral and social theories to synthesize spatial and dynamic relational networks. We use our tool to model the network traffic in the region of Portland, Oregon, calibrated by using published aggregate measurements of Wilcomm et al. As an illustration of our approach, we study the variation in demand as a result of changes in calling patterns based on user activities, and the impact of increased user demand on hotspots and their cascades within the region.
时空频谱需求模式的综合与分析:第一性原理方法
主用户(PU)频谱需求的建模与分析是实现动态频谱接入的关键。如果没有对PU行为的准确建模,就无法完成长期许可证的分配以及辅助用户(SU)的机会性频谱使用。这在蜂窝网络流量的情况下尤其重要,它表现出显著的时空变化。最近,通过对来自无线供应商的专有数据的详细分析(例如,Willcomm等人,IEEE DySpan 2008),对蜂窝网络中的PU行为建模产生了很大的兴趣。虽然这种分析提供了有用的见解,但这种方法的主要缺点包括:(i)无法获得公开科学研究的数据,(ii)难以预测未来趋势,以及行为改变导致的变化。在本文中,我们开发了一种生成综合网络流量数据的方法,通过将大型综合城市人口中的移动性、设备所有权和呼叫生成的许多不同数据集结合起来,生成综合网络流量数据以模拟主要使用情况。与简单的随机图技术不同,这些方法使用真实世界的数据源,并将其与行为和社会理论相结合,以综合空间和动态关系网络。我们使用我们的工具对俄勒冈州波特兰地区的网络流量进行建模,并使用Wilcomm等人发布的汇总测量结果进行校准。为了说明我们的方法,我们研究了基于用户活动的呼叫模式变化所导致的需求变化,以及用户需求增加对区域内热点及其级联的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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