首页> 外文会议> >Internet user access via dial-up networks-traffic characterization and statistics
【24h】

Internet user access via dial-up networks-traffic characterization and statistics

机译:通过拨号网络访问互联网用户-流量表征和统计

获取原文

摘要

Understanding network traffic from operational networks is critical to the design and evaluation of network protocols. We present analysis of a data set comprised of eight months of RADIUS authentication data taken from a large national dial-up Internet Service Provider (ISP). We present basic statistics, including session counts based on time-of-day, session length distribution, session inter-arrival times, and growth in the customer base over the measurement period. We investigate more deeply several properties of the data. We use area code information to correlate account location with basic statistics. For example, we find that United States west coast accounts tend to have earlier-than-average mean session start time. We find that 40% of sampled accounts exhibit concurrent sessions (two or more sessions active at the same time), while 20% show multiple originating phone numbers. Both phenomenon are likely to increase as users become more mobile and sophisticated. Finally, we offer evidence of significant session activity due to hypothesized automated processes, characterized by periodic interarrival times and/or constant session durations. Our results provide important data for the simulation and modeling of access network protocols and applications. They may also form the basis for creating a workload model of access networks.
机译:了解来自运营网络的网络流量对于网络协议的设计和评估至关重要。我们介绍了一个数据集的分析,该数据集包含八个月的RADIUS身份验证数据,这些数据来自一个大型的国家拨号Internet服务提供商(ISP)。我们提供基本统计信息,包括基于一天中的会话计数,会话长度分布,会话到达时间以及在整个评估期间客户群的增长。我们将更深入地研究数据的几个属性。我们使用区号信息将帐户位置与基本统计信息相关联。例如,我们发现美国西海岸帐户的平均会话开始时间通常比平均时间早。我们发现40%的采样帐户展示了并发会话(同时激活两个或多个会话),而20%展示了多个原始电话号码。随着用户变得更加移动和复杂,这两种现象都有可能增加。最后,由于假想的自动化过程,我们提供了重要的会话活动的证据,其特征在于周期性的到达时间和/或恒定的会话持续时间。我们的结果为接入网络协议和应用的仿真和建模提供了重要的数据。它们也可以构成创建访问网络工作量模型的基础。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号