Packet-level Overload Estimation in LTE Networks using Passive Measurements

V. Adarsh, Michael Nekrasov, E. Zegura, E. Belding-Royer
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引用次数: 4

Abstract

Over 87% of US mobile wireless subscriptions are currently held by LTE-capable devices [34]. However, prior work has demonstrated that connectivity may not equate to usable service. Even in well-provisioned urban networks, unusually high usage (such as during a public event or after a natural disaster) can lead to overload that makes the LTE service difficult, if not impossible to use, even if the user is solidly within the coverage area. A typical approach to detect and quantify overload on LTE networks is to secure the cooperation of the network provider for access to internal metrics. An alternative approach is to deploy multiple mobile devices with active subscriptions to each mobile network operator (MNO). Both approaches are resource and time intensive. In this work, we propose a novel method to estimate overload in LTE networks using only passive measurements, and without requiring provider cooperation. We use this method to analyze packet-level traces for three commercial LTE service providers, T-Mobile, Verizon and AT&T, from several locations during both typical levels of usage and during public events that yield large, dense crowds. This study presents the first look at overload estimation through the analysis of unencrypted broadcast messages. We show that an upsurge in broadcast reject and cell barring messages can accurately detect an increase in network overload.
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基于被动测量的LTE网络包级过载估计
超过87%的美国移动无线用户目前由支持lte的设备持有[34]。然而,先前的工作已经证明,连接性可能不等于可用的服务。即使在配置良好的城市网络中,异常高的使用量(例如在公共活动期间或自然灾害之后)也可能导致过载,使LTE服务难以使用,甚至无法使用,即使用户在覆盖区域内也是如此。检测和量化LTE网络过载的典型方法是确保网络提供商的合作以访问内部指标。另一种方法是为每个移动网络运营商(MNO)部署具有活动订阅的多个移动设备。这两种方法都是资源和时间密集型的。在这项工作中,我们提出了一种新的方法,仅使用被动测量来估计LTE网络中的过载,而不需要提供商的合作。我们使用这种方法分析了三个商用LTE服务提供商(T-Mobile, Verizon和AT&T)在典型使用水平和产生大量密集人群的公共活动期间从几个地点进行的分组级跟踪。本研究通过对未加密广播消息的分析首次介绍了过载估计。我们表明,广播拒绝和小区禁止消息的激增可以准确地检测到网络过载的增加。
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