DeepOpp: Context-Aware Mobile Access to Social Media Content on Underground Metro Systems

Di Wu, Dmitri I. Arkhipov, Thomas Przepiorka, Qiang Liu, J. Mccann, A. Regan
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引用次数: 4

Abstract

Accessing online social media content on underground metro systems is a challenge due to the fact that passengers often lose connectivity for large parts of their commute. As the oldest metro system in the world, the London underground represents a typical transportation network with intermittent Internet connectivity. To deal with disruption in connectivity along the sub-surface and deep-level underground lines on the London underground, we have designed a context-aware mobile system called DeepOpp that enables efficient offline access to online social media by prefetching and caching content opportunistically when signal availability is detected. DeepOpp can measure, crowdsource and predict signal characteristics such as strength, bandwidth and latency; it can use these predictions of mobile network signal to activate prefetching, and then employ an optimization routine to determine which social content should be cached in the system given real-time network conditions and device capacities. DeepOpp has been implemented as an Android application and tested on the London Underground; it shows significant improvement over existing approaches, e.g. reducing the amount of power needed to prefetch social media items by 2.5 times. While we use the London Underground to test our system, it is equally applicable in New York, Paris, Madrid, Shanghai, or any other urban underground metro system, or indeed in any situation in which users experience long breaks in connectivity.
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DeepOpp:地铁系统社交媒体内容的上下文感知移动访问
在地铁系统上访问在线社交媒体内容是一个挑战,因为乘客经常在通勤的大部分时间里失去网络连接。作为世界上最古老的地铁系统,伦敦地铁代表了一个典型的间歇性互联网连接的交通网络。为了应对伦敦地铁地下和地下深层线路的连接中断,我们设计了一种名为DeepOpp的环境感知移动系统,当检测到信号可用时,它可以通过预取和缓存内容来实现对在线社交媒体的高效离线访问。DeepOpp可以测量、众包和预测信号特性,如强度、带宽和延迟;它可以使用这些移动网络信号的预测来激活预取,然后使用优化例程来确定在给定实时网络条件和设备容量的情况下,应该在系统中缓存哪些社会内容。DeepOpp已经作为Android应用程序实现,并在伦敦地铁上进行了测试;它比现有的方法有了显著的改进,例如,将预取社交媒体项目所需的电量减少了2.5倍。虽然我们使用伦敦地铁来测试我们的系统,但它同样适用于纽约、巴黎、马德里、上海或任何其他城市的地铁系统,或者用户经历长时间连接中断的任何情况。
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