Characterizing mobile user habits: The case for energy budgeting

In this paper, we collect and analyze data from 85 smartphone users over a 9 month period. Different from existing work, we study device usage patterns in concert with network performance in space and time. Our results uncover predictable mobility patterns, where users are moving between hubs (i.e., home or workplace) and transit locations. In hubs, users are typically connected using Wi-Fi, while in transit locations cellular connectivity dominates with highly varying performance (from EDGE to HSPA+). Interestingly, there are set of apps over time running on user devices, independent of the location, network conditions, and device resources (e.g., battery level). These apps can aggressively use the network, which leads to significant device resource consumption (e.g., energy), as shown by our controlled experiments. We discuss how our findings can be used to budget mobile device available resources and improve user experience.

[1]  Arun Venkataramani,et al.  Energy consumption in mobile phones: a measurement study and implications for network applications , 2009, IMC '09.

[2]  Cisco Visual Networking Index: Forecast and Methodology 2016-2021.(2017) http://www.cisco.com/c/en/us/solutions/collateral/service-provider/visual- networking-index-vni/complete-white-paper-c11-481360.html. High Efficiency Video Coding (HEVC) Algorithms and Architectures https://jvet.hhi.fraunhofer. , 2017 .

[3]  Vasilios A. Siris,et al.  Enhancing mobile data offloading with mobility prediction and prefetching , 2012, MobiArch '12.

[4]  Feng Qian,et al.  A close examination of performance and power characteristics of 4G LTE networks , 2012, MobiSys '12.

[5]  Arun Venkataramani,et al.  Augmenting mobile 3G using WiFi , 2010, MobiSys '10.

[6]  Narseo Vallina-Rodriguez,et al.  Exhausting battery statistics: understanding the energy demands on mobile handsets , 2010, MobiHeld '10.

[7]  Feng Qian,et al.  Periodic transfers in mobile applications: network-wide origin, impact, and optimization , 2012, WWW.

[8]  Justin Manweiler,et al.  Predicting length of stay at WiFi hotspots , 2013, 2013 Proceedings IEEE INFOCOM.

[9]  Denzil Ferreira,et al.  Understanding Human-Smartphone Concerns: A Study of Battery Life , 2011, Pervasive.

[10]  Deborah Estrin,et al.  A first look at traffic on smartphones , 2010, IMC '10.

[11]  Ning Ding,et al.  Characterizing and modeling the impact of wireless signal strength on smartphone battery drain , 2013, SIGMETRICS '13.

[12]  Venkatesh Akella,et al.  Markov decision process (MDP) framework for software power optimization using call profiles on mobile phones , 2010, Des. Autom. Embed. Syst..

[13]  Fehmi Ben Abdesslem,et al.  Reliable Online Social Network Data Collection , 2012, Computational Social Networks.

[14]  Liviu Iftode,et al.  Context-aware Battery Management for Mobile Phones , 2008, 2008 Sixth Annual IEEE International Conference on Pervasive Computing and Communications (PerCom).

[15]  Qiang Xu,et al.  Identifying diverse usage behaviors of smartphone apps , 2011, IMC '11.