Mobility Support in Cellular Networks: A Measurement Study on Its Configurations and Implications

In this paper, we conduct the first global-scale measurement study to unveil how 30 mobile operators manage mobility support in their carrier networks. Using a novel, device-centric tool, MMLab, we are able to crawl runtime configurations without the assistance from operators. Using handoff configurations from 32,000+ cells and > 18,700 handoff instances, we uncover how policy-based handoffs work in practice. We further study how the configuration parameters affect the handoff performance and user data access. Our study exhibits three main points regarding handoff configurations. 1) Operators deploy extremely complex and diverse configurations to control how handoff is performed. 2) The setting of handoff configuration values affect data performance in a rational way. 3) While giving better control granularity over handoff procedures, such diverse configurations also lead to unexpected negative compound effects to performance and efficiency. Moreover, our study of mobility support through a device-side approach gives valuable insights to network operators, mobile users and the research community.

[1]  M. Hill Diversity and Evenness: A Unifying Notation and Its Consequences , 1973 .

[2]  Songwu Lu,et al.  A First Look at Unstable Mobility Management in Cellular Networks , 2016, HotMobile.

[3]  P. Venkata Krishna,et al.  User preferences and expert opinions based vertical handoff decision strategy with the inclusion of cost parameter for 4G networks , 2017, Int. J. Auton. Adapt. Commun. Syst..

[4]  Hari Balakrishnan,et al.  Rethinking Congestion Control for Cellular Networks , 2017, HotNets.

[5]  Feng Qian,et al.  An in-depth understanding of multipath TCP on mobile devices: measurement and system design , 2016, MobiCom.

[6]  Vasilios A. Siris,et al.  Improving Mobile Video Streaming with Mobility Prediction and Prefetching in Integrated Cellular-WiFi Networks , 2013, MobiQuitous.

[7]  Chunyi Peng,et al.  Demystify Undesired Handoff in Cellular Networks , 2016, 2016 25th International Conference on Computer Communication and Networks (ICCCN).

[8]  Hala ElAarag,et al.  Improving TCP performance over mobile networks , 2002, CSUR.

[9]  Songwu Lu,et al.  Instability in Distributed Mobility Management: Revisiting Configuration Management in 3G/4G Mobile Networks , 2016, SIGMETRICS.

[10]  Tao Wang,et al.  Mobileinsight: extracting and analyzing cellular network information on smartphones , 2016, MobiCom.

[11]  Jie Li,et al.  A User Centered Multi-Objective Handoff Scheme for Hybrid 5G Environments , 2017, IEEE Transactions on Emerging Topics in Computing.

[12]  Hyung-Keun Ryu,et al.  3G and 3.5G wireless network performance measured from moving cars and high-speed trains , 2009, MICNET '09.

[13]  Ruben Merz,et al.  Performance of LTE in a high-velocity environment: a measurement study , 2014, AllThingsCellular '14.

[14]  Erich M. Nahum,et al.  A measurement-based study of MultiPath TCP performance over wireless networks , 2013, Internet Measurement Conference.

[15]  Li Li,et al.  A measurement study on TCP behaviors in HSPA+ networks on high-speed rails , 2015, 2015 IEEE Conference on Computer Communications (INFOCOM).

[16]  D. Goodin The cambridge dictionary of statistics , 1999 .

[17]  Jose Edson Vargas Bautista,et al.  Inter-System Handover Parameter Optimization , 2006, IEEE Vehicular Technology Conference.