Modeling Time-Variant User Mobility in Wireless Mobile Networks

Realistic mobility models are important to understand the performance of routing protocols in wireless ad hoc networks, especially when mobility-assisted routing schemes are employed, which is the case, for example, in delay-tolerant networks (DTNs). In mobility-assisted routing, messages are stored in mobile nodes and carried across the network with nodal mobility. Hence, the delay involved in message delivery is tightly coupled with the properties of nodal mobility. Currently, commonly used mobility models are simplistic random i.i.d. model that do not reflect realistic mobility characteristics. In this paper we propose a novel time-variant community mobility model. In this model, we define communities that are visited often by the nodes to capture skewed location visiting preferences, and use time periods with different mobility parameters to create periodical re-appearance of nodes at the same location. We have clearly observed these two properties based on analysis of empirical WLAN traces. In addition to the proposal of a realistic mobility model, we derive analytical expressions to highlight the impact on the hitting time and meeting times if these mobility characteristics are incorporated. These quantities in turn determine the packet delivery delay in mobility-assisted routing settings. Simulation studies show our expressions have error always under 20%, and in 80% of studied cases under 10%.

[1]  David Tse,et al.  Mobility increases the capacity of ad hoc wireless networks , 2002, TNET.

[2]  David Kotz,et al.  Extracting a Mobility Model from Real User Traces , 2006, Proceedings IEEE INFOCOM 2006. 25TH IEEE International Conference on Computer Communications.

[3]  Ger Koole,et al.  The message delay in mobile ad hoc networks , 2005, Perform. Evaluation.

[4]  Panganamala Ramana Kumar,et al.  RHEINISCH-WESTFÄLISCHE TECHNISCHE HOCHSCHULE AACHEN , 2001 .

[5]  Wei-jen Hsu,et al.  On Modeling User Associations in Wireless LAN Traces on University Campuses , 2006, 2006 4th International Symposium on Modeling and Optimization in Mobile, Ad Hoc and Wireless Networks.

[6]  Tristan Henderson,et al.  The changing usage of a mature campus-wide wireless network , 2004, MobiCom '04.

[7]  Sheldon M. Ross,et al.  Introduction to probability models , 1975 .

[8]  Ravi Jain,et al.  Model T: an empirical model for user registration patterns in a campus wireless LAN , 2005, MobiCom '05.

[9]  T. Spyropoulos,et al.  Efficient Routing in Intermittently Connected Mobile Networks: The Multiple-Copy Case , 2008, IEEE/ACM Transactions on Networking.

[10]  Tristan Henderson,et al.  CRAWDAD: a community resource for archiving wireless data at Dartmouth , 2005, CCRV.

[11]  Cauligi S. Raghavendra,et al.  Single-copy routing in intermittently connected mobile networks , 2004, 2004 First Annual IEEE Communications Society Conference on Sensor and Ad Hoc Communications and Networks, 2004. IEEE SECON 2004..

[12]  Eyal de Lara,et al.  User mobility for opportunistic ad-hoc networking , 2004, Sixth IEEE Workshop on Mobile Computing Systems and Applications.

[13]  Geoffrey M. Voelker,et al.  Access and mobility of wireless PDA users , 2003, MOCO.

[14]  Pan Hui,et al.  Impact of Human Mobility on the Design of Opportunistic Forwarding Algorithms , 2006, Proceedings IEEE INFOCOM 2006. 25TH IEEE International Conference on Computer Communications.

[15]  Cecilia Mascolo,et al.  A community based mobility model for ad hoc network research , 2006, REALMAN '06.

[16]  PsounisKonstantinos,et al.  Efficient routing in intermittently connected mobile networks , 2008 .

[17]  Thomas R. Gross,et al.  A mobility model based on WLAN traces and its validation , 2005, Proceedings IEEE 24th Annual Joint Conference of the IEEE Computer and Communications Societies..

[18]  Cauligi S. Raghavendra,et al.  Spray and wait: an efficient routing scheme for intermittently connected mobile networks , 2005, WDTN '05.

[19]  Cauligi S. Raghavendra,et al.  Performance analysis of mobility-assisted routing , 2006, MobiHoc '06.

[20]  K. Psounis,et al.  Efficient Routing in Intermittently Connected Mobile Networks: The Single-Copy Case , 2008, IEEE/ACM Transactions on Networking.

[21]  Konstantinos Psounis,et al.  Fundamental Mobility Properties for Realistic Performance Analysis of Intermittently Connected Mobile Networks , 2007, Fifth Annual IEEE International Conference on Pervasive Computing and Communications Workshops (PerComW'07).

[22]  Waylon Brunette,et al.  Data MULEs: modeling and analysis of a three-tier architecture for sparse sensor networks , 2003, Ad Hoc Networks.

[23]  Ahmed Helmy,et al.  On Important Aspects of Modeling User Associations in Wireless LAN Traces , 2006 .

[24]  Tristan Henderson,et al.  CRAWDAD: A Community Resource for Archiving Wireless Data at Dartmouth , 2005, IEEE Pervasive Comput..

[25]  Ravi Jain,et al.  Model T++: an empirical joint space-time registration model , 2006, MobiHoc '06.

[26]  Magdalena Balazinska,et al.  Characterizing mobility and network usage in a corporate wireless local-area network , 2003, MobiSys '03.