Always Best Served: On the behaviour of QoS- and QoE-based algorithms for Web service adaptation

One of the primary issues in pervasive computing is the adaptation of the communication to the needs of limited devices. Web services are one of the technologies that present both big challenges and big potentials when it comes to their adapted usage in pervasive systems, because they carry communication overhead in order to support interoperability and platform-independence through self-description. In this paper it is explained how Web service communication can be adapted for limited devices and why it is important to choose intelligently among a variety of adaptation mechanisms, based on the system context. Further, two algorithms (one Quality of Service-based and one Quality of Experience-based) for the decision support of the mentioned problem are provided in order to measure and discuss the impact that the peculiarities of the problem have on their behaviour.

[1]  Yiping Chen,et al.  A new 4G architecture providing multimode terminals always best connected services , 2007, IEEE Wirel. Commun..

[2]  E. Gustafsson,et al.  Always best connected , 2003, IEEE Wirel. Commun..

[3]  Michael E. Theologou,et al.  Modelling user preferences and configuring services in B3G devices , 2008, Wirel. Networks.

[4]  David Soldani,et al.  QoS and QoE Management in UMTS Cellular Systems: Soldani/QoS and QoE Management in UMTS Cellular Systems , 2006 .

[5]  Klara Nahrstedt,et al.  QoS-aware middleware for ubiquitous and heterogeneous environments , 2001, IEEE Commun. Mag..

[6]  Lazaros F. Merakos,et al.  Toward a generic "always best connected" capability in integrated WLAN/UMTS cellular mobile networks (and beyond) , 2005, IEEE Wireless Communications.

[7]  P DemestichasKonstantinos,et al.  Modelling user preferences and configuring services in B3G devices , 2008 .

[8]  Stefania Sesia,et al.  LTE - The UMTS Long Term Evolution, Second Edition , 2011 .

[9]  Apostolos Papageorgiou,et al.  Study and Comparison of Adaptation Mechanisms for Performance Enhancements of Mobile Web Service Consumption , 2010, 2010 6th World Congress on Services.

[10]  Boi Faltings,et al.  Increasing user decision accuracy using suggestions , 2006, CHI.

[11]  Michele Colajanni,et al.  Performance Evolution of Mobile Web-Based Services , 2009, IEEE Internet Computing.

[12]  Ayse Basar Bener,et al.  Mobile Web services: a new agent-based framework , 2006, IEEE Internet Computing.