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Optimum Selection of Access Networks Within Heterogeneous Wireless Environments Based on Linear Programming Techniques

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Abstract

In this work we analyze the possibilities which are brought about by the use of linear programming techniques in the framework of access selection procedures within heterogeneous wireless network environments. We present a tool which has been designed and implemented (based on the GLPK package) to tackle this problem. This tool can be used to retrieve the optimum assignment of access elements of a particular network deployment. To fulfil this goal, we introduce a flexible cost (utility) function, which allows modulating the relevance given to the different aspects which could be taken into consideration while deciding the access alternative to be used: connection with a preferred operator, minimizing the number of handovers, or selecting the link with the best quality, amongst others. Afterwards, the tool is used to study a set of access selection strategies, so as to establish the combination of parameters which might lead to optimum performances.

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Notes

  1. It is worth highlighting that the goal of this work is not to accurately model the propagation model, but it focuses on the optimum selection of an access alternative. However, the implementation is flexible enough, so that the integration of more complex empirical propagation models would not impose great difficulties.

  2. This is in fact reflecting the preferred operator parameter (ψ ij ), as was previously introduced.

  3. Each of the bars is then the result of averaging the outputs of the corresponding 2,000 optimization problems.

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Acknowledgements

The authors would like to express their gratitude to the Spanish government for its funding in the following two projects: Mobilia—CELTIC Program (Avanza I+D TSI-020400-2008-82) and “Cognitive, Cooperative Communications and autonomous SErvice Management”, C3SEM (TEC2009-14598-C02-01). Ramón Agüero and Luis Muñoz would also like to thank the European Commission for its funding through the “Scalable and Adaptive Internet Solutions”, SAIL Project (FP7-ICT-2009-5-257448).

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Correspondence to Johnny Choque.

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Choque, J., Agüero, R. & Muñoz, L. Optimum Selection of Access Networks Within Heterogeneous Wireless Environments Based on Linear Programming Techniques. Mobile Netw Appl 16, 412–423 (2011). https://doi.org/10.1007/s11036-011-0318-2

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