Simulating Opportunistic Networks: Survey and Future Directions
December 05, 2017 Β· Declared Dead Β· π IEEE Communications Surveys and Tutorials
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Authors
Jens Dede, Anna FΓΆrster, Enrique HernΓ‘ndez-Orallo, Jorge Herrera-Tapia, Koojana Kuladinithi, Vishnupriya Kuppusamy, Pietro Manzoni, Anas bin Muslim, Asanga Udugama, Zeynep Vatandas
arXiv ID
1712.01905
Category
cs.NI: Networking & Internet
Citations
95
Venue
IEEE Communications Surveys and Tutorials
Last Checked
4 months ago
Abstract
Simulation is one of the most powerful tools we have for evaluating the performance of Opportunistic Networks. In this survey, we focus on available tools and models, compare their performance and precision and experimentally show the scalability of different simulators. We also perform a gap analysis of state-of-the-art Opportunistic Network simulations and sketch out possible further development and lines of research. This survey is targeted at students starting work and research in this area while also serving as a valuable source of information for experienced researchers.
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