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Fairness-related challenges in mobile opportunistic networking
Authors:Abderrahmen Mtibaa  Khaled A Harras
Affiliation:1. University Carlos III de Madrid, Avda. Universidad, 30, 28911 Leganés (Madrid), Spain;2. Hamilton Institute, National University of Ireland Maynooth, Maynooth, Co. Kildare, Ireland;3. Institute IMDEA Networks, Avenida del Mar Mediterraneo, 22, 28918 Leganés (Madrid), Spain;1. Institute of Informatics and Telematics, Italian National Research Council, Pisa, Italy;2. Department of Information Engineering, University of Pisa, Pisa, Italy;1. Dept. of Computer Science, KAIST, 373-1 Gusungdong, Yusunggu, Daejeon 305-701, South Korea;2. Software R&D Center, Samsung Electronics Co. Ltd., 416 Maetan 3-dong, Yeongtonggu, Suwon, Gyeonggido 443-742, South Korea;3. Dept. of Software, Sungkyunkwan Univ., 300 Cheoncheondong, Jangangu, Suwon, Gyeonggido 440-746, South Korea;1. Centre for Quantifiable Quality of Service in Communication Systems, Norwegian University of Science and Technology, O.S. Bragstads plass 2E, N-7491 Trondheim, Norway;2. Department of Telematics, Norwegian University of Science and Technology, O.S. Bragstads plass 2E, N-7491 Trondheim, Norway
Abstract:The fundamental challenge in opportunistic networking, regardless of the application, is when and how to forward a message. Rank-based forwarding techniques currently represent one of the most promising methods for addressing this message forwarding challenge. While these techniques have demonstrated great efficiency in performance, they do not address the rising concern of fairness amongst various nodes in the network. Higher ranked nodes typically carry the largest burden in delivering messages, which creates a high potential of dissatisfaction amongst them. In this paper, we adopt a real-trace driven approach to study and analyze the trade-offs between efficiency, cost, and fairness of rank-based forwarding techniques in mobile opportunistic networks.Our work comprises three major contributions. First, we quantitatively analyze the trade-off between fair and efficient environments. Second, we demonstrate how fairness coupled with efficiency can be achieved based on real mobility traces. Third, we propose FOG, a real-time distributed framework to ensure efficiency–fairness trade-off using local information. Our framework, FOG, enables state-of-the-art rank-based opportunistic forwarding algorithms to ensure a better fairness–efficiency trade-off while maintaining a low overhead. Within FOG, we implement two real-time distributed fairness algorithms; Proximity Fairness Algorithm (PFA), and Message Context Fairness Algorithm (MCFA). Our data-driven experiments and analysis show that mobile opportunistic communication between users may fail with the absence of fairness in participating high-ranked nodes, and an absolute fair treatment of all users yields inefficient communication performance. Finally our analysis shows that FOG-based algorithms ensure relative equality in the distribution of resource usage among neighbor nodes while keeping the success rate and cost performance near optimal.
Keywords:
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