Publication | Closed Access
A Channel Selection Mechanism based on Incumbent Appearance Expectation for Cognitive Networks
13
Citations
8
References
2009
Year
Unknown Venue
EngineeringNetwork AnalysisIncumbent Appearance ExpectationCommunicationAttentionCognitive NetworksChannel CharacterizationSocial SciencesDynamic Spectrum ManagementTraffic DistributionMac Layer EnhancementSignal DetectionCognitive RadioCognitive NetworkChannel Selection MechanismCognitive ScienceInformation TheorySignal ProcessingCognitive Radio Resource ManagementWireless Cooperative NetworkNetwork ScienceEdge ComputingNeuroscienceDistributed Cognitive Network
In this paper, we investigate stochastic multichannel load balancing in a distributed cognitive network coexisting with primary users. In particular, we propose a probabilistic technique for traffic distribution among a set of data channels by incorporating statistical information of primary users' activities in different channels into the selection process without centralized control. Moreover, the proposed scheme is enabled by a multi-channel binary exponential backoff mechanism to further facilitate contention resolution in a multi-channel environment. It is shown through simulations that the proposed MAC layer enhancement outperforms well-known multi-channel MAC protocols both in terms of aggregate end-to-end throughput and average frame end-to-end delay. Furthermore, its performance is also compared to two heuristic channel selection techniques in a multi-channel cognitive network, coexisting with incumbents.
| Year | Citations | |
|---|---|---|
Page 1
Page 1