NOn-parametric Bayesian channEls cLustering (NOBEL) Scheme for Wireless Multimedia Cognitive Radio Networks

  • Ali, Amjad
  • Ahmed, Muhammad Ejaz
  • Ali, Farman
  • Tran, Nguyen H.
  • Niyato, Dusit
  • 외 1명
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초록

In wireless multimedia cognitive radio networks (WMCRNs), to optimize multimedia transmissions and scarce wireless spectrum utilization, a multimedia secondary user (MSU) needs to estimate and/or identify the achievable quality of service (QoS)-levels over the available licensed channels. However, due to the lack of signaling information among MSUs and the primary users (PUs) in uncoordinated environments, identification of the achievable QoS-levels on the available licensed channels is a challenging problem and has not yet been fully explored. To address this challenge, we propose a novel NOn-parametric Bayesian channEls cLustering (NOBEL) scheme. In NOBEL, an infinite Gaussian mixture model-based collapsed Gibbs sampler is adopted to identify the achievable QoS-levels over the feature space, i.e., bitrate, packet delay variation, and packet delivery ratio on the PUs' licensed channels. Real trace-driven evaluation results demonstrate that NOBEL outperforms other baseline clustering techniques and guarantee high accuracy from 98% to 99.5%.

키워드

Wireless multimedia applicationsmultimedia CRNsmulti-channelchannel clusteringQoS-level quantificationAD HOCTRANSMISSION
제목
NOn-parametric Bayesian channEls cLustering (NOBEL) Scheme for Wireless Multimedia Cognitive Radio Networks
저자
Ali, AmjadAhmed, Muhammad EjazAli, FarmanTran, Nguyen H.Niyato, DusitPack, Sangheon
DOI
10.1109/JSAC.2019.2933943
발행일
2019-10
유형
Article
저널명
IEEE Journal on Selected Areas in Communications
37
10
페이지
2293 ~ 2305