Novel cooperative global spectrum sensing algorithm based on variational Bayesian inference
academic paper|更新时间:2024-06-05
|
Novel cooperative global spectrum sensing algorithm based on variational Bayesian inference
Journal on CommunicationsVol. 37, Issue 2, Pages: 116-124(2016)
作者机构:
东南大学移动通信国家重点实验室,江苏 南京210096
作者简介:
基金信息:
The National Natural Science Foundation of China(61271207);The National Natural Science Foundation of China(61372104);The National Natural Science Foundation of China(61201248)
Ming WU, Tie-cheng SONG, Jing HU, et al. Novel cooperative global spectrum sensing algorithm based on variational Bayesian inference[J]. Journal on Communications, 2016, 37(2): 116-124.
DOI:
Ming WU, Tie-cheng SONG, Jing HU, et al. Novel cooperative global spectrum sensing algorithm based on variational Bayesian inference[J]. Journal on Communications, 2016, 37(2): 116-124. DOI: 10.11959/j.issn.1000-436x.2016037.
Novel cooperative global spectrum sensing algorithm based on variational Bayesian inference
To realize multi-dimensional dynamic spectrum access
an approximate model was proposed for the global power spectral density (PSD)of primary users (PU). Based on the proposed model
a novel cooperative spectrum sensing algorithm was proposed
and its overall flow was also built to obtain global information in the network of PU. The global information included locations
occupied frequency bands and transmitting powers of the PU. Then
an estimator of mod-el coefficient vector was designed by utilizing the th of variational Bayesian inference (VBI). Simulation results show that the proposed approximate model has good accuracy
and the corresponding estimation algorithm of model coefficient vector has good convergence and stability. Meanwhile
the relationship between SNR and the leakage of ag-gregate spurious power (LASP)was pointed out
and the influence of SNR and LASP on MSE performance was also discussed. Furthermore
it is proved that the proposed algorithm has better MSE performance than another algorithm since the sparsity of model coefficient vector is util zed.
关键词
Keywords
references
GOLDSMITH A , JAFAR S , MARIC I , et al . Breaking spectrum gridlock with cognitive radios an information theoreti perspective [J ] . Proceedings of the IEEE , 2009 , 97 ( 5 ): 894 - 914 .
LU L , ZHOU X W , ONUNKWO U , et al . Ten years of researc in spectrum sensing and sharing in cognitive radio [J ] . Eurasip Journal on Wireless Communications , 2012 , 28 : 1 - 16 .
ZENG Y H , LIANG Y C , HOANG A T , et al . A review on spectrum sensing for cognitive radio: challenges and solutions [J ] . Eurasip Journal on Advances in Signal Processing , 2010 ID 381465.
NISHIMORI K , TARANTO R D , YOMO H , et al . Spatial opportunity for cognitive radio systems with heterogeneous path loss conditions [C ] // IEEE 65th Vehicular Technology Conference VTC . c2007 : 2631 - 2635 .
RIIHIJARVI J , MAHONEN P . Exploiting spatial statistics of primary and secondary users towards improved cognitive radio networks [C ] // IEEE 65th Vehicular Technology Conference VTC . c2008 : 1 - 7 .
MIN A W , KIM K H , SINGH J P , et al . Opportunistic spectrum access for mobile cognitive radios [C ] // IEEE INFOCOM Conference . c2011 : 2993 - 3001 .
CASO G , NARDIS L D , HOLLAND O , et al . Impact of spatio- tem-poral correlation in cooperative spectrum sensing for ile cognitive radio networks [C ] // The 10th International Symposium on Wireless Communication Systems ISWCS . c2013 : 1 - 5 .
PAURA L , SAVOIA R . Mobility-aware sensing enabled capacity in cognitive radio networks [C ] // 2013 IEEE International Workshop on Measurements and Networking Proceedings M&N . c2013 : 179 - 183 .
LI F , XU Z B . Sparse bayesian hierarchical prior modeling based cooperative spectrum sensing in wideband cognitive rad networks [J ] . IEEE Signal Process Lettes , 2014 , 21 ( 5 ): 586 - 590 .
GIANNAKIS G B , TEPEDELENLIOGLU C . Basis expansion models and diversity techniques for blind identification and equalization of time- varying channels [J ] . Proceedings of the IEEE , 1998 , 86 ( 10 ): 1969 - 1986 .
CEVHER V , DUARTE M F , BARANIUK R G . Distributed target localization via spatial sparsity [C ] // European Signal Processing Conference EUSIPCO . c2008 : 1 - 5 .
GIROLAMI M . A variational method for learning sparse a overcomplete representations [J ] . Neural Computation , 2011 , 13 ( 11 ): 2517 - 2532 .
WIPF D , OWEN J , ATTIAS H , et al . Robust Bayesian estimation of the location, orientation, and time course of multiple correlated neura sources using MEG [J ] . Neuro Image , 2010 , 49 ( 1 ): 641 - 655 .