DocumentCode :
86633
Title :
Robust Frequency-Hopping Spectrum Estimation Based on Sparse Bayesian Method
Author :
Lifan Zhao ; Lu Wang ; Guoan Bi ; Liren Zhang ; Haijian Zhang
Author_Institution :
Infocomm Centre of Excellence, Nanyang Technol. Univ., Singapore, Singapore
Volume :
14
Issue :
2
fYear :
2015
fDate :
Feb. 2015
Firstpage :
781
Lastpage :
793
Abstract :
This paper considers the problem of estimating multiple frequency hopping signals with unknown hopping pattern. By segmenting the received signals into overlapped measurements and leveraging the property that frequency content at each time instant is intrinsically parsimonious, a sparsity-inspired high-resolution time-frequency representation (TFR) is developed to achieve robust estimation. Inspired by the sparse Bayesian learning algorithm, the problem is formulated hierarchically to induce sparsity. In addition to the sparsity, the hopping pattern is exploited via temporal-aware clustering by exerting a dependent Dirichlet process prior over the latent parametric space. The estimation accuracy of the parameters can be greatly improved by this particular information-sharing scheme and sharp boundary of the hopping time estimation is manifested. Moreover, the proposed algorithm is further extended to multi-channel cases, where task-relation is utilized to obtain robust clustering of the latent parameters for better estimation performance. Since the problem is formulated in a full Bayesian framework, labor-intensive parameter tuning process can be avoided. Another superiority of the approach is that high-resolution instantaneous frequency estimation can be directly obtained without further refinement of the TFR. Results of numerical experiments show that the proposed algorithm can achieve superior performance particularly in low signal-to-noise ratio scenarios compared with other recently reported ones.
Keywords :
Bayes methods; frequency estimation; frequency hop communication; learning (artificial intelligence); pattern clustering; radio spectrum management; signal representation; signal resolution; time-frequency analysis; TFR; dependent Dirichlet process; hopping time estimation; labor-intensive parameter tuning process; multiple frequency hopping signal estimation; overlapped measurement; particular information-sharing scheme; received signal segmentation; robust frequency-hopping spectrum estimation; signal-to-noise ratio; sparse Bayesian learning algorithm; sparsity-inspired high-resolution time-frequency representation; task-relation; temporal-aware clustering; Bayes methods; Estimation; Frequency estimation; Robustness; Signal to noise ratio; Time-frequency analysis; Wireless communication; Dirichlet process; Dirichlet process (DP); multiple frequency-hopping signals; sparse Bayesian learning; sparse Bayesian learning (SBL); stick-breaking process; time-frequency representation (TFR); timefrequency representation;
fLanguage :
English
Journal_Title :
Wireless Communications, IEEE Transactions on
Publisher :
ieee
ISSN :
1536-1276
Type :
jour
DOI :
10.1109/TWC.2014.2360191
Filename :
6910302
Link To Document :
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