4.3 Article

Frequency-hopping signals sorting based on underdetermined blind source separation

Journal

IET COMMUNICATIONS
Volume 7, Issue 14, Pages 1456-1464

Publisher

INST ENGINEERING TECHNOLOGY-IET
DOI: 10.1049/iet-com.2013.0276

Keywords

blind source separation; estimation theory; frequency hop communication; frequency hopping signal; underdetermined blind source separation; UBSS algorithm; time-frequency sparsity; sparse time-frequency representation; K-means clustering algorithm; mixing matrix estimation; comparative power; source sparsity condition; time-frequency domain; time-frequency point

Funding

  1. program for New Century Excellent Talents in University of China (NCET)

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Most of the earlier approaches for frequency-hopping (FH) signals sorting with a single sensor do not adapt to synchronous network, whereas the multiple-sensor-based algorithms request the number of sensors must be more than that of signals. Since the number of sensors is limited in many practical applications, it is important to sort synchronous or asynchronous FH networks with as little as possible sensors. This study introduces the underdetermined blind source separation (UBSS) algorithm to solve this problem. Considering the time-frequency (TF) sparsity of FH signals, the problem is formulated as one of UBSS based on sparse TF representation. First, an improved k-means clustering algorithm is developed to estimate the mixing matrix, according to the TF properties of FH signals. Secondly, to separate more signals overlapped in the TF domain using given sensors, an improved subspace-based algorithm utilising the information of the comparative power is proposed. In the proposed method, the sparsity condition of the sources in the TF domain is relaxed, and the number of FH signals that exist at any TF point simultaneously is allowed to equal that of the sensors. Simulations demonstrate that the proposed method can separate FH signals efficiently and outperforms the previous methods.

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