A symmetric low-rank subspace clustering method for cooperative spectrum sensing in complex environments

PHYSICAL COMMUNICATION(2024)

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摘要
A new cooperative spectrum sensing (CSS) method based on low -rank symmetric subspace clustering is proposed to improve spectrum sensing performance in complex environments. To align with the evolution of cellular networks and leverage spatial observations, a CSS model with multiple primary users and antennas is considered. To address the asymmetric weighting issue of data pairs, a low -rank representation with a symmetric constraint is proposed that reduces the signal dimensions. Finally, features are extracted from the symmetric coefficient matrix and clustered using the K -means algorithm. Through simulation, the effectiveness of the novel algorithm is numerically validated through comparative experiments.
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关键词
Cooperative spectrum sensing,Subspace clustering,Symmetric low-rank representation,K-means
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