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Robust non-negative matrix factorization for joint spectrum sensing and primary user localization in cognitive radio networks

机译:用于认知无线电网络中联合频谱感知和主要用户定位的鲁棒非负矩阵分解

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In this paper, a novel approach based on non-negative matrix factorization is applied for joint spectrum sensing and primary user localization in cognitive radio networks. This approach is robust and tolerant to sparse, yet strong interference caused by malicious attack or false data injection. Simulation results clearly indicate that the proposed method is highly effective in yielding low localization error for various strengths and degrees of sparsity of interferer. It is also shown that the localization performance significantly increases with the number of cognitive radios deployed.
机译:本文将一种基于非负矩阵分解的新方法应用于认知无线电网络中的联合频谱感知和主要用户定位。这种方法是鲁棒的,可以容忍由恶意攻击或错误数据注入引起的稀疏但强大的干扰。仿真结果清楚地表明,针对各种强度和稀疏度,该方法在产生低定位误差方面非常有效。还表明,随着部署的认知无线电的数量,定位性能显着提高。

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