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Ensemble Deep Learning Based Cooperative Spectrum Sensing with Stacking Fusion Center

机译:借助Stacking Fusion Center集成基于深度学习的协作频谱感知

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In this paper, an ensemble learning (EL) framework is adopted for cooperative spectrum sensing (CSS) in an orthogonal frequency division multiplexing (OFDM) signal based cognitive radio system. Each secondary user (SU) is accordingly considered as a base learner, where the local spectrum sensing is for investigating the probability of PU being inactive or active. The convolution neural networks with simple architecture are applied given its strength in image recognition as well as the limited computation ability of each SU, meanwhile, the cyclic spectral correlation feature is introduced as the input data. Here, as for the supervised learning, the bagging strategy is helped to establish the training database. For the global decision, the fusion center employs the stacked generalization for further combination learning the SU output of classification pre-prediction of the PU status. Our method shows significant advantages over conventional CSS methods in term of the detection probability or false alarm probability performance.
机译:本文在基于正交频分复用(OFDM)信号的认知无线电系统中,采用集成学习(EL)框架进行协作频谱感知(CSS)。因此,每个次要用户(SU)被视为基础学习者,其中本地频谱感测用于调查PU处于非活动状态或活动状态的可能性。鉴于结构简单的卷积神经网络在图像识别上的优势以及每个SU的有限计算能力,应用了卷积神经网络,同时引入循环频谱相关特征作为输入数据。在这里,对于监督学习,套袋策略有助于建立培训数据库。对于全局决策,融合中心采用堆叠的概括来进一步组合,以学习PU状态的分类预测的SU输出。在检测概率或虚警概率性能方面,我们的方法显示出优于常规CSS方法的显着优势。

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