Deep-Learning for Cooperative Spectrum Sensing Optimization in Cognitive Internet of Things

Hind Boukhairat, M. Koulali
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Abstract

Spectrum sensing is a critical component of Cognitive Internet of Things. It allows Secondary Users(SUs) to access underutilized frequency bands licensed to Primary Users (PUs) opportunistically without causing harmful interference to them. How-ever, accurate individual spectrum sensing solutions are complex to deploy. Thus, Cooperative Spectrum Sensing (CSS) techniques have flourished. These techniques combine individual sensing through a weighting mechanism at a fusion center to assess the channel status. The fusion process depends heavily on the indi-vidual detection thresholds at each SU and the weights attributed to their sensing results by the Fusion Center. In this paper, we propose to use Deep Neural Net-work to compute the optimal energy detection thresh-old and fusion weights. Our goal is to develop a solution that optimally adapts to the time-varying wireless channel conditions. Furthermore, our DNN-based so-lution eliminates the need to solve hard optimization problems, thus significantly reducing computational complexity, especially in large networks.
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认知物联网中协同频谱感知优化的深度学习
频谱感知是认知物联网的重要组成部分。它允许辅助用户(su)机会性地访问授权给主用户(pu)的未充分利用的频段,而不会对主用户(pu)造成有害干扰。然而,精确的单个频谱传感解决方案部署起来很复杂。因此,协同频谱传感(CSS)技术蓬勃发展。这些技术通过融合中心的加权机制将单个感知结合起来,以评估信道状态。融合过程在很大程度上取决于每个SU的单个检测阈值以及融合中心赋予其感知结果的权重。在本文中,我们提出使用深度神经网络计算最优能量检测阈值和融合权值。我们的目标是开发一种最适合时变无线信道条件的解决方案。此外,我们基于dnn的解决方案消除了解决困难优化问题的需要,从而显着降低了计算复杂性,特别是在大型网络中。
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