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Cooperative Spectrum Sensing Meets Machine Learning: Deep Reinforcement Learning Approach

机译:合作频谱传感符合机器学习:深增强学习方法

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摘要

Cognitive radio network (CRN) emerged to utilize the frequency bands efficiently. To use the frequency bands efficiently without any interference on the licensed user, detection of the frequency holes is the first step, which is called spectrum sensing in the context. In order to increase the quality of local spectrum sensing results, cooperative spectrum sensing (CSS) is introduced in the literature to combine the local sensing results. Recently, machine learning techniques are designed to improve the classification of the images and signals. Specifically, Deep Reinforcement Learning (DRL) is of interest for its substantial improvement in the classification problems. In this letter, we have proposed DRL based CSS algorithm, which is employed to decrease the signaling in the network of SUs. The simulation results represent the superiority of the proposed approach to state-of-the-art approaches, including Deep Cooperative Sensing (DCS), K-out-of-N, and Support Vector Machine (SVM) based CSS algorithms.
机译:认知无线电网络(CRN)出现有效利用频带。为了有效地使用频带而没有对许可用户的任何干扰,频率孔的检测是第一步,即在上下文中称为频谱感测。为了提高局部光谱传感结果的质量,在文献中引入了协作频谱感测(CSS)以结合局部感测结果。最近,机器学习技术旨在改善图像和信号的分类。具体而言,深增强学习(DRL)对其分类问题的大幅提高感兴趣。在这封信中,我们已经提出了基于DRL的CSS算法,该算法用于减少SUS网络中的信令。仿真结果表示所提出的最先进方法的方法,包括基于深度协作感测(DCS),K-Out-N和支持向量机(SVM)的CSS算法。

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