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Learning based primary user activity prediction in cognitive radio networks for efficient dynamic spectrum access

机译:基于学习的认知无线网络中的主要用户活动预测,用于高效动态频谱接入

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Efficient spectrum sensing can be realized by predicting the future idle times of primary users' activity in a cognitive radio network. In dynamic spectrum access, based on a reliable prediction scheme, a secondary user chooses a channel with the longest idle time for data transmission. In this paper, four supervised machine learning techniques, two from ANN, i.e. Multilayer Perceptron & Recurrent Neural Networks, and two from Support Vector Machines (SVM), i.e. SVM with Linear Kernel, SVM with Gaussian Kernel, have been employed to investigate the prediction of primary activity. Poisson, Interrupted Poisson and Self-similar traffics are used for the analysis of licensed user environment. Data generated by each traffic distribution is used in the training phase individually with the help of each learning model after which, the testing is done for the primary activity prediction. The results highlight the analysis of the learning techniques in accordance with various traffic statistics, and suggest the best learning model for accurate primary user activity prediction.
机译:通过预测认知无线电网络中的主要用户活动的未来闲置时间,可以实现高效的频谱感测。在动态频谱访问中,基于可靠的预测方案,辅助用户选择具有最长空闲时间的信道进行数据传输。在本文中,四种监督的机器学习技术,两位来自ANN,即多层感知&回归神经网络,和两个从支持向量机(SVM),即SVM与线性核,SVM与高斯核,已被用于研究预测主要活动。泊松,中断泊松和自我相似的流量用于分析许可的用户环境。在每个学习模型的帮助下单独使用每个流量分布的数据在训练阶段之后,对主活动预测进行测试。结果突出了根据各种流量统计的学习技术分析,并提出了准确的主要用户活动预测的最佳学习模型。

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