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On Spectrum Sensing, a Machine Learning Method for Cognitive Radio Systems

机译:关于光谱传感,认知无线电系统的机器学习方法

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Spectrum sensing plays an important role in enabling cognitive radio technology for the up-and-coming generation of wireless communication systems. Over the last decade, several sensing methods have been proposed, including energy detection, cyclostationary feature, and matched filter. However, these techniques present several limitations. Energy detection performs poorly under low signal-to-noise ratio, cyclostationary features are complex, and matched filter requires some prior knowledge about the primary user signal. In addition, all of these techniques require setting a threshold which needs the prior knowledge of the noise distribution. Thus, the reliability of spectrum sensing is still an open issue in wireless communication research. In this paper, we propose a spectrum sensing method based on a machine learning theory for cognitive radio networks. The spectrum sensing problem is rigorously modeled and out of which a large-scale comprehensive dataset is built. This dataset is then used to train, validate, and test several machine learning techniques, including random forest, support vector machine with different kernels, decision tree, Na?ve Bayes, K-nearest neighbors, and logistic regression. The models were extensively tested and evaluated using metrics such as the probabilities of detection, false alarm, and miss-detection as well as the accuracy of the classification. The simulation results show that the random forest model outperforms all the other machine learning methods.
机译:频谱感测在实现对无线通信系统的上升和即将到来的多种生成的认知无线电技术方面起着重要作用。在过去的十年中,已经提出了几种感测方法,包括能量检测,裂纹特征和匹配过滤器。然而,这些技术存在若干限制。能量检测在低信噪比下执行不良,卷曲特征是复杂的,并且匹配的过滤器需要一些关于主要用户信号的先验知识。另外,所有这些技术都需要设置需要先前知识的阈值。因此,频谱感测的可靠性仍然是无线通信研究中的开放问题。本文提出了一种基于认知无线电网络的机器学习理论的频谱传感方法。频谱传感问题严格建模,并从中构建了大规模的全面数据集。然后,此数据集用于培训,验证和测试多种机器学习技术,包括随机森林,支持具有不同核,决策树,NA贝雷斯,K-Etcebor邻居和逻辑回归的机器学习机。使用指标进行广泛测试和评估模型,例如检测,误报和错过检测的概率,以及分类的准确性。仿真结果表明,随机林模型优于所有其他机器学习方法。

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