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Improved cooperative spectrum sensing model based on machine learning for cognitive radio networks

机译:基于机器学习的认知无线电网络改进协作频谱感知模型

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摘要

This study presents a new machine learning (support vector machine (SVM))-based cooperative spectrum sensing (CSS) model, which utilises the methods of user grouping, to reduce cooperation overhead and effectively improve detection performance. Cognitive radio users were properly grouped before the cooperative sensing process using energy data samples and an SVM model. The resulting user group which participates in cooperative sensing procedures is safe, less redundant, or the optimised user group. Three grouping algorithms are presented in this study. The first grouping algorithm divides normal and abnormal users (malicious and severely fading users) into two groups. The second grouping algorithm distinguishes redundant and non-redundant users. The third grouping algorithm establishes an optimisation model with the objective of minimising average correlation within subsets. All users are then divided into a specific number of optimised groups, only one of which is required for cooperative sensing in each time. The performances of the three algorithms were quantified in terms of the average training time, classification speed and classification accuracy. Experimental results showed the proposed algorithms achieved their intended function and outperformed a conventional machine learning-based CSS model (proposed by Karaputugalaet al.) in terms of security, energy consumption, and sensing efficiency.
机译:这项研究提出了一种新的基于机器学习(支持向量机(SVM))的协作频谱感知(CSS)模型,该模型利用用户分组的方法来减少协作开销并有效地提高检测性能。在使用能量数据样本和SVM模型进行协作感知之前,对认知无线电用户进行了适当的分组。参与协作感应过程的最终用户组是安全的,冗余较少的或优化的用户组。这项研究提出了三种分组算法。第一种分组算法将正常和异常用户(恶意和严重衰落的用户)分为两组。第二种分组算法区分冗余用户和非冗余用户。第三分组算法建立了优化模型,其目的是使子集内的平均相关性最小。然后,将所有用户划分为特定数量的优化组,每次仅需要其中一个即可进行协作感测。根据平均训练时间,分类速度和分类精度对三种算法的性能进行了量化。实验结果表明,提出的算法达到了预期的功能,并且优于传统的基于机器学习的CSS模型(由Karaputugala n 等。 n),包括安全性,能耗和传感效率。

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