NSS-ML: a Novel spectrum sensing framework using machine learning for cognitive radio IoT networks

Nikhil Kumar Marriwala, Vinod Kumar Shukla, Manjula Shanbhog, Sunita Panda, Ruchi Kaushik, Deepak Rathore
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Abstract

A key component of cognitive radio systems is spectrum sensing, which reduces coexistence problems and maximises spectrum efficiency. However, the introduction of multiple situations with distinct characteristics brought about by 5G communication presents problems for spectrum sensing to support a wide range of applications with high performance and flexible implementation. Inspired by these difficulties, a new method with a multi-layer extreme learning machine optimised for bats is presented in this study. This technique makes use of a variety of input vectors, such as channel ID, energy, distance, and received signal intensity, to enhance user categorization and sensing capabilities. Moreover, we compare the proposed method with the state-of-the-art spectrum sensing approaches in order to evaluate its effectiveness in 5G situations, especially in healthcare applications. Evaluation metrics including channel detection probability, sensitivity, and selectivity are carefully examined. The findings unequivocally prove the suggested spectrum sensing approach’s superiority over current methods and highlight its potential for smooth incorporation into a variety of 5G applications.

Abstract Image

NSS-ML:利用机器学习的新型频谱感知框架,适用于认知无线电物联网网络
认知无线电系统的一个关键组成部分是频谱感知,它可以减少共存问题,最大限度地提高频谱效率。然而,5G 通信所带来的具有鲜明特征的多种情况,给频谱感知带来了问题,使其无法以高性能和灵活的实施方式支持广泛的应用。受这些难题的启发,本研究提出了一种针对蝙蝠进行优化的多层极端学习机新方法。该技术利用各种输入向量(如信道 ID、能量、距离和接收信号强度)来增强用户分类和感知能力。此外,我们还将所提出的方法与最先进的频谱传感方法进行了比较,以评估其在 5G 环境中的有效性,尤其是在医疗保健应用中。我们仔细研究了信道检测概率、灵敏度和选择性等评估指标。研究结果毫不含糊地证明了所建议的频谱传感方法优于现有方法,并凸显了其顺利融入各种 5G 应用的潜力。
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