Security Enhancement by Identifying Attacks Using Machine Learning for 5G Network

Hitesh Keserwani, Himanshu Rastogi, Ardhariksa Zukhruf Kurniullah, Sushil Kumar Janardan, R. Raman, V. Rathod, Ankur Gupta
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引用次数: 5

Abstract

Need of security enhancement for 5G network has been increased in last decade. Data transmitted over network need to be secure from external attacks. Thus there is need to enhance the security during data transmission over 5G network. There remains different security system that focus on identification of attacks. In order to identify attack different machine learning mechanism are considered. But the issue with existing research work is limited security and performance issue. There remains need to enhance security of 5G network. To achieve this objective hybrid mechanism are introduced. Different treats such as Denial-of-Service, Denial-of-Detection, Unfair use or resources are classified using enhanced machine learning approach. Proposed work has make use of LSTM model to improve accuracy during decision making and classification of attack of 5G network. Research work is considering accuracy parameters such as Recall, precision and F-Score to assure the reliability of proposed model. Simulation results conclude that proposed model is providing better accuracy as compared to conventional model.
利用机器学习识别5G网络攻击以增强安全性
近十年来,5G网络的安全性增强需求不断增加。通过网络传输的数据需要防止外部攻击。因此,需要在5G网络中增强数据传输的安全性。仍然有不同的安全系统侧重于识别攻击。为了识别攻击,考虑了不同的机器学习机制。但是现有的研究工作存在的问题是有限的安全和性能问题。5G网络的安全性还有待加强。为了实现这一目标,引入了混合机构。使用增强的机器学习方法对拒绝服务、拒绝检测、不公平使用或资源等不同的对待进行分类。提出的工作利用LSTM模型来提高5G网络攻击决策和分类的准确性。研究工作考虑了查全率、查准率和F-Score等精度参数,以保证模型的可靠性。仿真结果表明,与传统模型相比,该模型具有更好的精度。
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