利用优化余弦卷积神经网络识别攻击增强5G网络安全

IF 0.9 Q4 TELECOMMUNICATIONS
Premalatha Santhanamari, Vijayakumar Kathirgamam, Lakshmisridevi Subramanian, Thamaraikannan Panneerselvam, Rathish Chirakkal Radhakrishnan
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引用次数: 0

摘要

5G网络的指数级增长带来了先进的功能,但也增加了对复杂网络攻击的敏感性。为了解决这个问题,提出了一个鲁棒和优化的安全框架,利用余弦卷积神经网络(CCNN)进行攻击检测。通过强调数据中的角度相关性,CCNN通过替换基于余弦相似度的调整来改进特征提取。为了使CCNN的性能最大化,采用指数分布优化器(EDO)对CCNN进行优化。利用EDO的概率搜索机制实现CCNN的最优配置,该机制受指数分布的启发,有助于保持平衡的探索-利用策略。这种集成方法显著提高了检测精度、健壮性和可伸缩性,同时保持了较低的计算开销。综合评估表明,该模型在识别5G网络中各种攻击模式方面的有效性优于传统方法。该框架为安全、智能的5G基础设施建立了新的基准,有助于推进下一代网络的网络安全。该方法的准确率达到了99%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Security Enhancement in 5G Networks by Identifying Attacks Using Optimized Cosine Convolutional Neural Network

The exponential growth of 5G networks has introduced advanced capabilities but also heightened susceptibility to sophisticated cyberattacks. To address this, a robust and optimized security framework is proposed, leveraging a Cosine Convolutional Neural Network (CCNN) for attack detection. By emphasizing angular correlations in data, the CCNN improves feature extraction by substituting cosine similarity-based adjustments for conventional convolution processes. To maximize the CCNN's performance, the Exponential Distribution Optimizer (EDO) is employed optimize CCNN. The optimal configuration of CCNN is achieved using EDO's probabilistic search mechanism, which is inspired by exponential distribution and helps to maintain a balanced exploration-exploitation strategy. This integrated approach significantly improves detection accuracy, robustness, and scalability while maintaining low computational overhead. Comprehensive evaluations demonstrate the model's efficacy in identifying diverse attack patterns in 5G networks, outperforming conventional methods. The proposed framework establishes a new benchmark for secure, intelligent 5G infrastructures, contributing to the advancement of cybersecurity in next-generation networks. The introduced approach attains higher accuracy of 99%.

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