Secured Wireless Network Based on a Novel Dual Integrated Neural Network Architecture

IF 1.2 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
H. V. Ramachandra, Pundalik Chavan, S. Supreeth, H. C. Ramaprasad, K. Chatrapathy, G. Balaraju, S. Rohith, H. S. Mohan
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引用次数: 0

Abstract

The development of the fifth generation (5G) and sixth generation (6G) wireless networks has gained wide spread importance in all aspects of life through the network due to their significantly higher speeds, extraordinarily low latency, and ubiquitous availability. Owing to the importance of their users, components, and services to our everyday lives, the network must secure all of these. With such a wide range of devices and service types being present in the 5G ecosystem, security issues are now much more prevalent. Security solutions, are not implemented, must already be envisioned in order to deal with a range of attacks on numerous services, cutting-edge technology, and more user information available over the network. This research proposes the dual integrated neural network (DINN) for secure data transmission in wireless networks. DINN comprises two neural networks based on sparse and dense dimensions. DINN is designed for any presence of deep learning-based attack in a physical security layer. DINN is evaluated considering the various machine learning attack such as basic_iterative_method attack, momentum_iterative_method attack, post_gradient_descent attack, and C&W attack; comparison is carried out on existing and DINN, considering attack success rate and MSE. Performance analysis suggests that DINN holds a higher level of security against the above attacks.
基于新型双集成神经网络结构的安全无线网络
第五代(5G)和第六代(6G)无线网络的发展通过网络在生活的各个方面获得了广泛的重要性,因为它们具有显着更高的速度,极低的延迟和无处不在的可用性。由于其用户、组件和服务对我们日常生活的重要性,网络必须保护所有这些。随着5G生态系统中存在如此广泛的设备和服务类型,安全问题现在更加普遍。为了应对针对众多服务、尖端技术和网络上可用的更多用户信息的一系列攻击,必须已经设想了安全解决方案,但尚未实现。提出了一种用于无线网络数据安全传输的双集成神经网络(DINN)。DINN由两个基于稀疏维数和密集维数的神经网络组成。DINN是为物理安全层中存在的任何基于深度学习的攻击而设计的。考虑basic_iterative_method攻击、momentum_iterative_method攻击、post_gradient_descent攻击和C&W攻击等各种机器学习攻击,对DINN进行评估;考虑攻击成功率和MSE,对现有的和DINN进行了比较。性能分析表明,对于上述攻击,DINN具有更高的安全性。
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来源期刊
Journal of Electrical and Computer Engineering
Journal of Electrical and Computer Engineering COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
4.20
自引率
0.00%
发文量
152
审稿时长
19 weeks
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