A revolutionary approach to use convolutional spiking neural networks for robust intrusion detection

Yongxing Lin, Xiaoyan Xu, Hongyun Xu
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Abstract

In an era dominated by network connectivity, the reliance on robust and secure networks has become paramount. With the advent of 5G and the Internet of Things, networks are expanding in both scale and complexity, rendering them susceptible to a myriad of cyber threats. This escalating risk encompasses potential breaches of user privacy, unauthorized access to transmitted data, and targeted attacks on the underlying network infrastructure. To safeguard the integrity and security of modern networked societies, the deployment of Network Intrusion Detection Systems is imperative. This paper presents a novel lightweight detection model that seamlessly integrates Spiking Neural Networks and Convolutional Neural Networks with advanced algorithmic frameworks. Leveraging this hybrid approach, the proposed model achieves superior detection accuracy while maintaining efficiency in terms of power consumption and computational resources. This paper presents a new style recognition model that seamlessly integrates spiking neural networks and convolutional neural networks with advanced algorithmic frameworks. We call this combined method Spiking-HCCN. Using this hybrid approach, Spiking-HCCN achieves superior detection accuracy while maintaining efficiency in terms of power consumption and computational resources. Comparative evaluations against state-of-the-art models, including Spiking GCN and Spike-DHS, demonstrate significant performance advantages. Spiking-HCCN outperforms these benchmarks by 24% in detection accuracy, 21% in delay, and 29% in energy efficiency, underscoring its efficacy in fortifying network security in the face of evolving cyber threats.

Abstract Image

利用卷积尖峰神经网络进行鲁棒入侵检测的革命性方法
在这个以网络连接为主导的时代,对稳健安全的网络的依赖变得至关重要。随着 5G 和物联网的出现,网络的规模和复杂性都在不断扩大,使其容易受到无数网络威胁的影响。这种不断升级的风险包括潜在的用户隐私泄露、对传输数据的未经授权访问以及对底层网络基础设施的定向攻击。为了保障现代网络社会的完整性和安全性,部署网络入侵检测系统势在必行。本文提出了一种新型轻量级检测模型,它将尖峰神经网络和卷积神经网络与先进的算法框架无缝集成。利用这种混合方法,所提出的模型在保持功耗和计算资源效率的同时,实现了更高的检测精度。本文提出了一种新的风格识别模型,它将尖峰神经网络和卷积神经网络与先进的算法框架完美地结合在一起。我们称这种组合方法为 Spiking-HCCN。利用这种混合方法,Spiking-HCCN 在保持功耗和计算资源效率的同时,实现了更高的检测精度。与包括 Spiking GCN 和 Spike-DHS 在内的最先进模型的比较评估表明,Spiking-HCCN 具有显著的性能优势。Spiking-HCCN 在检测准确率、延迟和能效方面分别比这些基准高出 24%、21% 和 29%,这表明它在面对不断变化的网络威胁时能够有效加强网络安全。
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