Development of Intrusion Detection System using Residual Feedforward Neural Network Algorithm

Rushendra, K. Ramli, Nur Hayati, E. Ihsanto, T. S. Gunawan, A. Halbouni
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引用次数: 1

Abstract

An intrusion detection system (IDS) is required to protect data from security threats that infiltrate unwanted information via a regular channel, both during storage and transmission. This detection system must differentiate between normal data and abnormal or hacker-generated data. Additionally, the intrusion detection system (IDS) must be precise and quick to analyze real-time traffic data. Despite extensive research, there is still a need to improve detection accuracy and speed due to the tremendous increase in internet traffic volume and variety. This paper introduces a novel, efficient, and accurate approach for real-time intrusion detection and classification based on the Residual Feedforward Neural Network (RFNN) algorithm. The RFNN algorithm is developed to avoid overfitting, improve detection accuracy, and accelerate training and inference. Additionally, the suggested algorithm is highly adaptable and straightforward to accommodate different types of intrusion. The prominent NSL-KDD dataset was utilized for training and testing in this study. The accuracy obtained for two and five classes was 84.7 percent and 90.5 percent, respectively. Additionally, the identification speed was $15\ \mu\mathrm{s}$ and $14\ \mu\mathrm{s}$, respectively, indicating that real-time detection is feasible.
残差前馈神经网络入侵检测系统的开发
在数据的存储和传输过程中,需要一个入侵检测系统(IDS)来保护数据免受通过常规通道渗入不需要的信息的安全威胁。该检测系统必须区分正常数据和异常数据或黑客生成的数据。此外,入侵检测系统(IDS)必须精确、快速地分析实时流量数据。尽管进行了广泛的研究,但由于互联网流量和种类的巨大增加,仍然需要提高检测的准确性和速度。介绍了一种基于残差前馈神经网络(RFNN)算法的实时入侵检测与分类新方法。为了避免过拟合,提高检测精度,加速训练和推理,开发了RFNN算法。此外,该算法具有高度的适应性和直接性,可以适应不同类型的入侵。本研究利用著名的NSL-KDD数据集进行训练和测试。2类和5类的准确率分别为84.7%和90.5%。此外,识别速度分别为$15\ \mu\ mathm {s}$和$14\ \mu\ mathm {s}$,表明实时检测是可行的。
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