A Novel Approach for IoT Intrusion Detection System using Modified Optimizer and Convolutional Neural Network

S. Vijayalakshmi, T. D. Subha, L. Manimegalai, Ektha Sudhakar Reddy, Dama Yaswanth, Sakithya Gopinath
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引用次数: 2

Abstract

The development of cyber security is very important, and as a result, it has received a significant amount of research interest from academic institutions and industrial groups all over the globe. It is also of the utmost importance to offer computing that is environmentally friendly for the Internet of Things. In order to detect intrusions and identify malicious actors, machine learning algorithms play an essential part in the cyber security of the internet of things (IoT). Because of this, the purpose of this work is to create novel techniques of extracting attributes that take use of the benefits offered by swarm intelligence (SI) method. We devise a technique for the extracting the attributes that is based on the traditional neural networks. In addition, in order to compute the effectiveness of the IDS method that was created, four well recognized public datasets were employed. We also evaluated detailed comparisons to many alternative optimization approaches in order to test the proposed method’s ability to compete successfully in the market. The findings demonstrate that the created strategy performs very well when measured against a variety of assessment metrics.
一种基于改进优化器和卷积神经网络的物联网入侵检测新方法
网络安全的发展非常重要,因此得到了全球学术机构和产业团体的大量研究兴趣。为物联网提供对环境友好的计算也至关重要。为了检测入侵并识别恶意行为者,机器学习算法在物联网(IoT)的网络安全中起着至关重要的作用。正因为如此,这项工作的目的是创造新的提取属性的技术,利用群体智能(SI)方法提供的好处。本文在传统神经网络的基础上,设计了一种属性提取技术。此外,为了计算所创建的IDS方法的有效性,使用了四个公认的公共数据集。我们还评估了与许多备选优化方法的详细比较,以测试所提出的方法在市场上成功竞争的能力。结果表明,当根据各种评估指标进行度量时,所创建的策略执行得非常好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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