使用深度学习算法检测物联网网络中的安全和隐私攻击

D. R. Janardhana, V. P. Pavan Kumar, S. R. Lavanya, A. Manu
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引用次数: 2

摘要

物联网(IoT)是21世纪发展最快的技术。到2025年底,将有750亿个物联网设备连接到互联网。因此,保护设备免受攻击和维护用户隐私相关数据变得极其困难。在本文中,我们提出了一个有效的模型来检测物联网环境中与安全和隐私相关的威胁,使用不同的机器学习和深度学习算法,如NSL-KDD(知识发现数据)和UNSW-NB15等开源标准数据集,这些数据集可用于开展研究活动。在这里,我们使用提出的模型分析了检测给定数据集中提到的各种威胁所需的数据特征集。本文研究了利用神经网络和机器学习方法对二分类和多类攻击进行分类。RNN模型在检测威胁方面表现出更高的准确率,二分类准确率为99.4%,多分类准确率为96.2%。
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Detecting Security and Privacy Attacks in IoT Network using Deep Learning Algorithms
The Internet of Things (IoT) is the 21st century’s fastest-growing technology. Nearly by the end of 2025, 75 billion IoT devices will be get connected to the internet. As a result, safeguarding devices from attacks and maintaining user privacy-related data has become extremely difficult. In this paper, we propose an efficient model to detect security and privacy related threats in IoT environment using different machine learning and deep learning algorithms on open-source standard dataset like NSL-KDD (Knowledge Discovery Data) and UNSW-NB15, which were made accessible for conducting research activities purposes. Here we analyzed the feature set of the data required to detect various threats mentioned in the given dataset using proposed model. This paper examines the binary and multiclass attacks classification using neural network and machine learning approaches. RNN model outperformed with higher accuracy in detecting threats with 99.4 percent for binary classification and 96.2 percent for multiclass classification.
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