基于深度学习的工业物联网安全研究

Xian Guo Xian Guo, Keyu Chen Xian Guo, An Yang Keyu Chen, Zhanhui Gang An Yang
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引用次数: 0

摘要

随着“互联网+”的快速发展和新一代信息基础设施的建设,针对工业物联网的入侵行为日益普遍。如何保证工业物联网的安全是当前的研究热点之一。现代技术趋势中最热门的技术是物联网(IoT)。另一方面,物联网的应用提高了工作效率,给人们的生活带来了便利;另一方面,也使网络面临日益严重的安全威胁问题,不法分子对网络的攻击时有发生。基于机器学习的入侵检测技术涉及大量的数学公式运算,而随着神经网络的发展,深度学习优秀的自主特征学习能力得到了认可。入侵检测系统在防范安全威胁、保护企业不受攻击方面发挥着重要作用。目前对工业物联网安全技术的研究主要集中在认证技术、加密技术、访问控制技术、入侵检测技术等方面。本文对深度学习和工业物联网入侵检测进行了分析,利用深度学习强大的数据处理能力和特征学习能力,对基于深度学习的工业物联网入侵检测方法进行了深入研究。本文在工业控制数据集上实现了96.32%的检测率,能够更好地适应工业物联网入侵检测的需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Industrial IoT Security Based on Deep Learning
With the rapid development of "Internet +" and the construction of a new generation of information infrastructure, the intrusion behaviors against the Industrial Internet of Things are increasingly common. How to ensure the security of the industrial Internet of Things is one of the current research hotspots. The modern technology trend has the hottest technologies of the Internet of Things (IoT). The application of IoT on the other hand improves work efficiency and brings convenience to people’s life; on the other hand, it makes the network face increasingly serious security threat problems and attacks the network by unscrupulous elements occur from time to time. Machine learning-based intrusion detection techniques involve a large number of mathematical formula operations, while with the development of neural networks, the excellent autonomous feature learning capability of deep learning is recognized. An intrusion detection system plays an important role in preventing security threats and protecting them from attacks. The current research on industrial IoT security technology focuses on authentication technology, encryption technology, access control technology, and intrusion detection technology. In this paper, we analyze deep learning and industrial IoT intrusion detection and use the powerful data processing capability and feature learning capability of deep learning to conduct an in-depth study on industrial IoT intrusion detection methods based on deep learning. This paper achieves a 96.32% detection rate on industrial control dataset, which can better adapt to the needs of industrial IoT intrusion detection.  
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