工业互联网下智能威胁检测的研究与评价

Linfeng Wu, Wei Ruan, Keda Sun, Liang Chen, Liu Yang, Tingting Ye
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引用次数: 0

摘要

目前,工业互联网的安全形势日益严峻。网络攻击、恶意代码、漏洞利用等各种威胁逐渐增多。因此,迫切需要研究工业威胁检测方法。为了应对典型的网络攻击、系统漏洞和恶意操作,通过分析工业控制系统中的网络数据,提出了一种实时智能工业威胁检测方法。具体而言,该方法采用了人工智能技术、对抗样本生成技术和深度学习模型。并在实际网络中实现了该方法,开发了相应的工业威胁检测平台。结果表明,所开发的威胁检测平台能够检测出各种典型的网络攻击、系统漏洞、恶意代码等。同时,该平台具有良好的吞吐量和兼容性,适合实际工业环境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research and Evaluation of Intelligent Threat Detection Under Industrial Internet
At present, the security situation in the industrial internet is becoming more and more serious. Various threats such as network attacks, malicious code and vulnerability utilization are gradually increasing. Consequently, it is urgent to study industrial threat detection methods. In order to tackle typical network attacks, system vulnerabilities and malicious operations, a real-time intelligent industrial threat detection method is proposed by analyzing the network data in the industrial control system. Particularly, artificial intelligence technique, adversarial sample generation technique and deep learning model are used in the method. Besides, the proposed method is achieved in the real network, and the corresponding industrial threat detection platform is developed. The results show that the developed threat detection platform can detect a variety of typical network attacks, system vulnerabilities, malicious code, etc. At the same time, the platform has good throughput and compatibility and is suitable for the actual industrial environment.
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