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一种新颖且安全的、在工业物联网架构中启用零信任入侵检测的人工智能技术。

A novel and secure artificial intelligence enabled zero trust intrusion detection in industrial internet of things architecture.

作者信息

Laghari Asif Ali, Khan Abdullah Ayub, Ksibi Amel, Hajjej Fahima, Kryvinska Natalia, Almadhor Ahmad, Mohamed Mohamad Afendee, Alsubai Shtwai

机构信息

Software Collage, Shenyang Normal University, Shenyang, China.

Department of Computer Science, Bahria University Karachi Campus, Karachi, 75260, Pakistan.

出版信息

Sci Rep. 2025 Jul 23;15(1):26843. doi: 10.1038/s41598-025-11738-9.

Abstract

Some of the potential advancements in information and communication technology (ICT), like artificial intelligence (AI) with federated learning (FL), which are particularly used in the transformation of industrial environments, are driven by digital technologies and can increase the efficiency and dependability of systems. The world has recently become more interconnected as a result of digital technology adoption but with some significant drawbacks. One of the major problems that arises as a malevolent possibility is cybercrime, which poses a threat to governments, corporations, and societies-most significantly, civil society. It is now feasible to work with more than two people to integrate Advanced Digital Technology (ADT) and move the foundation in the direction of a strong hierarchy, but in a complicated way, which has turned into a playground for cybercriminals. The idea of zero trust offers some sweetness in demand for threat detection by autonomously based FL, ML, and DL to address such difficult elements. This paper's main objective, however, is to offer an investigative report based on cyber vulnerability detection using AI, ML, and DL in order to shield the ecosystem from malevolent attacks before they happen. Examining machine learning-enabled classifiers and ensembles for network intrusions and autonomous malicious detection is the secondary objective. Therefore, it explains how we can combine the two models to analyze the context of attacks more effectively and efficiently and how to respond by implementing network security and Internet of Things (IoT) security strategies, such as the stop-and-listen method. When developing and implementing an integrated AI-enabled zero-trust intrusion detection architecture into the present industrial IoT ecosystem, there is a significant discussion about difficult issues and potential solutions. Given the notable outcomes of the simulations we obtained, it is evident at the conclusion of this research that the proposed solution is a strong contender for implementation in the real-time industrial setting.

摘要

信息和通信技术(ICT)的一些潜在进步,如采用联邦学习(FL)的人工智能(AI),特别用于工业环境的转型,这些进步由数字技术驱动,可提高系统的效率和可靠性。由于采用数字技术,世界最近变得更加互联互通,但也存在一些重大缺点。作为一种恶意可能性出现的主要问题之一是网络犯罪,它对政府、企业和社会——最重要的是对民间社会构成威胁。现在可以与两人以上合作,整合先进数字技术(ADT),并朝着强大的层级结构方向发展基础,但方式复杂,这已成为网络犯罪分子的游乐场。零信任的理念为通过基于自主的FL、ML和DL进行威胁检测的需求提供了一些甜头,以应对这些棘手因素。然而,本文的主要目标是提供一份基于使用AI、ML和DL进行网络漏洞检测的调查报告,以便在恶意攻击发生之前保护生态系统。研究用于网络入侵和自主恶意检测的机器学习分类器和集成是次要目标。因此,它解释了如何将这两种模型结合起来,更有效、高效地分析攻击背景,以及如何通过实施网络安全和物联网(IoT)安全策略(如停止并监听方法)来做出响应。在将集成的人工智能驱动的零信任入侵检测架构开发并实施到当前的工业物联网生态系统时,关于棘手问题和潜在解决方案存在大量讨论。鉴于我们获得的模拟结果显著,在本研究结束时很明显,所提出的解决方案是在实时工业环境中实施的有力竞争者。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4e74/12287373/b45e346d68c4/41598_2025_11738_Fig1_HTML.jpg

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