Khan Fazlullah, Alturki Ryan, Rehman Md Arafatur, Mastorakis Spyridon, Razzak Imran, Shah Syed Tauhidullah
Department of Computer Science, Abdul Wali Khan, University Mardan, Pakistan.
Department of Information Science, College of Computer, and Information Systems, Umm Al-Qura University, Makkah, Saudi Arabia.
IEEE Trans Industr Inform. 2023 Jan;19(1):1030-1038. doi: 10.1109/tii.2022.3190352. Epub 2022 Jul 13.
A fundamental expectation of the stakeholders from the Industrial Internet of Things (IIoT) is its trustworthiness and sustainability to avoid the loss of human lives in performing a critical task. A trustworthy IIoT-enabled network encompasses fundamental security characteristics such as trust, privacy, security, reliability, resilience and safety. The traditional security mechanisms and procedures are insufficient to protect these networks owing to protocol differences, limited update options, and older adaptations of the security mechanisms. As a result, these networks require novel approaches to increase trust-level and enhance security and privacy mechanisms. Therefore, in this paper, we propose a novel approach to improve the trustworthiness of IIoT-enabled networks. We propose an accurate and reliable supervisory control and data acquisition (SCADA) network-based cyberattack detection in these networks. The proposed scheme combines the deep learning-based Pyramidal Recurrent Units (PRU) and Decision Tree (DT) with SCADA-based IIoT networks. We also use an ensemble-learning method to detect cyberattacks in SCADA-based IIoT networks. The non-linear learning ability of PRU and the ensemble DT address the sensitivity of irrelevant features, allowing high detection rates. The proposed scheme is evaluated on fifteen datasets generated from SCADA-based networks. The experimental results show that the proposed scheme outperforms traditional methods and machine learning-based detection approaches. The proposed scheme improves the security and associated measure of trustworthiness in IIoT-enabled networks.
物联网(IIoT)利益相关者的一个基本期望是其可靠性和可持续性,以避免在执行关键任务时造成人员伤亡。一个值得信赖的物联网网络具备信任、隐私、安全、可靠性、弹性和安全性等基本安全特性。由于协议差异、更新选项有限以及安全机制的旧有适应性,传统的安全机制和程序不足以保护这些网络。因此,这些网络需要新颖的方法来提高信任级别并增强安全和隐私机制。所以,在本文中,我们提出一种新颖的方法来提高物联网网络的可信度。我们提出在这些网络中基于准确可靠的监控与数据采集(SCADA)网络进行网络攻击检测。所提出的方案将基于深度学习的金字塔循环单元(PRU)和决策树(DT)与基于SCADA的物联网网络相结合。我们还使用集成学习方法来检测基于SCADA的物联网网络中的网络攻击。PRU的非线性学习能力和集成DT解决了无关特征的敏感性问题,从而实现高检测率。该方案在基于SCADA的网络生成的15个数据集上进行了评估。实验结果表明,该方案优于传统方法和基于机器学习的检测方法。所提出的方案提高了物联网网络中的安全性和相关的可信度指标。