Jamal Muhammad Hassan, Khan Muazzam A, Ullah Safi, Alshehri Mohammed S, Almakdi Sultan, Rashid Umer, Alazeb Abdulwahab, Ahmad Jawad
Department of Computer Sciences, Quaid-i-Azam University, Islamabad 45320, Pakistan.
ICESCO Chair Big Data Analytics and Edge Computing, Quaid-i-Azam University, Islamabad 45320, Pakistan.
Math Biosci Eng. 2023 Jun 16;20(8):13824-13848. doi: 10.3934/mbe.2023615.
In recent years, the industrial network has seen a number of high-impact attacks. To counter these threats, several security systems have been implemented to detect attacks on industrial networks. However, these systems solely address issues once they have already transpired and do not proactively prevent them from occurring in the first place. The identification of malicious attacks is crucial for industrial networks, as these attacks can lead to system malfunctions, network disruptions, data corruption, and the theft of sensitive information. To ensure the effectiveness of detection in industrial networks, which necessitate continuous operation and undergo changes over time, intrusion detection algorithms should possess the capability to automatically adapt to these changes. Several researchers have focused on the automatic detection of these attacks, in which deep learning (DL) and machine learning algorithms play a prominent role. This study proposes a hybrid model that combines two DL algorithms, namely convolutional neural networks (CNN) and deep belief networks (DBN), for intrusion detection in industrial networks. To evaluate the effectiveness of the proposed model, we utilized the Multi-Step Cyber Attack (MSCAD) dataset and employed various evaluation metrics.
近年来,工业网络遭受了多次具有重大影响的攻击。为应对这些威胁,已实施了多个安全系统来检测对工业网络的攻击。然而,这些系统仅在问题发生后才加以解决,并未从源头上主动预防攻击的发生。识别恶意攻击对于工业网络至关重要,因为这些攻击可能导致系统故障、网络中断、数据损坏以及敏感信息被盗。为确保在需要持续运行且随时间不断变化的工业网络中检测的有效性,入侵检测算法应具备自动适应这些变化的能力。一些研究人员专注于这些攻击的自动检测,其中深度学习(DL)和机器学习算法发挥了重要作用。本研究提出了一种混合模型,该模型结合了两种深度学习算法,即卷积神经网络(CNN)和深度信念网络(DBN),用于工业网络中的入侵检测。为评估所提模型的有效性,我们使用了多步网络攻击(MSCAD)数据集并采用了各种评估指标。