工业5.0中基于web的攻击检测的深度学习技术:一种新方法

Abdu Salam, Faizan Ullah, Farhan Amin, Mohammad Abrar
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引用次数: 1

摘要

随着制造业向工业5.0迈进,工业5.0大量集成了网络物理系统、人工智能和物联网(IoT)等先进技术,基于网络的攻击的可能性也在增加。网络安全问题仍然是工业5.0环境的一个关键挑战,网络攻击可能会造成毁灭性的后果,包括生产停机、数据泄露甚至人身伤害。为了应对这一挑战,本研究提出了一种创新的深度学习方法,用于检测工业5.0中基于web的攻击。卷积神经网络(cnn),循环神经网络(rnn)和变压器模型是深度学习技术的例子,本研究调查了它们有效分类攻击和识别异常行为的潜力。本文提出的基于变压器的系统在准确性、精密度和召回率方面优于传统的机器学习方法和现有的深度学习方法,证明了深度学习在工业5.0入侵检测中的有效性。该研究的结果显示了所提出的基于变压器的系统的优越性,在准确性、精密度和召回率方面优于以前的方法。这凸显了深度学习在应对工业5.0环境中的网络安全挑战方面的重要贡献。该研究有助于推进工业5.0中的网络安全,确保关键基础设施和敏感数据的保护。
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Deep Learning Techniques for Web-Based Attack Detection in Industry 5.0: A Novel Approach
As the manufacturing industry advances towards Industry 5.0, which heavily integrates advanced technologies such as cyber-physical systems, artificial intelligence, and the Internet of Things (IoT), the potential for web-based attacks increases. Cybersecurity concerns remain a crucial challenge for Industry 5.0 environments, where cyber-attacks can cause devastating consequences, including production downtime, data breaches, and even physical harm. To address this challenge, this research proposes an innovative deep-learning methodology for detecting web-based attacks in Industry 5.0. Convolutional neural networks (CNNs), recurrent neural networks (RNNs), and transformer models are examples of deep learning techniques that are investigated in this study for their potential to effectively classify attacks and identify anomalous behavior. The proposed transformer-based system outperforms traditional machine learning methods and existing deep learning approaches in terms of accuracy, precision, and recall, demonstrating the effectiveness of deep learning for intrusion detection in Industry 5.0. The study’s findings showcased the superiority of the proposed transformer-based system, outperforming previous approaches in accuracy, precision, and recall. This highlights the significant contribution of deep learning in addressing cybersecurity challenges in Industry 5.0 environments. This study contributes to advancing cybersecurity in Industry 5.0, ensuring the protection of critical infrastructure and sensitive data.
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