Alblehai Fahad
Computer Science Department, Community College, King Saud University, 11437, Riyadh, Saudi Arabia.
Sci Rep. 2025 Apr 16;15(1):13215. doi: 10.1038/s41598-025-98056-2.
Recently, Internet of Things (IoT) usage has increased rapidly, and cybersecurity concerns have also improved. Cybersecurity attacks are exclusive to the IoT, which has unique limitations and characteristics. Considering that many attacks and threats are being presented daily against IoT. So, it is significant to recognize these kinds of attacks and discover solutions to alleviate their risks. The modern approach to cybersecurity comprises the application of artificial intelligence (AI) to develop complex models for protecting systems and networks, specifically in IoT environments. Cyber attackers have also adapted by leveraging AI technologies, using adversarial AI to execute advanced cybersecurity threats. This constant evolution of AI-driven threats and defences necessitates developing more robust, adaptive, and real-time cybersecurity models to stay ahead of increasingly advanced attacks. This paper presents an Intelligent Cybersecurity System Using Self-Attention-based Deep Learning and Metaheuristic Optimization Algorithm (ICSSADL-MHOA). The proposed ICSSADL-MHOA model aims to enhance a robust cybersecurity system in IoT networks. At first, the data normalization stage employs min-max normalization to ensure consistency, accuracy, and efficiency by organizing data into a standardized format. Furthermore, the improved tuna swarm optimization (ITSO) model is implemented for the feature selection process to detect the most relevant features in the data. Besides, the proposed ICSSADL-MHOA model utilizes the bidirectional long short-term memory with self-attention (BiLSTM-SA) model for the detection and classification method of cybersecurity. Finally, the parameter selection of the BiLSTM-SA technique is performed by employing the hunger games search (HGS) technique. Comprehensive studies under the ToN-IoT and Edge-IIoT datasets validate the efficiency of the ICSSADL-MHOA method. The experimental validation of the ICSSADL-MHOA method illustrated a superior accuracy value of 99.37% over existing techniques.
近年来,物联网(IoT)的使用迅速增加,网络安全问题也日益凸显。网络安全攻击是物联网所特有的,它具有独特的局限性和特征。鉴于每天都有许多针对物联网的攻击和威胁出现。因此,识别这类攻击并找到减轻其风险的解决方案具有重要意义。现代网络安全方法包括应用人工智能(AI)来开发用于保护系统和网络的复杂模型,特别是在物联网环境中。网络攻击者也通过利用人工智能技术进行了调整,使用对抗性人工智能来实施高级网络安全威胁。这种由人工智能驱动的威胁和防御的不断演变,需要开发更强大、自适应和实时的网络安全模型,以应对日益先进的攻击。本文提出了一种基于自注意力深度学习和元启发式优化算法的智能网络安全系统(ICSSADL-MHOA)。所提出的ICSSADL-MHOA模型旨在增强物联网网络中的强大网络安全系统。首先,数据归一化阶段采用最小-最大归一化,通过将数据组织成标准化格式来确保一致性、准确性和效率。此外,改进的金枪鱼群优化(ITSO)模型用于特征选择过程,以检测数据中最相关的特征。此外,所提出的ICSSADL-MHOA模型利用带有自注意力的双向长短期记忆(BiLSTM-SA)模型进行网络安全的检测和分类方法。最后,通过采用饥饿游戏搜索(HGS)技术对BiLSTM-SA技术进行参数选择。在ToN-IoT和Edge-IIoT数据集下的综合研究验证了ICSSADL-MHOA方法的有效性。ICSSADL-MHOA方法的实验验证表明,与现有技术相比,其准确率高达99.37%。