Jayanthi S, Bavirthi Swathi Sowmya, Murali P, Kumar K Vijaya, Alkahtani Hend Khalid, Ishak Mohamad Khairi, Mostafa Samih M
Department of Artificial Intelligence & Data Science, Faculty of Science and Technology (IcfaiTech), The ICFAI Foundation for Higher Education (IFHE), Hyderabad, Telangana, 501503, India.
Department of Information Technology, Chaitanya Bharathi Institute of Technology, Gandipet, Hyderabad, 500075, India.
Sci Rep. 2025 Aug 19;15(1):30461. doi: 10.1038/s41598-025-13305-8.
The Distributed Denial of Service (DDoS) attack is uncontrollable and appears in different patterns and shapes; accordingly, it is not easily detected and solved with preceding solutions. A DDoS attack is the most serious threat on the Internet. These attacks became a preferred weapon for cyber extortionists, terrorists, and hackers. These attacks can quickly undermine a target, producing massive revenue loss. Classification methods are applied in numerous investigations and have been used to identify and resolve DDoS attacks. Detection of DDoS attacks is problematic in terms of identifying and mitigating them. However, it is valuable as these attacks may lead to big problems. Various methods are presented for attack detection and prevention. However, artificial intelligence (AI)-based Machine learning (ML) and deep learning (DL) methodologies are highly effective for detecting DDoS attacks in cybersecurity. This paper proposes a Cybersecurity-Resource Exhaustion Attack Using Hybrid Deep Learning Model and Metaheuristic Optimizer Algorithms (CREA-HDLMOA) technique. The primary goal of the CREA-HDLMOA technique is to advance an effective method for DDoS attack detection using advanced optimization algorithms. Initially, the data normalization stage leverages linear scaling normalization (LSN) for converting input data into a beneficial format. Furthermore, the feature selection process uses the RIME optimization algorithm (ROA) model to select the most relevant features from the data. In addition, the hybrid of long short-term memory and bidirectional gated recurrent unit (LSTM + Bi-GRU) technique is employed for the DDoS attack classification process. Finally, the modernized pufferfish optimization algorithm (MPOA)-based hyperparameter selection process is performed to optimize the classification results of the LSTM + BiGRU technique. An extensive simulation is performed to validate the performance of the CREA-HDLMOA method under CIC-IDS2017 and Edge-IIoT datasets. The experimental validation of the CREA-HDLMOA method portrayed a superior accuracy value of 99.31% and 99.36% under dual datasets over existing approaches.
分布式拒绝服务(DDoS)攻击是无法控制的,并且呈现出不同的模式和形式;因此,使用之前的解决方案不容易检测和解决它。DDoS攻击是互联网上最严重的威胁。这些攻击已成为网络敲诈者、恐怖分子和黑客的首选武器。这些攻击可以迅速破坏目标,造成巨大的收入损失。分类方法在众多调查中得到应用,并已被用于识别和解决DDoS攻击。在识别和缓解DDoS攻击方面,检测DDoS攻击存在问题。然而,它很有价值,因为这些攻击可能会导致大问题。针对攻击检测和预防提出了各种方法。然而,基于人工智能(AI)的机器学习(ML)和深度学习(DL)方法对于检测网络安全中的DDoS攻击非常有效。本文提出了一种使用混合深度学习模型和元启发式优化算法(CREA-HDLMOA)的网络安全资源耗尽攻击技术。CREA-HDLMOA技术的主要目标是使用先进的优化算法推进一种有效的DDoS攻击检测方法。最初,数据归一化阶段利用线性缩放归一化(LSN)将输入数据转换为有益的格式。此外,特征选择过程使用RIME优化算法(ROA)模型从数据中选择最相关的特征。此外,长短期记忆和双向门控循环单元(LSTM + Bi-GRU)技术的混合用于DDoS攻击分类过程。最后,执行基于现代化河豚优化算法(MPOA)的超参数选择过程,以优化LSTM + BiGRU技术的分类结果。进行了广泛的模拟,以验证CREA-HDLMOA方法在CIC-IDS2017和Edge-IIoT数据集下的性能。CREA-HDLMOA方法的实验验证表明,在双数据集下,其准确率分别优于现有方法,达到了99.31%和99.36%。