Prasad Kashi Sai, Lydia E Laxmi, Rajesh M V, Radhika K, Ramesh Janjhyam Venkata Naga, Neelima N, Pokuri Srinivasa Rao
Department of CSE-AI&ML, MLR Institute of Technology, Hyderabad, India.
Department of Information Technology, VR Siddhartha Engineering College(A), Siddhartha Academy of Higher Education (Deemed to Be University), Vijayawada, India.
Sci Rep. 2024 Dec 28;14(1):30833. doi: 10.1038/s41598-024-81162-y.
The Internet of Things (IoT) network is a fast-growing technology, which is efficiently used in various applications. In an IoT network, the massive amount of connecting nodes is the existence of day-to-day communication challenges. The platform of IoT uses a cloud service as a backend for processing information and maintaining remote control. To manage the developing intricacy of cyberattacks, it is critical to have an effectual intrusion detection system (IDS), which can monitor computer sources and create data on suspicious or abnormal actions. The IoT network's security can progressively become a critical concern as IoT technology obtains extensive use. Protecting IoT systems with traditional IDS is challenging due to the vast variety and volume of IoT devices. Currently, Machine Learning (ML) and Deep Learning (DL) techniques are utilized to address the security threats in IoT networks. This manuscript proposes a Cybersecurity through an Attention-based Stacked Autoencoder with a Pelican Optimization Algorithm for the Detection and Mitigation of Attacks (CASAE-POADMA) methodology on an IoT-assisted network. The main purpose of the CASAE-POADMA methodology is to identify and mitigate the presence of cybersecurity attack behavior in the IoT-assisted network. At first, the presented CASAE-POADMA approach utilizes min-max normalization to scale input data into a uniform design. Besides, the greylag goose optimization (GGO) method is employed for the feature selection process. For the detection and mitigation of attack, the presented CASAE-POADMA approach employs the attention-based stacked autoencoder (ASAE) method. Eventually, the hyperparameter tuning of the ASAE method is executed by using pelican optimization algorithm (POA) method. The simulation validation of the CASAE-POADMA approach is verified under a benchmark database. The experimental validation of the CASAE-POADMA approach exhibited a superior accuracy value of 99.50% over existing techniques.
物联网(IoT)网络是一种快速发展的技术,在各种应用中得到了有效利用。在物联网网络中,大量连接节点带来了日常通信挑战。物联网平台使用云服务作为后端来处理信息并维持远程控制。为了应对日益复杂的网络攻击,拥有一个有效的入侵检测系统(IDS)至关重要,该系统可以监控计算机资源并生成有关可疑或异常行为的数据。随着物联网技术的广泛应用,物联网网络的安全性逐渐成为一个关键问题。由于物联网设备种类繁多、数量庞大,使用传统IDS保护物联网系统具有挑战性。目前,机器学习(ML)和深度学习(DL)技术被用于应对物联网网络中的安全威胁。本文提出了一种基于注意力的堆叠自动编码器与鹈鹕优化算法的物联网辅助网络攻击检测与缓解的网络安全方法(CASAE-POADMA)。CASAE-POADMA方法的主要目的是识别和缓解物联网辅助网络中网络安全攻击行为的存在。首先,所提出的CASAE-POADMA方法利用最小-最大归一化将输入数据缩放到统一格式。此外,采用灰雁优化(GGO)方法进行特征选择过程。为了检测和缓解攻击,所提出的CASAE-POADMA方法采用基于注意力的堆叠自动编码器(ASAE)方法。最终,通过使用鹈鹕优化算法(POA)方法对ASAE方法进行超参数调整。在基准数据库下验证了CASAE-POADMA方法的仿真有效性。与现有技术相比,CASAE-POADMA方法的实验验证显示出99.50%的卓越准确率。