Department of Networking and Communications, SRM Institute of Science and Technology (SRMIST), Kattankulathur Campus, Kattankulathur 603203, India.
Sensors (Basel). 2022 Nov 7;22(21):8566. doi: 10.3390/s22218566.
The Internet of Things (IoT) network integrates physical objects such as sensors, networks, and electronics with software to collect and exchange data. Physical objects with a unique IP address communicate with external entities over the internet to exchange data in the network. Due to a lack of security measures, these network entities are vulnerable to severe attacks. To address this, an efficient security mechanism for dealing with the threat and detecting attacks is necessary. The proposed hybrid optimization approach combines Spider Monkey Optimization (SMO) and Hierarchical Particle Swarm Optimization (HPSO) to handle the huge amount of intrusion data classification problems and improve detection accuracy by minimizing false alarm rates. After finding the best optimum values, the Random Forest Classifier (RFC) was used to classify attacks from the NSL-KDD and UNSW-NB 15 datasets. The SVM model obtained accuracy of 91.82%, DT of 98.99%, and RFC of 99.13%, and the proposed model obtained 99.175% for the NSL-KDD dataset. Similarly, SVM obtained accuracy of 85.88%, DT of 88.87%, RFC of 91.65%, and the proposed model obtained 99.18% for the UNSW NB-15 dataset. The proposed model achieved accuracy of 99.175% for the NSL-KDD dataset which is higher than the state-of-the-art techniques such as DNN of 97.72% and Ensemble Learning at 85.2%.
物联网(IoT)网络将传感器、网络和电子设备等物理对象与软件集成在一起,以收集和交换数据。具有唯一 IP 地址的物理对象通过互联网与外部实体进行通信,以在网络中交换数据。由于缺乏安全措施,这些网络实体容易受到严重攻击。为了解决这个问题,需要一种有效的安全机制来应对威胁和检测攻击。所提出的混合优化方法结合了蜘蛛猴优化(SMO)和分层粒子群优化(HPSO),以处理大量入侵数据分类问题,并通过最小化误报率来提高检测精度。在找到最佳最优值后,随机森林分类器(RFC)用于对 NSL-KDD 和 UNSW-NB15 数据集的攻击进行分类。SVM 模型获得了 91.82%的准确率、DT 为 98.99%、RFC 为 99.13%,而所提出的模型在 NSL-KDD 数据集上获得了 99.175%的准确率。同样,SVM 获得了 85.88%的准确率、DT 为 88.87%、RFC 为 91.65%,而所提出的模型在 UNSW NB-15 数据集上获得了 99.18%的准确率。所提出的模型在 NSL-KDD 数据集上的准确率为 99.175%,高于 DNN 的 97.72%和 Ensemble Learning 的 85.2%等现有技术。