Bojarajulu Balaganesh, Tanwar Sarvesh, Singh Thipendra Pal
Amity Institute of Information Technology, Amity University, Noida, India.
Chandigarh University, Unnao, Uttar Pradesh, India.
MethodsX. 2025 Jul 10;15:103499. doi: 10.1016/j.mex.2025.103499. eCollection 2025 Dec.
The exponential growth of Internet of Things (abbreviated as IoT) has led to a surge in cyber threats, especially botnet attacks that compromise network security. Although machine learning (abbreviated ML) & deep learning (abbreviated as DL) approaches have shown promise in detecting these attacks, they often struggle with limited accuracy & high computational requirements, making them unsuitable for real-time detection in resource-constrained IoT environments. To overcome these limitations, this research proposes an enhanced detection framework based on an improved SqueezeNet model integrated with a Deep Convolutional Neural Network (abbreviated as DCNN) and an optimized stochastic mixed Lp layer. This model aims to improve detection accuracy while maintaining computational efficiency. Experimental evaluation using a large-scale intrusion detection dataset demonstrates that the proposed model significantly outperforms existing techniques such as Bi-GRU, CNN, PolyNet, and LinkNet, achieving a classification accuracy of 0.97 and a reduced false positive rate of 0.054. The complete research process is outlined below:•Data Pre-processing: Min-max normalization is applied to the input dataset to ensure consistent data scaling and enhance model learning performance.•Feature Extraction and Classification: The improved SqueezeNet is integrated with DCNN & a stochastic mixed Lp layer to extract meaningful features and classify attacks accurately.•Model Evaluation: Performance is validated through accuracy, precision, recall, and false positive rate using a benchmark intrusion detection dataset.
物联网(缩写为IoT)的指数级增长导致网络威胁激增,尤其是那些危害网络安全的僵尸网络攻击。尽管机器学习(缩写为ML)和深度学习(缩写为DL)方法在检测这些攻击方面已显示出前景,但它们往往在准确性有限和计算要求高方面存在困难,这使得它们不适用于资源受限的物联网环境中的实时检测。为克服这些限制,本研究提出了一种增强的检测框架,该框架基于与深度卷积神经网络(缩写为DCNN)和优化的随机混合Lp层集成的改进型SqueezeNet模型。该模型旨在提高检测准确性,同时保持计算效率。使用大规模入侵检测数据集进行的实验评估表明,所提出的模型显著优于现有技术,如双向门控循环单元(Bi-GRU)、卷积神经网络(CNN)、聚合网络(PolyNet)和链接网络(LinkNet),实现了0.97的分类准确率和0.054的降低误报率。完整的研究过程概述如下:
•数据预处理:对输入数据集应用最小-最大归一化,以确保一致的数据缩放并提高模型学习性能。
•特征提取与分类:将改进的SqueezeNet与DCNN和随机混合Lp层集成,以提取有意义的特征并准确分类攻击。
•模型评估:使用基准入侵检测数据集通过准确率、精确率、召回率和误报率来验证性能。