调整训练权值的物联网僵尸网络检测组合三分类器

Pub Date : 2023-07-22 DOI:10.1142/s021946782550007x
Abhilash Kayyidavazhiyil
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引用次数: 0

摘要

尽管物联网行业似乎更受欢迎和普遍,但它们也面临着风险。僵尸网络是与物联网相关的最大安全隐患之一。它使恶意软件能够在所有者不知情的情况下集体管理和攻击专用网络设备。尽管许多研究已经使用ML来检测僵尸网络,但这些要么不是很有效,要么只适用于特定类型的僵尸网络或设备。因此,深度学习思想的检测模型是本研究的重点。它包括三个关键过程:(a)预处理,(b)特征提取和(c)分类。输入数据最初使用改进的数据规范化方法进行预处理。预处理后的数据用于提取许多特征,包括谷本系数特征、改进的基于微分全熵的特征、基于Pearson或相关的特征等。检测过程将由一个集成分类模型完成,该模型随机洗刷深度信念网络(DBN)模型、双向门控制循环单元(Bi-GRU)和长短期记忆(LSTM)等模型。Bi-GRU, DBN和LSTM将被平均以提供集合结果。Bi-GRU采用自改进蓝猴优化算法(SIBMO)进行训练,通过选择最优权值,提高了检测精度。然后使用不同的方法来评估与其他现有模型相关的建议工作的总体性能。与现有方法相比,所创建的集成分类器[公式:见文本]SIBMO方案在90%的学习率下获得了最高的准确率(93%)。
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Combined Tri-Classifiers for IoT Botnet Detection with Tuned Training Weights
Although IoT sectors seem more popular and pervasively, they struggle with hazards. The botnet is one of the largest security dangers associated with IoT. It enables malicious software to administer and attack private network equipment collectively without the owners’ knowledge. Although many studies have used ML to detect botnets, these are either not very effective or only work with specific types of botnets or devices. As a result, the detection model for deep learning ideas is the focus of this research. It entails three key processes: (a) preprocessing, (b) feature extraction, and (c) classification. The input data are initially preprocessed using an improved data normalization approach. The preprocessed data are used to extract a number of features, including Tanimoto coefficient features, improved differential holoentropy-based features, Pearson r correlation-based features, and others. The detection process will be completed by an ensemble classification model that randomly shuffles models like the Deep Belief Network (DBN) model, Bidirectional Gated Recurrent Unit (Bi-GRU), and Long Short-Term Memory (LSTM). Bi-GRU, DBN, and LSTM will be averaged to provide the ensemble results. Bi-GRU is trained using the Self Improved Blue Monkey Optimization (SIBMO) Algorithm by selecting the optimal weights, which increases the detection accuracy. The overall performance of the suggested work is then evaluated in relation to other existing models using various methodologies. In comparison to existing methods, the created ensemble classifier [Formula: see text] SIBMO scheme obtains the highest accuracy (93%) at a learning percentage of 90%.
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