Hybrid Model for Intrusion Detection in Wireless Sensor Network: An Improved Class Imbalance Processing

Sravanthi Godala, Dr. M. Sunil Kumar
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Abstract

A significant difficulty in WSN settings is recognizing the abnormalities as security threats become divergent in various fields. The major drawbacks of WSN including insufficient memory, limited energy, and low compute power, and a small communication range. Thus, enhancing the detection accuracy of intrusion detection in such contexts is critical. However, this work intends to propose intrusion detection in WSN with improved class imbalance processing. The input data is pre-processed to balance the data with modified class imbalance process. Here, the SMOTE-ENN and Tomek link algorithm is employed to pre-process the raw data. Then the entropy and improved correlation based features are retrieved from the balanced data. Later, these features are trained by subjecting those features into the hybrid model that includes Deep Maxout and Bi-GRU model and then the final detection is predicted with the classifier outcomes. Further, at the training rate 90%, the proposed yielded the least FPR rate (0.1038) than the other 60, 70 and 80 training percentages.
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无线传感器网络入侵检测混合模型:改进的类失衡处理
WSN 设置中的一个重大难题是识别异常情况,因为各领域的安全威胁各不相同。WSN 的主要缺点包括内存不足、能量有限、计算能力低和通信范围小。因此,在这种情况下提高入侵检测的检测精度至关重要。然而,这项工作旨在提出改进类不平衡处理的 WSN 入侵检测方法。输入数据经过预处理后,使用修改后的类不平衡处理过程来平衡数据。在此,采用 SMOTE-ENN 和 Tomek 链接算法对原始数据进行预处理。然后,从平衡数据中提取基于熵和改进相关性的特征。之后,将这些特征输入包括 Deep Maxout 和 Bi-GRU 模型在内的混合模型,对这些特征进行训练,然后根据分类器的结果预测最终的检测结果。此外,与其他 60%、70% 和 80%的训练率相比,在训练率为 90%的情况下,建议的 FPR 率(0.1038)最低。
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