物联网中基于堆叠自编码器的深度神经网络入侵检测框架

G. Sugitha, B. C. Preethi, G. Kavitha
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引用次数: 2

摘要

在与日益增长的物联网相关的系统数量中,安全性至关重要。因此,本文提出了一种基于堆叠自动编码器的深度神经网络(DNN)培育的入侵检测框架,以保护物联网环境。在此过程中,数据进入预处理阶段,进行冗余消除和缺失值替换。然后,将预处理后的输出交给特征选择过程。其中,金鹰优化(GEO)算法从预处理数据集中选择最优特征。然后将选择的特征交给基于堆叠自编码器的深度神经网络进行分类,对数据进行正常、异常等分类。这里,建议的方法是用Python语言实现的。为了检验所提出方法的稳健性,测量了性能指标,如准确性、特异性、灵敏度、F - measure、精度和召回率。仿真结果表明,与现有的FS‐SMO‐SDPN、FS‐WO‐RNNLSTM、FS‐hybrid GWOPSO‐RF和FS‐CNNLSTMGRU方法相比,所提出的基于堆叠自动编码器的深度神经网络入侵检测框架(IDS‐FS‐GEO‐SAENN)方法的准确率分别为99.75%、97.85%、95.13%和98.79,灵敏度分别为96.34%、91.23%、89.12%和87.25%,特异性分别为93.67%、92.37%、98.47%和94.78%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intrusion detection framework using stacked auto encoder based deep neural network in IOT network
Security is of paramount importance in the number of systems affiliated with increased IoT. Therefore, in this manuscript, a Stacked Auto Encoder based Deep Neural Network (DNN) fostered Intrusion Detection Framework is proposed to secure the IoT Environment. Here, the data is given to the preprocessing stage, in which redundancy elimination and replacement of missing value are done. Then, the preprocessed output is given to the feature selection process. Wherein, the Golden eagle optimization (GEO) algorithm selects the optimum features from pre‐processed data sets. Then selected features are given to the Stacked Auto encoder based deep neural network for classification, which classified the data, like normal, anomalies. Here, the proposed approach is implemented in Python language. To check the robustness of the proposed approach, the performance metrics, like accuracy, specificity, sensitivity, F‐measure, precision, and recall is measured. The simulation outcome show that the proposed Stacked Auto Encoder based Deep Neural Network based Intrusion Detection Framework (IDS‐FS‐GEO‐SAENN) method attains higher accuracy 99.75%, 97.85%, 95.13%, and 98.79, higher sensitivity 96.34%, 91.23%, 89.12%, and 87.25%, higher specificity 93.67%, 92.37%, 98.47%, and 94.78% compared with the existing methods, like FS‐SMO‐SDPN, FS‐WO‐RNNLSTM, FS‐hybrid GWOPSO‐RF, and FS‐CNNLSTMGRU, respectively.
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