An improved DNN model for WLAN intrusion detection

Author:

Wang Haizhen123ORCID,Cui Zhiqing4ORCID,Lian Zuozheng123ORCID,Yan Jinying12ORCID

Affiliation:

1. Department of Computer Science and Technology , College of Computer and Control Engineering, , Wenhua Street, Jianhua District, Heilongjiang,Qiqihar 161006, China

2. Qiqihar University , College of Computer and Control Engineering, , Wenhua Street, Jianhua District, Heilongjiang,Qiqihar 161006, China

3. Heilongjiang Key Laboratory of Big Data Network Security Detection and Analysis, Qiqihar University , Wenhua Street, Jianhua District, Heilongjiang, Qiqihar 161006, China

4. Department of Data Science and Big Data Technology, Shanxi International Business College , Tongyi West Road, Qindu District, Shanxi, Xianyang 712046, China

Abstract

Abstract Intrusion detection represents an efficacious approach for addressing security concerns. However, given the substantial volume and high-dimensional nature of WLAN dataset features, existing methods exhibit limited effectiveness in feature extraction, thereby impacting classification performance. To address above problems, an improved deep neural network (DNN) model for WLAN intrusion detection was proposed. Firstly, the activation function and loss function of a single sparse autoencoders (SAE) were determined through experiments, followed by the addition of regularization terms to the autoencoder, to prevent the model from overfitting. Subsequently, multiple SAEs were employed for a stacked architecture. This configuration served the purpose of feature dimension reduction and facilitated the selection of suitable feature dimensions for training the dataset. The chosen features were then utilized as the input layer for a DNN, with a SoftMax classifier serving as the output layer. Secondly, to obtain better DNN model parameters, the grid search method was adopted to optimize the parameters of the DNN model, namely activation, epochs, batch_size, init_mode, and optimizer. The results were visualized for assessment and analysis. Finally, the receiver operating characteristic curves were generated to assess the performance of various models, the analysis results show that the model exhibited better classifier performance.

Funder

Heilongjiang Province Education Department Basic Scientific Research Business Research Innovation Platform

Fundamental Research Funds for Heilongjiang Province Higher Education Institution

Heilongjiang Province Higher Education Teaching Reform Project

Publisher

Oxford University Press (OUP)

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