Abstract

As an effective security protection technology, intrusion detection technology has been widely used in traditional wireless sensor network environments. With the rapid development of wireless sensor network technology and wireless sensor network applications, the wireless sensor network data traffic also grows rapidly, and various kinds of viruses and attacks appear. Based on the temporal correlation characteristics of the intrusion detection dataset, we propose a multicorrelation-based intrusion detection model for long- and short-term memory wireless sensor networks. The model selects the optimal feature subset through the information gain feature selection module, converts the feature subset into a TAM matrix using the multicorrelation analysis algorithm, and inputs the TAM matrix into the long- and short-term memory wireless sensor network module for training and testing. Aiming at the problems of low detection accuracy and high false alarm rate of traditional machine learning-based wireless sensor network intrusion detection models in the intrusion detection process, a wireless sensor network intrusion detection model combining two-way long- and short-term memory wireless sensor network and C5.0 classifier is proposed. The model first uses the hidden layer of the bidirectional long- and short-term memory wireless sensor network to extract the features of the intrusion detection data set and finally inputs extracted features into the C5.0 classifier for training and classification. In order to illustrate the applicability of the model, the experiment selects three different data sets as the experimental data sets and conducts simulation performance analysis through simulation experiments. Experimental results show that the model had better classification performance.

Highlights

  • The Internet continues to develop rapidly, and wireless sensor network technology continues to advance rapidly

  • Because the neural network uses the gradient descent method for sample training, it is easy to fall into a local minimum that cannot reach the global optimum, which will result in low detection efficiency, and it is difficult to completely guarantee the security of the Internet system [20]

  • Carrying out research on intrusion detection technology facing the Internet environment is the primary issue to ensure the security of Internet services, in order to improve the problem of low detection accuracy and high false alarm rate caused by high-dimensional data

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Summary

Introduction

The Internet continues to develop rapidly, and wireless sensor network technology continues to advance rapidly. It is necessary to choose a new type of intrusion detection technology to improve the current wireless sensor network security defense capabilities. 2. Research on Wireless Sensor Network Intrusion Detection Algorithm and Simulation in Internet Environment. The system uses the Snort detection system to collect wireless sensor network data in the Internet environment and pass the Yes classifier which classifies and processes the collected data This model can effectively detect unknown attacks and has a low false detection rate [8]. Deng et al used the clustering method to filter some types of intrusion detection data, used the random forest algorithm in machine learning to reduce the dimensionality of the features, and inputted the convolutional neural wireless sensor network to complete the intrusion detection. Information gain is shown in the following formula: InfoðM, NÞ

F Mi : ð1Þ
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