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CNN-GRU hierarchical neural network-based network intrusion detection method

A technology of network intrusion detection and neural network, which is applied in the field of network intrusion detection based on CNN-GRU layered neural network, can solve the problems of accuracy bottleneck, unapplicable features, difficult problems, etc., and achieve accuracy improvement and high prediction accuracy Effect

Active Publication Date: 2021-05-25
HUBEI UNIV +1
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AI Technical Summary

Problems solved by technology

Traditional payload-based methods can no longer handle the increasing amount of encrypted traffic today, and traditional machine learning models are often used in machine learning-based network intrusion detection
But the common problem encountered is that it is difficult to find suitable functions as the reference standard of the network. Machine learning models usually require more quantifiable features as training references, which are not suitable for classification training with unclear features.
When using machine learning methods for classification, it will further lead to a bottleneck in accuracy, which is difficult to improve

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[0061] The CICIDS2017 dataset is used to test the model. The advantage of this dataset is that it has richer traffic types and relatively new data release time, which is more in line with the actual situation of the current network. The dataset comes from an attack scenario devised by the researchers. All data collected on the first day was normal network traffic. Over the next four days, the network was attacked and traffic information was recorded. The end result is stored in a PCAP file, which includes all traffic flagged as normal network traffic and various network attacks. Considering the reliability of the training results, we selected the top ten attack traffic and normal traffic as our training set and test set, ensuring that each type contains at least two thousand traffic data. Given that the labels given in the dataset do not meet the actual needs, we re-added the labels to the traffic data to meet the training requirements. After certain processing, the number ...

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Abstract

The invention relates to a network intrusion detection method based on a CNN-GRU hierarchical neural network, and the method comprises the steps: capturing a network flow data package, namely, a to-be-classified data package, through Wreshark software; performing data packet marking, preprocessing and data cleaning on the to-be-classified data packets, analyzing the data packets into decimal data, and converting the decimal data into a 40 * 40 single-channel grey-scale map to obtain a sample complete set; dividing the sample complete set into a training set and a test set, taking the single-channel grey-scale map matrix as an input vector, and establishing a CNN-GRU hierarchical neural network classification model through the training set; and after model training is completed, transmitting data of the test set are into the model, the model predicts the input data according to parameters obtained through training, and unknown network traffic is classified to judge whether the unknown network traffic is attack traffic. Experimental results show that the accuracy of the method for classifying the normal traffic and the attack traffic reaches 99.92%.

Description

technical field [0001] The invention relates to the technical field of network security, in particular to a network intrusion detection method based on a CNN-GRU layered neural network. Background technique [0002] With the rapid development of the Internet, a large number of devices and personnel have joined the Internet environment. At the same time, issues related to network traffic security have increased. Among them, network attackers often paralyze the network according to the loopholes on the Internet, causing immeasurable losses to users. In the past, such attacks often caused economic losses to enterprises, but now they include the theft of personal privacy, which has caused great harm to the rights and interests of most network users. [0003] In order to avoid such problems, we often need to be able to detect attacks by analyzing traffic data generated by network users. The key challenge is how to effectively identify traffic data with offensive behavior. Bec...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): H04L29/06G06N3/08G06N3/04G06K9/62
CPCH04L63/1416G06N3/08G06N3/045G06F18/24G06F18/214
Inventor 王梓天朱国胜邹洁王泽松刘旭
Owner HUBEI UNIV
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