首页|A Novel CNN-LSTM Fusion-Based Intrusion Detection Method for Industrial Internet

A Novel CNN-LSTM Fusion-Based Intrusion Detection Method for Industrial Internet

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Industrial internet security incidents occur frequently, and it is very important to accurately and effectively detect industrial internet attacks. In this paper, a novel CNN-LSTM fusion model-based method is proposed to detect malicious behavior under industrial internet security. Firstly, the data distribution is analyzed with the help of kernel density estimation, and the Pearson correlation coefficient is used to select the strong correlation feature as the model input. The one-dimensional convolutional neural network and the long short-term memory network respectively extract the spatial sequence features of the data and then use the softmax function to complete the classification task. In order to verify the effectiveness of the model, it is evaluated on the NSL-KDD dataset and the GAS dataset, and experiments show that the model has a significant performance improvement over a single model. In the detection of industrial network traffic data, the accuracy rate of 97.09% and the recall rate of 90.84% are achieved.

Industrial Intrusion DetectionKernel Density EstimationLong Short-Term Memory NetworkOne-Dimensional ConvolutionPearson Correlation Coefficient

Jinhai Song、Zhiyong Zhang、Kejing Zhao、Qinhai Xue、Brij B. Gupta

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Henan University of Science and Technology, China

Department of Computer Science and Information Engineering, Asia University, Taichung, Taiwan, & Lebanese American University, Beirut, Lebanon, & Center for Interdisciplinary Research at University of Petroleum and Energy Studies (UPES), Dehradun, India, & UCRD, Chandigarh University, Chandigarh, India

2023

International journal of information security and privacy

International journal of information security and privacy

ISSN:1930-1650
年,卷(期):2023.17(1)
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