Industrial Internet Intrusion Detection Method based on Cloud-Edge Collaboration

Authors

  • Jinhai Song
  • Zhiyong Zhang

DOI:

https://doi.org/10.54691/fse.v3i3.4498

Keywords:

Cloud Edge Collaboration; Industrial Internet; Deep Learning; Intrusion Detection; Deep Neural Network.

Abstract

Industrial Internet security incidents occur frequently, and the amount of industrial data is increasing exponentially. Efficient and correct detection of attacks is critical to industrial Internet security. The method is based on the concept of cloud-edge collaboration to detect malicious behaviors. Firstly, the data is normalized and preprocessed to reduce the differences caused by different feature scales, then the deep neural network(DNN) is used to extract the features of massive data, and finally the softmax function is used for classification. In order to verify the effectiveness of the model, it is evaluated on the NSL-KDD dataset and the GAS dataset, and compared with other traditional models, the model has higher precision and recall. This method integrates edge-cloud collaboration and deep learning models, which can effectively reduce edge load and improve model performance, and has a good application prospect.

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References

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Published

2023-03-20

Issue

Section

Articles

How to Cite

Song, J., & Zhang, Z. (2023). Industrial Internet Intrusion Detection Method based on Cloud-Edge Collaboration. Frontiers in Science and Engineering, 3(3), 1-8. https://doi.org/10.54691/fse.v3i3.4498