IEEE Access (Jan 2019)

Design of Intrusion Detection System for Internet of Things Based on Improved BP Neural Network

  • Aimin Yang,
  • Yunxi Zhuansun,
  • Chenshuai Liu,
  • Jie Li,
  • Chunying Zhang

DOI
https://doi.org/10.1109/ACCESS.2019.2929919
Journal volume & issue
Vol. 7
pp. 106043 – 106052

Abstract

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With the advent of global 5G networks, the Internet of Things will no longer be limited by network speed and traffic. With the large-scale application of the Internet of Things, people pay more and more attention to the security of the Internet of Things. Once the Internet of Things system suffers from malicious attacks, not only the serious loss of information will lead to the paralysis of the Internet of Things equipment. Aiming at the security problem of the Internet of Things, this paper puts forward the LM-BP neural network model. The LM-BP neural network model is applied to an intrusion detection system, and the intrusion detection flow under LM-BP algorithm is given. LM algorithm has the characteristics of fast optimization speed and strong robustness and uses this characteristic to optimize the weight threshold of traditional BP neural network. Through establishing LM-BP neural network classifier, KDD CUP 99 intrusion detection data set is imported into an LM-BP neural network classifier, and the best results are obtained through continuous training. Finally, the experimental simulation results show that this model has higher detection rate and lower false alarm rate than the traditional BP neural network model and PSO-BP neural network model for DOS, R2L, U2L, and Probing, thus this modified model has certain promotion value.

Keywords