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An optimization technique for intrusion detection of industrial control network vulnerabilities based on BP neural network

Wenzhong Xia (), Rahul Neware (), S. Deva Kumar (), Dimitrios A. Karras () and Ali Rizwan ()
Additional contact information
Wenzhong Xia: Zhaotong University
Rahul Neware: Høgskulen På Vestlandet
S. Deva Kumar: Vfstr Deemed To Be University
Dimitrios A. Karras: University of Athens (NKUA)
Ali Rizwan: King Abdulaziz University

International Journal of System Assurance Engineering and Management, 2022, vol. 13, issue 1, No 58, 576-582

Abstract: Abstract The aim of this research is to solve the problem that the intrusion detection model of industrial control system has low detection rate and detection efficiency against various attacks, a method of optimizing BP neural network based on Adaboost algorithm is proposed. Firstly, principal component analysis (PCA) is used to preprocess the original data set to eliminate its correlation. Secondly, Adaboost algorithm is used to continuously adjust the weight of training samples, to obtain the optimal weight and threshold of BP neural network. The results show that there are 13,817 pieces of data collected in the industrial control experiment, of which 9817 pieces of data are taken as the test data set, including 9770 pieces of normal data and 47 pieces of abnormal data. In addition, as a test data set of 4000 pieces, there are 3987 pieces of normal data and 13 pieces of abnormal data. It can be seen that the average detection rate and detection speed of the algorithm of optimizing BP neural network by Adaboost algorithm proposed in this paper are better than other algorithms on each attack type. It is proved that Adaboost algorithm can effectively solve the intrusion detection problem by optimizing BP neural network.

Keywords: BP neural network; AdaBoost algorithm; One-class support vector machine; Fuzzy-based abnormal data detection; Intrusion detection (search for similar items in EconPapers)
Date: 2022
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Citations: View citations in EconPapers (1)

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DOI: 10.1007/s13198-021-01541-w

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