HU Xiang-dong,LÜ Gao-fei,BAI Yin.A Method of Security Situation Prediction for Industrial Internet Based on Optimized Support Vector Regression[J].ACTA ELECTRONICA SINICA,2023,51(02):446-454.
HU Xiang-dong,LÜ Gao-fei,BAI Yin.A Method of Security Situation Prediction for Industrial Internet Based on Optimized Support Vector Regression[J].ACTA ELECTRONICA SINICA,2023,51(02):446-454. DOI: 10.12263/DZXB.20210558.
A Method of Security Situation Prediction for Industrial Internet Based on Optimized Support Vector Regression
The Industrial Internet is an emerging modern infrastructure for supporting smart manufacturing. Accurate security situation prediction of industrial Internet is nowadays still a key demand and challenge for industrial application. To this aim
a novel method of security situation prediction for industrial Internet based on optimized support vector regression is proposed in this paper. The proposed method is a three-step procedure: in the first step
an improved gray wolf optimizer algorithm
based on differential evolution and adaptive parameter adjustment strategy
with high calculation speed and optimization accuracy is proposed; then
the optimized parameters of support vector regression are obtained; after that
accurate security situation prediction model for industrial Internet is established. The simulation results show that the prediction accuracy rate of the proposed method are 90% and 100% when the allowable deviations are 0.05 or 0.1
respectively
and the corresponding absolute errors are less than 0.07
and thus the proposed method can enhance the accuracy rate and precision of prediction
in contrast to the existing methods.
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references
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