Affiliation:
1. School of Computer Science and Information Engineering, Harbin Normal University, Harbin 150025, China
2. School of Physics and Electronic Engineering, Harbin Normal University, Harbin 150025, China
Abstract
This paper predicts the network security posture of an ICS, focusing on the reliability of Industrial Control Systems (ICSs). Evidence reasoning (ER) and belief rule base (BRB) techniques are employed to establish an ICS network security posture prediction model, ensuring the secure operation and prediction of the ICS. This model first integrates various information from the ICS to determine its network security posture value. Subsequently, through ER iteration, information fusion occurs and serves as an input for the BRB prediction model, which necessitates initial parameter setting by relevant experts. External factors may influence the experts’ predictions; therefore, this paper proposes the Projection Equalization Optimization (P-EO) algorithm. This optimization algorithm updates the initial parameters to enhance the prediction of the ICS network security posture through the model. Finally, industrial datasets are used as experimental data to improve the credibility of the prediction experiments and validate the model’s predictive performance in the ICS. Compared with other methods, this paper’s prediction model demonstrates a superior prediction accuracy. By further comparing with other algorithms, this paper has a certain advantage when using less historical data to make predictions.
Funder
Provincial Universities Basic Business Expense Scientific Research Projects of Heilongjiang Province
Social Science Foundation of Heilongjiang Province of China
China University Industry-University-Research Innovation Fund
Natural Science Foundation of Heilongjiang Province of China
Postgraduate Innovation Project of Harbin Normal University
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