Outline

Ingegneria Sismica

Ingegneria Sismica

Study on a collaborative governance framework for cybersecurity capability enhancement in non-regulated operations

Author(s): Qijing Zhang1, Renmeng Lu1, Yu Lu1
1Digitalization Department, Guizhou Power Grid Co., Ltd., Guiyang, Guizhou, 550000, China
Zhang, Qijing., Lu, Renmeng., and Lu, Yu . “Study on a collaborative governance framework for cybersecurity capability enhancement in non-regulated operations.” Ingegneria Sismica Volume 43 Issue 2: 1-23, doi:10.65102/is2026700.

Abstract

In order to cope with the diversified security challenges faced by non-regulatory business networks, it is particularly important to construct a comprehensive network security protection system. In this paper, a new hybrid kernel function is constructed, the parameters of the support vector machine are optimized by genetic algorithm, and a network security posture indicator system is proposed to realize the network security posture assessment model based on GA-SVM. And the ARIMA model is used to predict the network security posture. The empirical results tabulate that compared with the two prediction models of RBF and PSO-SVM, the accuracy, AUC value, and F1 value of the GA-SVM network security posture assessment model are 89.47%, 0.8792, and 0.8644, respectively, which are able to accomplish the network security assessment in a better way.The results of ARIMA in the task of network security posture prediction have a better fitting effect. Therefore, network security posture assessment and prediction can be used to monitor the security status in the non-regulated business network environment in real time, discover potential threats and abnormal behaviors in a timely manner, and predict possible security risks in the future.

 

Keywords
cybersecurity posture assessment; cybersecurity posture prediction; GA-SVM; ARIMA; non-regulated business

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