论文标题
基于进化神经网络的电力信息网络安全状况的定量方法
Quantitative Method for Security Situation of the Power Information Network Based on the Evolutionary Neural Network
论文作者
论文摘要
网络安全是电网数字化转换和新电源系统的构建的安全基石。传统的网络安全状况量化方法仅从网络性能的角度进行分析,而忽略了各种电源应用程序对安全状况的影响,因此量化结果无法完全反映电源信息网络风险状态。这项研究提出了一种基于进化神经网络量化功率信息网络的安全状况的方法。首先,安全姿势系统体系结构是通过分析电力信息网络应用程序的业务特征来设计的。其次,结合了电力应用业务的重要性,从网络可靠性,威胁和脆弱性的三个维度建立了耦合互连的空间元素索引系统。然后,将通过遗传进化算法优化的BP神经网络纳入了元素索引计算过程中,并构建了基于进化神经网络的功率信息网络的安全姿势的定量模型。最后,根据电力部门网络拓扑结构建立模拟实验环境,并验证了研究中提出的方法的有效性和鲁棒性。
Cybersecurity is the security cornerstone of digital transformation of the power grid and construction of new power systems. The traditional network security situation quantification method only analyzes from the perspective of network performance, ignoring the impact of various power application services on the security situation, so the quantification results cannot fully reflect the power information network risk state. This study proposes a method for quantifying security situation of the power information network based on the evolutionary neural network. First, the security posture system architecture is designed by analyzing the business characteristics of power information network applications. Second, combining the importance of power application business, the spatial element index system of coupled interconnection is established from three dimensions of network reliability, threat, and vulnerability. Then, the BP neural network optimized by the genetic evolutionary algorithm is incorporated into the element index calculation process, and the quantitative model of security posture of the power information network based on the evolutionary neural network is constructed. Finally, a simulation experiment environment is built according to a power sector network topology, and the effectiveness and robustness of the method proposed in the study are verified.