计算机科学
智能电网
形势意识
计算机安全
大数据
网格
安全性分析
形势分析
损害赔偿
网格计算
情境伦理学
风险分析(工程)
数据挖掘
数学
医学
生态学
生物
工程类
业务
政治学
航空航天工程
营销
法学
几何学
作者
Jun Wu,Kaoru Ota,Mianxiong Dong,Jianhua Li,Hongkai Wang
标识
DOI:10.1109/tbdata.2016.2616146
摘要
Advanced communications and data processing technologies bring great benefits to the smart grid. However, cyber-security threats also extend from the information system to the smart grid. The existing security works for smart grid focus on traditional protection and detection methods. However, a lot of threats occur in a very short time and overlooked by exiting security components. These threats usually have huge impacts on smart gird and disturb its normal operation. Moreover, it is too late to take action to defend against the threats once they are detected, and damages could be difficult to repair. To address this issue, this paper proposes a security situational awareness mechanism based on the analysis of big data in the smart grid. Fuzzy cluster based analytical method, game theory and reinforcement learning are integrated seamlessly to perform the security situational analysis for the smart grid. The simulation and experimental results show the advantages of our scheme in terms of high efficiency and low error rate for security situational awareness.
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