TIAN Juan,FANG Guoqiang,HE Xingting,et al.Research on Sichuan Meteorological Information Network Detection and Defense Technology based on Network Security Situation Awareness[J].Journal of Chengdu University of Information Technology,2024,39(02):178-182.[doi:10.16836/j.cnki.jcuit.2024.02.008]
基于网络安全态势感知的四川气象信息网络检测防御技术研究
- Title:
- Research on Sichuan Meteorological Information Network Detection and Defense Technology based on Network Security Situation Awareness
- 文章编号:
- 2096-1618(2024)02-0178-05
- Keywords:
- network security; cyber security situational awareness; meteorological information network; detection and defense
- 分类号:
- TP309.5
- 文献标志码:
- A
- 摘要:
- 基于大数据、机器学习等技术,构建四川气象信息网络安全态势感知系统。系统能全局感知网络状态,提高了四川省气象部门网络监控、应急响应能力,为合理决策提供支持。介绍了网络安全态势感知技术,并阐述气象信息网络及其安全防御现状和存在风险,从实践角度出发介绍该系统及其关键技术,并对系统应用进行总结和展望。
- Abstract:
- This study presents the development of a Sichuan meteorological information network security situation awareness system based on big data and machine learning technologies. The system provides a comprehensive understanding of the global network state,enhances the monitoring and emergency response capabilities of the meteorological department, and supports informed decision-making. Firstly, this paper introduces the network security situation awareness technology, then expounds onthe current situation and existing risks of meteorological information networks and theirsecurity defense, and then introduces the system and its key technologies from the perspective of practice.Finally,the study summarizes the application of the system and provides future prospects.
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备注/Memo
收稿日期:2023-02-28
通信作者:方国强.E-mail:1849336438@qq.com