基于混合机器学习技术的智能计量基础设施网络安全

Priyamvada Chandel, B. Sawle
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引用次数: 0

摘要

入侵检测系统可以包含在高级计量基础设施中,以保护智能电网免受恶意网络活动的破坏。相比之下,基于签名的入侵检测只能识别先前识别的威胁,而基于异常的入侵检测甚至可以检测到作为查询主题的参数中最微小的变化。在电子系统中越来越多地使用智能电网,因此有必要对潜在危险进行分类、识别并采取预防措施。提出了一种用于智能计量基础设施网络安全预测的混合机器学习技术。Python Spyder 3.7是用于执行模拟的程序。仿真结果给出了一个更好的预测模型,并比以前使用的方法提高了性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cyber Security of Smart Metering Infrastructure Using Hybrid Machine Learning Technique
An intrusion detection system may be included into the advanced metering infrastructure in order to protect a smart grid from being compromised by malicious cyber activity. In contrast, signature-based intrusion detection can only identify previously identified threats, but anomaly-based intrusion detection may detect even the most minute shifts in the parameter that is the subject of the inquiry. The increasing use of smart grids in electronic systems makes it necessary to categorise, identify, and put into action preventative measures against potential dangers. This paper presents a hybrid machine learning technique for the prediction of cyber security of smart metering infrastructure. Python Spyder 3.7 is the programme that is used to carry out the simulation. The findings of the simulation give a better prediction model and increased performance than the approach that was previously used.
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